1820 lines
66 KiB
C++
1820 lines
66 KiB
C++
/***********************************************************************
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* Software License Agreement (BSD License)
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*
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* Copyright 2008-2009 Marius Muja (mariusm@cs.ubc.ca). All rights reserved.
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* Copyright 2008-2009 David G. Lowe (lowe@cs.ubc.ca). All rights reserved.
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*
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* THE BSD LICENSE
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*
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* Redistribution and use in source and binary forms, with or without
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* modification, are permitted provided that the following conditions
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* are met:
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*
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* 1. Redistributions of source code must retain the above copyright
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* notice, this list of conditions and the following disclaimer.
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* 2. Redistributions in binary form must reproduce the above copyright
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* notice, this list of conditions and the following disclaimer in the
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* documentation and/or other materials provided with the distribution.
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*
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* THIS SOFTWARE IS PROVIDED BY THE AUTHOR ``AS IS'' AND ANY EXPRESS OR
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* IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED WARRANTIES
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* OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE DISCLAIMED.
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* IN NO EVENT SHALL THE AUTHOR BE LIABLE FOR ANY DIRECT, INDIRECT,
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* INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT
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* NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE,
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* DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY
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* THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT
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* (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF
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* THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
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*************************************************************************/
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#ifndef OPENCV_FLANN_KMEANS_INDEX_H_
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#define OPENCV_FLANN_KMEANS_INDEX_H_
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//! @cond IGNORED
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#include <algorithm>
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#include <map>
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#include <limits>
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#include <cmath>
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#include "general.h"
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#include "nn_index.h"
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#include "dist.h"
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#include "matrix.h"
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#include "result_set.h"
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#include "heap.h"
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#include "allocator.h"
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#include "random.h"
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#include "saving.h"
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#include "logger.h"
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#define BITS_PER_CHAR 8
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#define BITS_PER_BASE 2 // for DNA/RNA sequences
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#define BASE_PER_CHAR (BITS_PER_CHAR/BITS_PER_BASE)
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#define HISTOS_PER_BASE (1<<BITS_PER_BASE)
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namespace cvflann
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{
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struct KMeansIndexParams : public IndexParams
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{
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KMeansIndexParams(int branching = 32, int iterations = 11,
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flann_centers_init_t centers_init = FLANN_CENTERS_RANDOM,
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float cb_index = 0.2, int trees = 1 )
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{
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(*this)["algorithm"] = FLANN_INDEX_KMEANS;
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// branching factor
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(*this)["branching"] = branching;
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// max iterations to perform in one kmeans clustering (kmeans tree)
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(*this)["iterations"] = iterations;
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// algorithm used for picking the initial cluster centers for kmeans tree
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(*this)["centers_init"] = centers_init;
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// cluster boundary index. Used when searching the kmeans tree
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(*this)["cb_index"] = cb_index;
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// number of kmeans trees to search in
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(*this)["trees"] = trees;
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}
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};
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/**
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* Hierarchical kmeans index
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*
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* Contains a tree constructed through a hierarchical kmeans clustering
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* and other information for indexing a set of points for nearest-neighbour matching.
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*/
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template <typename Distance>
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class KMeansIndex : public NNIndex<Distance>
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{
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public:
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typedef typename Distance::ElementType ElementType;
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typedef typename Distance::ResultType DistanceType;
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typedef typename Distance::CentersType CentersType;
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typedef typename Distance::is_kdtree_distance is_kdtree_distance;
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typedef typename Distance::is_vector_space_distance is_vector_space_distance;
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typedef void (KMeansIndex::* centersAlgFunction)(int, int*, int, int*, int&);
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/**
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* The function used for choosing the cluster centers.
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*/
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centersAlgFunction chooseCenters;
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/**
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* Chooses the initial centers in the k-means clustering in a random manner.
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*
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* Params:
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* k = number of centers
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* vecs = the dataset of points
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* indices = indices in the dataset
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* indices_length = length of indices vector
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*
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*/
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void chooseCentersRandom(int k, int* indices, int indices_length, int* centers, int& centers_length)
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{
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UniqueRandom r(indices_length);
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int index;
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for (index=0; index<k; ++index) {
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bool duplicate = true;
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int rnd;
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while (duplicate) {
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duplicate = false;
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rnd = r.next();
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if (rnd<0) {
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centers_length = index;
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return;
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}
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centers[index] = indices[rnd];
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for (int j=0; j<index; ++j) {
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DistanceType sq = distance_(dataset_[centers[index]], dataset_[centers[j]], dataset_.cols);
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if (sq<1e-16) {
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duplicate = true;
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}
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}
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}
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}
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centers_length = index;
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}
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/**
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* Chooses the initial centers in the k-means using Gonzales' algorithm
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* so that the centers are spaced apart from each other.
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*
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* Params:
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* k = number of centers
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* vecs = the dataset of points
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* indices = indices in the dataset
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* Returns:
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*/
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void chooseCentersGonzales(int k, int* indices, int indices_length, int* centers, int& centers_length)
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{
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int n = indices_length;
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int rnd = rand_int(n);
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CV_DbgAssert(rnd >=0 && rnd < n);
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centers[0] = indices[rnd];
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int index;
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for (index=1; index<k; ++index) {
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int best_index = -1;
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DistanceType best_val = 0;
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for (int j=0; j<n; ++j) {
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DistanceType dist = distance_(dataset_[centers[0]],dataset_[indices[j]],dataset_.cols);
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for (int i=1; i<index; ++i) {
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DistanceType tmp_dist = distance_(dataset_[centers[i]],dataset_[indices[j]],dataset_.cols);
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if (tmp_dist<dist) {
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dist = tmp_dist;
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}
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}
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if (dist>best_val) {
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best_val = dist;
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best_index = j;
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}
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}
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if (best_index!=-1) {
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centers[index] = indices[best_index];
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}
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else {
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break;
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}
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}
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centers_length = index;
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}
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/**
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* Chooses the initial centers in the k-means using the algorithm
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* proposed in the KMeans++ paper:
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* Arthur, David; Vassilvitskii, Sergei - k-means++: The Advantages of Careful Seeding
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*
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* Implementation of this function was converted from the one provided in Arthur's code.
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*
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* Params:
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* k = number of centers
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* vecs = the dataset of points
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* indices = indices in the dataset
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* Returns:
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*/
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void chooseCentersKMeanspp(int k, int* indices, int indices_length, int* centers, int& centers_length)
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{
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int n = indices_length;
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double currentPot = 0;
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DistanceType* closestDistSq = new DistanceType[n];
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// Choose one random center and set the closestDistSq values
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int index = rand_int(n);
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CV_DbgAssert(index >=0 && index < n);
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centers[0] = indices[index];
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for (int i = 0; i < n; i++) {
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closestDistSq[i] = distance_(dataset_[indices[i]], dataset_[indices[index]], dataset_.cols);
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closestDistSq[i] = ensureSquareDistance<Distance>( closestDistSq[i] );
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currentPot += closestDistSq[i];
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}
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const int numLocalTries = 1;
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// Choose each center
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int centerCount;
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for (centerCount = 1; centerCount < k; centerCount++) {
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// Repeat several trials
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double bestNewPot = -1;
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int bestNewIndex = -1;
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for (int localTrial = 0; localTrial < numLocalTries; localTrial++) {
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// Choose our center - have to be slightly careful to return a valid answer even accounting
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// for possible rounding errors
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double randVal = rand_double(currentPot);
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for (index = 0; index < n-1; index++) {
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if (randVal <= closestDistSq[index]) break;
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else randVal -= closestDistSq[index];
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}
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// Compute the new potential
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double newPot = 0;
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for (int i = 0; i < n; i++) {
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DistanceType dist = distance_(dataset_[indices[i]], dataset_[indices[index]], dataset_.cols);
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newPot += std::min( ensureSquareDistance<Distance>(dist), closestDistSq[i] );
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}
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// Store the best result
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if ((bestNewPot < 0)||(newPot < bestNewPot)) {
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bestNewPot = newPot;
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bestNewIndex = index;
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}
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}
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// Add the appropriate center
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centers[centerCount] = indices[bestNewIndex];
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currentPot = bestNewPot;
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for (int i = 0; i < n; i++) {
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DistanceType dist = distance_(dataset_[indices[i]], dataset_[indices[bestNewIndex]], dataset_.cols);
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closestDistSq[i] = std::min( ensureSquareDistance<Distance>(dist), closestDistSq[i] );
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}
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}
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centers_length = centerCount;
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delete[] closestDistSq;
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}
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public:
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flann_algorithm_t getType() const CV_OVERRIDE
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{
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return FLANN_INDEX_KMEANS;
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}
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template<class CentersContainerType>
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class KMeansDistanceComputer : public cv::ParallelLoopBody
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{
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public:
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KMeansDistanceComputer(Distance _distance, const Matrix<ElementType>& _dataset,
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const int _branching, const int* _indices, const CentersContainerType& _dcenters,
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const size_t _veclen, std::vector<int> &_new_centroids,
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std::vector<DistanceType> &_sq_dists)
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: distance(_distance)
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, dataset(_dataset)
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, branching(_branching)
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, indices(_indices)
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, dcenters(_dcenters)
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, veclen(_veclen)
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, new_centroids(_new_centroids)
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, sq_dists(_sq_dists)
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{
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}
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void operator()(const cv::Range& range) const CV_OVERRIDE
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{
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const int begin = range.start;
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const int end = range.end;
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for( int i = begin; i<end; ++i)
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{
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DistanceType sq_dist(distance(dataset[indices[i]], dcenters[0], veclen));
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int new_centroid(0);
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for (int j=1; j<branching; ++j) {
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DistanceType new_sq_dist = distance(dataset[indices[i]], dcenters[j], veclen);
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if (sq_dist>new_sq_dist) {
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new_centroid = j;
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sq_dist = new_sq_dist;
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}
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}
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sq_dists[i] = sq_dist;
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new_centroids[i] = new_centroid;
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}
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}
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private:
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Distance distance;
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const Matrix<ElementType>& dataset;
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const int branching;
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const int* indices;
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const CentersContainerType& dcenters;
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const size_t veclen;
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std::vector<int> &new_centroids;
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std::vector<DistanceType> &sq_dists;
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KMeansDistanceComputer& operator=( const KMeansDistanceComputer & ) { return *this; }
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};
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/**
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* Index constructor
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*
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* Params:
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* inputData = dataset with the input features
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* params = parameters passed to the hierarchical k-means algorithm
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*/
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KMeansIndex(const Matrix<ElementType>& inputData, const IndexParams& params = KMeansIndexParams(),
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Distance d = Distance())
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: dataset_(inputData), index_params_(params), root_(NULL), indices_(NULL), distance_(d)
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{
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memoryCounter_ = 0;
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size_ = dataset_.rows;
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veclen_ = dataset_.cols;
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branching_ = get_param(params,"branching",32);
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trees_ = get_param(params,"trees",1);
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iterations_ = get_param(params,"iterations",11);
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if (iterations_<0) {
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iterations_ = (std::numeric_limits<int>::max)();
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}
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centers_init_ = get_param(params,"centers_init",FLANN_CENTERS_RANDOM);
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if (centers_init_==FLANN_CENTERS_RANDOM) {
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chooseCenters = &KMeansIndex::chooseCentersRandom;
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}
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else if (centers_init_==FLANN_CENTERS_GONZALES) {
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chooseCenters = &KMeansIndex::chooseCentersGonzales;
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}
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else if (centers_init_==FLANN_CENTERS_KMEANSPP) {
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chooseCenters = &KMeansIndex::chooseCentersKMeanspp;
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}
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else {
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FLANN_THROW(cv::Error::StsBadArg, "Unknown algorithm for choosing initial centers.");
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}
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cb_index_ = 0.4f;
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root_ = new KMeansNodePtr[trees_];
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indices_ = new int*[trees_];
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for (int i=0; i<trees_; ++i) {
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root_[i] = NULL;
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indices_[i] = NULL;
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}
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}
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KMeansIndex(const KMeansIndex&);
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KMeansIndex& operator=(const KMeansIndex&);
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/**
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* Index destructor.
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*
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* Release the memory used by the index.
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*/
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virtual ~KMeansIndex()
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{
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if (root_ != NULL) {
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free_centers();
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delete[] root_;
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}
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if (indices_!=NULL) {
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free_indices();
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delete[] indices_;
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}
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}
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/**
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* Returns size of index.
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*/
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size_t size() const CV_OVERRIDE
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{
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return size_;
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}
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/**
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* Returns the length of an index feature.
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*/
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size_t veclen() const CV_OVERRIDE
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{
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return veclen_;
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}
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void set_cb_index( float index)
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{
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cb_index_ = index;
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}
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/**
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* Computes the inde memory usage
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* Returns: memory used by the index
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*/
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int usedMemory() const CV_OVERRIDE
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{
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return pool_.usedMemory+pool_.wastedMemory+memoryCounter_;
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}
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/**
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* Builds the index
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*/
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void buildIndex() CV_OVERRIDE
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{
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if (branching_<2) {
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FLANN_THROW(cv::Error::StsError, "Branching factor must be at least 2");
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}
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free_indices();
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for (int i=0; i<trees_; ++i) {
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indices_[i] = new int[size_];
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for (size_t j=0; j<size_; ++j) {
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indices_[i][j] = int(j);
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}
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root_[i] = pool_.allocate<KMeansNode>();
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std::memset(root_[i], 0, sizeof(KMeansNode));
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Distance* dummy = NULL;
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computeNodeStatistics(root_[i], indices_[i], (unsigned int)size_, dummy);
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computeClustering(root_[i], indices_[i], (int)size_, branching_,0);
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}
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}
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void saveIndex(FILE* stream) CV_OVERRIDE
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{
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save_value(stream, branching_);
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save_value(stream, iterations_);
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save_value(stream, memoryCounter_);
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save_value(stream, cb_index_);
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save_value(stream, trees_);
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for (int i=0; i<trees_; ++i) {
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save_value(stream, *indices_[i], (int)size_);
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save_tree(stream, root_[i], i);
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}
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}
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void loadIndex(FILE* stream) CV_OVERRIDE
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{
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if (indices_!=NULL) {
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free_indices();
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delete[] indices_;
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}
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if (root_!=NULL) {
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free_centers();
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}
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load_value(stream, branching_);
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load_value(stream, iterations_);
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load_value(stream, memoryCounter_);
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load_value(stream, cb_index_);
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load_value(stream, trees_);
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indices_ = new int*[trees_];
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for (int i=0; i<trees_; ++i) {
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indices_[i] = new int[size_];
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load_value(stream, *indices_[i], size_);
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load_tree(stream, root_[i], i);
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}
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index_params_["algorithm"] = getType();
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index_params_["branching"] = branching_;
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index_params_["trees"] = trees_;
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index_params_["iterations"] = iterations_;
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index_params_["centers_init"] = centers_init_;
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index_params_["cb_index"] = cb_index_;
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}
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/**
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* Find set of nearest neighbors to vec. Their indices are stored inside
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* the result object.
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*
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* Params:
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* result = the result object in which the indices of the nearest-neighbors are stored
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* vec = the vector for which to search the nearest neighbors
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* searchParams = parameters that influence the search algorithm (checks, cb_index)
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*/
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void findNeighbors(ResultSet<DistanceType>& result, const ElementType* vec, const SearchParams& searchParams) CV_OVERRIDE
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{
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const int maxChecks = get_param(searchParams,"checks",32);
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if (maxChecks==FLANN_CHECKS_UNLIMITED) {
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findExactNN(root_[0], result, vec);
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}
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else {
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// Priority queue storing intermediate branches in the best-bin-first search
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const cv::Ptr<Heap<BranchSt>>& heap = Heap<BranchSt>::getPooledInstance(cv::utils::getThreadID(), (int)size_);
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int checks = 0;
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for (int i=0; i<trees_; ++i) {
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findNN(root_[i], result, vec, checks, maxChecks, heap);
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if ((checks >= maxChecks) && result.full())
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break;
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}
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BranchSt branch;
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while (heap->popMin(branch) && (checks<maxChecks || !result.full())) {
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|
KMeansNodePtr node = branch.node;
|
|
findNN(node, result, vec, checks, maxChecks, heap);
|
|
}
|
|
CV_Assert(result.full());
|
|
}
|
|
}
|
|
|
|
/**
|
|
* Clustering function that takes a cut in the hierarchical k-means
|
|
* tree and return the clusters centers of that clustering.
|
|
* Params:
|
|
* numClusters = number of clusters to have in the clustering computed
|
|
* Returns: number of cluster centers
|
|
*/
|
|
int getClusterCenters(Matrix<CentersType>& centers)
|
|
{
|
|
int numClusters = centers.rows;
|
|
if (numClusters<1) {
|
|
FLANN_THROW(cv::Error::StsBadArg, "Number of clusters must be at least 1");
|
|
}
|
|
|
|
DistanceType variance;
|
|
KMeansNodePtr* clusters = new KMeansNodePtr[numClusters];
|
|
|
|
int clusterCount = getMinVarianceClusters(root_[0], clusters, numClusters, variance);
|
|
|
|
Logger::info("Clusters requested: %d, returning %d\n",numClusters, clusterCount);
|
|
|
|
for (int i=0; i<clusterCount; ++i) {
|
|
CentersType* center = clusters[i]->pivot;
|
|
for (size_t j=0; j<veclen_; ++j) {
|
|
centers[i][j] = center[j];
|
|
}
|
|
}
|
|
delete[] clusters;
|
|
|
|
return clusterCount;
|
|
}
|
|
|
|
IndexParams getParameters() const CV_OVERRIDE
|
|
{
|
|
return index_params_;
|
|
}
|
|
|
|
|
|
private:
|
|
/**
|
|
* Structure representing a node in the hierarchical k-means tree.
|
|
*/
|
|
struct KMeansNode
|
|
{
|
|
/**
|
|
* The cluster center.
|
|
*/
|
|
CentersType* pivot;
|
|
/**
|
|
* The cluster radius.
|
|
*/
|
|
DistanceType radius;
|
|
/**
|
|
* The cluster mean radius.
|
|
*/
|
|
DistanceType mean_radius;
|
|
/**
|
|
* The cluster variance.
|
|
*/
|
|
DistanceType variance;
|
|
/**
|
|
* The cluster size (number of points in the cluster)
|
|
*/
|
|
int size;
|
|
/**
|
|
* Child nodes (only for non-terminal nodes)
|
|
*/
|
|
KMeansNode** childs;
|
|
/**
|
|
* Node points (only for terminal nodes)
|
|
*/
|
|
int* indices;
|
|
/**
|
|
* Level
|
|
*/
|
|
int level;
|
|
};
|
|
typedef KMeansNode* KMeansNodePtr;
|
|
|
|
/**
|
|
* Alias definition for a nicer syntax.
|
|
*/
|
|
typedef BranchStruct<KMeansNodePtr, DistanceType> BranchSt;
|
|
|
|
|
|
|
|
|
|
void save_tree(FILE* stream, KMeansNodePtr node, int num)
|
|
{
|
|
save_value(stream, *node);
|
|
save_value(stream, *(node->pivot), (int)veclen_);
|
|
if (node->childs==NULL) {
|
|
int indices_offset = (int)(node->indices - indices_[num]);
|
|
save_value(stream, indices_offset);
|
|
}
|
|
else {
|
|
for(int i=0; i<branching_; ++i) {
|
|
save_tree(stream, node->childs[i], num);
|
|
}
|
|
}
|
|
}
|
|
|
|
|
|
void load_tree(FILE* stream, KMeansNodePtr& node, int num)
|
|
{
|
|
node = pool_.allocate<KMeansNode>();
|
|
load_value(stream, *node);
|
|
node->pivot = new CentersType[veclen_];
|
|
load_value(stream, *(node->pivot), (int)veclen_);
|
|
if (node->childs==NULL) {
|
|
int indices_offset;
|
|
load_value(stream, indices_offset);
|
|
node->indices = indices_[num] + indices_offset;
|
|
}
|
|
else {
|
|
node->childs = pool_.allocate<KMeansNodePtr>(branching_);
|
|
for(int i=0; i<branching_; ++i) {
|
|
load_tree(stream, node->childs[i], num);
|
|
}
|
|
}
|
|
}
|
|
|
|
|
|
/**
|
|
* Helper function
|
|
*/
|
|
void free_centers(KMeansNodePtr node)
|
|
{
|
|
delete[] node->pivot;
|
|
if (node->childs!=NULL) {
|
|
for (int k=0; k<branching_; ++k) {
|
|
free_centers(node->childs[k]);
|
|
}
|
|
}
|
|
}
|
|
|
|
void free_centers()
|
|
{
|
|
if (root_ != NULL) {
|
|
for(int i=0; i<trees_; ++i) {
|
|
if (root_[i] != NULL) {
|
|
free_centers(root_[i]);
|
|
}
|
|
}
|
|
}
|
|
}
|
|
|
|
/**
|
|
* Release the inner elements of indices[]
|
|
*/
|
|
void free_indices()
|
|
{
|
|
if (indices_!=NULL) {
|
|
for(int i=0; i<trees_; ++i) {
|
|
if (indices_[i]!=NULL) {
|
|
delete[] indices_[i];
|
|
indices_[i] = NULL;
|
|
}
|
|
}
|
|
}
|
|
}
|
|
|
|
/**
|
|
* Computes the statistics of a node (mean, radius, variance).
|
|
*
|
|
* Params:
|
|
* node = the node to use
|
|
* indices = array of indices of the points belonging to the node
|
|
* indices_length = number of indices in the array
|
|
*/
|
|
void computeNodeStatistics(KMeansNodePtr node, int* indices, unsigned int indices_length)
|
|
{
|
|
DistanceType variance = 0;
|
|
CentersType* mean = new CentersType[veclen_];
|
|
memoryCounter_ += int(veclen_*sizeof(CentersType));
|
|
|
|
memset(mean,0,veclen_*sizeof(CentersType));
|
|
|
|
for (unsigned int i=0; i<indices_length; ++i) {
|
|
ElementType* vec = dataset_[indices[i]];
|
|
for (size_t j=0; j<veclen_; ++j) {
|
|
mean[j] += vec[j];
|
|
}
|
|
variance += distance_(vec, ZeroIterator<ElementType>(), veclen_);
|
|
}
|
|
float length = static_cast<float>(indices_length);
|
|
for (size_t j=0; j<veclen_; ++j) {
|
|
mean[j] = cvflann::round<CentersType>( mean[j] / static_cast<double>(indices_length) );
|
|
}
|
|
variance /= static_cast<DistanceType>( length );
|
|
variance -= distance_(mean, ZeroIterator<ElementType>(), veclen_);
|
|
|
|
DistanceType radius = 0;
|
|
for (unsigned int i=0; i<indices_length; ++i) {
|
|
DistanceType tmp = distance_(mean, dataset_[indices[i]], veclen_);
|
|
if (tmp>radius) {
|
|
radius = tmp;
|
|
}
|
|
}
|
|
|
|
node->variance = variance;
|
|
node->radius = radius;
|
|
node->pivot = mean;
|
|
}
|
|
|
|
|
|
void computeBitfieldNodeStatistics(KMeansNodePtr node, int* indices,
|
|
unsigned int indices_length)
|
|
{
|
|
const unsigned int accumulator_veclen = static_cast<unsigned int>(
|
|
veclen_*sizeof(CentersType)*BITS_PER_CHAR);
|
|
|
|
unsigned long long variance = 0ull;
|
|
CentersType* mean = new CentersType[veclen_];
|
|
memoryCounter_ += int(veclen_*sizeof(CentersType));
|
|
unsigned int* mean_accumulator = new unsigned int[accumulator_veclen];
|
|
|
|
memset(mean_accumulator, 0, sizeof(unsigned int)*accumulator_veclen);
|
|
|
|
for (unsigned int i=0; i<indices_length; ++i) {
|
|
variance += static_cast<unsigned long long>( ensureSquareDistance<Distance>(
|
|
distance_(dataset_[indices[i]], ZeroIterator<ElementType>(), veclen_)));
|
|
unsigned char* vec = (unsigned char*)dataset_[indices[i]];
|
|
for (size_t k=0, l=0; k<accumulator_veclen; k+=BITS_PER_CHAR, ++l) {
|
|
mean_accumulator[k] += (vec[l]) & 0x01;
|
|
mean_accumulator[k+1] += (vec[l]>>1) & 0x01;
|
|
mean_accumulator[k+2] += (vec[l]>>2) & 0x01;
|
|
mean_accumulator[k+3] += (vec[l]>>3) & 0x01;
|
|
mean_accumulator[k+4] += (vec[l]>>4) & 0x01;
|
|
mean_accumulator[k+5] += (vec[l]>>5) & 0x01;
|
|
mean_accumulator[k+6] += (vec[l]>>6) & 0x01;
|
|
mean_accumulator[k+7] += (vec[l]>>7) & 0x01;
|
|
}
|
|
}
|
|
double cnt = static_cast<double>(indices_length);
|
|
unsigned char* char_mean = (unsigned char*)mean;
|
|
for (size_t k=0, l=0; k<accumulator_veclen; k+=BITS_PER_CHAR, ++l) {
|
|
char_mean[l] = static_cast<unsigned char>(
|
|
(((int)(0.5 + (double)(mean_accumulator[k]) / cnt)))
|
|
| (((int)(0.5 + (double)(mean_accumulator[k+1]) / cnt))<<1)
|
|
| (((int)(0.5 + (double)(mean_accumulator[k+2]) / cnt))<<2)
|
|
| (((int)(0.5 + (double)(mean_accumulator[k+3]) / cnt))<<3)
|
|
| (((int)(0.5 + (double)(mean_accumulator[k+4]) / cnt))<<4)
|
|
| (((int)(0.5 + (double)(mean_accumulator[k+5]) / cnt))<<5)
|
|
| (((int)(0.5 + (double)(mean_accumulator[k+6]) / cnt))<<6)
|
|
| (((int)(0.5 + (double)(mean_accumulator[k+7]) / cnt))<<7));
|
|
}
|
|
variance = static_cast<unsigned long long>(
|
|
0.5 + static_cast<double>(variance) / static_cast<double>(indices_length));
|
|
variance -= static_cast<unsigned long long>(
|
|
ensureSquareDistance<Distance>(
|
|
distance_(mean, ZeroIterator<ElementType>(), veclen_)));
|
|
|
|
DistanceType radius = 0;
|
|
for (unsigned int i=0; i<indices_length; ++i) {
|
|
DistanceType tmp = distance_(mean, dataset_[indices[i]], veclen_);
|
|
if (tmp>radius) {
|
|
radius = tmp;
|
|
}
|
|
}
|
|
|
|
node->variance = static_cast<DistanceType>(variance);
|
|
node->radius = radius;
|
|
node->pivot = mean;
|
|
|
|
delete[] mean_accumulator;
|
|
}
|
|
|
|
|
|
void computeDnaNodeStatistics(KMeansNodePtr node, int* indices,
|
|
unsigned int indices_length)
|
|
{
|
|
const unsigned int histos_veclen = static_cast<unsigned int>(
|
|
veclen_*sizeof(CentersType)*(HISTOS_PER_BASE*BASE_PER_CHAR));
|
|
|
|
unsigned long long variance = 0ull;
|
|
unsigned int* histograms = new unsigned int[histos_veclen];
|
|
memset(histograms, 0, sizeof(unsigned int)*histos_veclen);
|
|
|
|
for (unsigned int i=0; i<indices_length; ++i) {
|
|
variance += static_cast<unsigned long long>( ensureSquareDistance<Distance>(
|
|
distance_(dataset_[indices[i]], ZeroIterator<ElementType>(), veclen_)));
|
|
|
|
unsigned char* vec = (unsigned char*)dataset_[indices[i]];
|
|
for (size_t k=0, l=0; k<histos_veclen; k+=HISTOS_PER_BASE*BASE_PER_CHAR, ++l) {
|
|
histograms[k + ((vec[l]) & 0x03)]++;
|
|
histograms[k + 4 + ((vec[l]>>2) & 0x03)]++;
|
|
histograms[k + 8 + ((vec[l]>>4) & 0x03)]++;
|
|
histograms[k +12 + ((vec[l]>>6) & 0x03)]++;
|
|
}
|
|
}
|
|
|
|
CentersType* mean = new CentersType[veclen_];
|
|
memoryCounter_ += int(veclen_*sizeof(CentersType));
|
|
unsigned char* char_mean = (unsigned char*)mean;
|
|
unsigned int* h = histograms;
|
|
for (size_t k=0, l=0; k<histos_veclen; k+=HISTOS_PER_BASE*BASE_PER_CHAR, ++l) {
|
|
char_mean[l] = (h[k] > h[k+1] ? h[k+2] > h[k+3] ? h[k] > h[k+2] ? 0x00 : 0x10
|
|
: h[k] > h[k+3] ? 0x00 : 0x11
|
|
: h[k+2] > h[k+3] ? h[k+1] > h[k+2] ? 0x01 : 0x10
|
|
: h[k+1] > h[k+3] ? 0x01 : 0x11)
|
|
| (h[k+4]>h[k+5] ? h[k+6] > h[k+7] ? h[k+4] > h[k+6] ? 0x00 : 0x1000
|
|
: h[k+4] > h[k+7] ? 0x00 : 0x1100
|
|
: h[k+6] > h[k+7] ? h[k+5] > h[k+6] ? 0x0100 : 0x1000
|
|
: h[k+5] > h[k+7] ? 0x0100 : 0x1100)
|
|
| (h[k+8]>h[k+9] ? h[k+10]>h[k+11] ? h[k+8] >h[k+10] ? 0x00 : 0x100000
|
|
: h[k+8] >h[k+11] ? 0x00 : 0x110000
|
|
: h[k+10]>h[k+11] ? h[k+9] >h[k+10] ? 0x010000 : 0x100000
|
|
: h[k+9] >h[k+11] ? 0x010000 : 0x110000)
|
|
| (h[k+12]>h[k+13] ? h[k+14]>h[k+15] ? h[k+12] >h[k+14] ? 0x00 : 0x10000000
|
|
: h[k+12] >h[k+15] ? 0x00 : 0x11000000
|
|
: h[k+14]>h[k+15] ? h[k+13] >h[k+14] ? 0x01000000 : 0x10000000
|
|
: h[k+13] >h[k+15] ? 0x01000000 : 0x11000000);
|
|
}
|
|
variance = static_cast<unsigned long long>(
|
|
0.5 + static_cast<double>(variance) / static_cast<double>(indices_length));
|
|
variance -= static_cast<unsigned long long>(
|
|
ensureSquareDistance<Distance>(
|
|
distance_(mean, ZeroIterator<ElementType>(), veclen_)));
|
|
|
|
DistanceType radius = 0;
|
|
for (unsigned int i=0; i<indices_length; ++i) {
|
|
DistanceType tmp = distance_(mean, dataset_[indices[i]], veclen_);
|
|
if (tmp>radius) {
|
|
radius = tmp;
|
|
}
|
|
}
|
|
|
|
node->variance = static_cast<DistanceType>(variance);
|
|
node->radius = radius;
|
|
node->pivot = mean;
|
|
|
|
delete[] histograms;
|
|
}
|
|
|
|
|
|
template<typename DistType>
|
|
void computeNodeStatistics(KMeansNodePtr node, int* indices,
|
|
unsigned int indices_length,
|
|
const DistType* identifier)
|
|
{
|
|
(void)identifier;
|
|
computeNodeStatistics(node, indices, indices_length);
|
|
}
|
|
|
|
void computeNodeStatistics(KMeansNodePtr node, int* indices,
|
|
unsigned int indices_length,
|
|
const cvflann::HammingLUT* identifier)
|
|
{
|
|
(void)identifier;
|
|
computeBitfieldNodeStatistics(node, indices, indices_length);
|
|
}
|
|
|
|
void computeNodeStatistics(KMeansNodePtr node, int* indices,
|
|
unsigned int indices_length,
|
|
const cvflann::Hamming<unsigned char>* identifier)
|
|
{
|
|
(void)identifier;
|
|
computeBitfieldNodeStatistics(node, indices, indices_length);
|
|
}
|
|
|
|
void computeNodeStatistics(KMeansNodePtr node, int* indices,
|
|
unsigned int indices_length,
|
|
const cvflann::Hamming2<unsigned char>* identifier)
|
|
{
|
|
(void)identifier;
|
|
computeBitfieldNodeStatistics(node, indices, indices_length);
|
|
}
|
|
|
|
void computeNodeStatistics(KMeansNodePtr node, int* indices,
|
|
unsigned int indices_length,
|
|
const cvflann::DNAmmingLUT* identifier)
|
|
{
|
|
(void)identifier;
|
|
computeDnaNodeStatistics(node, indices, indices_length);
|
|
}
|
|
|
|
void computeNodeStatistics(KMeansNodePtr node, int* indices,
|
|
unsigned int indices_length,
|
|
const cvflann::DNAmming2<unsigned char>* identifier)
|
|
{
|
|
(void)identifier;
|
|
computeDnaNodeStatistics(node, indices, indices_length);
|
|
}
|
|
|
|
|
|
void refineClustering(int* indices, int indices_length, int branching, CentersType** centers,
|
|
std::vector<DistanceType>& radiuses, int* belongs_to, int* count)
|
|
{
|
|
cv::AutoBuffer<double> dcenters_buf(branching*veclen_);
|
|
Matrix<double> dcenters(dcenters_buf.data(), branching, veclen_);
|
|
|
|
bool converged = false;
|
|
int iteration = 0;
|
|
while (!converged && iteration<iterations_) {
|
|
converged = true;
|
|
iteration++;
|
|
|
|
// compute the new cluster centers
|
|
for (int i=0; i<branching; ++i) {
|
|
memset(dcenters[i],0,sizeof(double)*veclen_);
|
|
radiuses[i] = 0;
|
|
}
|
|
for (int i=0; i<indices_length; ++i) {
|
|
ElementType* vec = dataset_[indices[i]];
|
|
double* center = dcenters[belongs_to[i]];
|
|
for (size_t k=0; k<veclen_; ++k) {
|
|
center[k] += vec[k];
|
|
}
|
|
}
|
|
for (int i=0; i<branching; ++i) {
|
|
int cnt = count[i];
|
|
for (size_t k=0; k<veclen_; ++k) {
|
|
dcenters[i][k] /= cnt;
|
|
}
|
|
}
|
|
|
|
std::vector<int> new_centroids(indices_length);
|
|
std::vector<DistanceType> sq_dists(indices_length);
|
|
|
|
// reassign points to clusters
|
|
KMeansDistanceComputer<Matrix<double> > invoker(
|
|
distance_, dataset_, branching, indices, dcenters, veclen_, new_centroids, sq_dists);
|
|
parallel_for_(cv::Range(0, (int)indices_length), invoker);
|
|
|
|
for (int i=0; i < (int)indices_length; ++i) {
|
|
DistanceType sq_dist(sq_dists[i]);
|
|
int new_centroid(new_centroids[i]);
|
|
if (sq_dist > radiuses[new_centroid]) {
|
|
radiuses[new_centroid] = sq_dist;
|
|
}
|
|
if (new_centroid != belongs_to[i]) {
|
|
count[belongs_to[i]]--;
|
|
count[new_centroid]++;
|
|
belongs_to[i] = new_centroid;
|
|
converged = false;
|
|
}
|
|
}
|
|
|
|
for (int i=0; i<branching; ++i) {
|
|
// if one cluster converges to an empty cluster,
|
|
// move an element into that cluster
|
|
if (count[i]==0) {
|
|
int j = (i+1)%branching;
|
|
while (count[j]<=1) {
|
|
j = (j+1)%branching;
|
|
}
|
|
|
|
for (int k=0; k<indices_length; ++k) {
|
|
if (belongs_to[k]==j) {
|
|
// for cluster j, we move the furthest element from the center to the empty cluster i
|
|
if ( distance_(dataset_[indices[k]], dcenters[j], veclen_) == radiuses[j] ) {
|
|
belongs_to[k] = i;
|
|
count[j]--;
|
|
count[i]++;
|
|
break;
|
|
}
|
|
}
|
|
}
|
|
converged = false;
|
|
}
|
|
}
|
|
}
|
|
|
|
for (int i=0; i<branching; ++i) {
|
|
centers[i] = new CentersType[veclen_];
|
|
memoryCounter_ += (int)(veclen_*sizeof(CentersType));
|
|
for (size_t k=0; k<veclen_; ++k) {
|
|
centers[i][k] = (CentersType)dcenters[i][k];
|
|
}
|
|
}
|
|
}
|
|
|
|
|
|
void refineBitfieldClustering(int* indices, int indices_length, int branching, CentersType** centers,
|
|
std::vector<DistanceType>& radiuses, int* belongs_to, int* count)
|
|
{
|
|
for (int i=0; i<branching; ++i) {
|
|
centers[i] = new CentersType[veclen_];
|
|
memoryCounter_ += (int)(veclen_*sizeof(CentersType));
|
|
}
|
|
|
|
const unsigned int accumulator_veclen = static_cast<unsigned int>(
|
|
veclen_*sizeof(ElementType)*BITS_PER_CHAR);
|
|
cv::AutoBuffer<unsigned int> dcenters_buf(branching*accumulator_veclen);
|
|
Matrix<unsigned int> dcenters(dcenters_buf.data(), branching, accumulator_veclen);
|
|
|
|
bool converged = false;
|
|
int iteration = 0;
|
|
while (!converged && iteration<iterations_) {
|
|
converged = true;
|
|
iteration++;
|
|
|
|
// compute the new cluster centers
|
|
for (int i=0; i<branching; ++i) {
|
|
memset(dcenters[i],0,sizeof(unsigned int)*accumulator_veclen);
|
|
radiuses[i] = 0;
|
|
}
|
|
for (int i=0; i<indices_length; ++i) {
|
|
unsigned char* vec = (unsigned char*)dataset_[indices[i]];
|
|
unsigned int* dcenter = dcenters[belongs_to[i]];
|
|
for (size_t k=0, l=0; k<accumulator_veclen; k+=BITS_PER_CHAR, ++l) {
|
|
dcenter[k] += (vec[l]) & 0x01;
|
|
dcenter[k+1] += (vec[l]>>1) & 0x01;
|
|
dcenter[k+2] += (vec[l]>>2) & 0x01;
|
|
dcenter[k+3] += (vec[l]>>3) & 0x01;
|
|
dcenter[k+4] += (vec[l]>>4) & 0x01;
|
|
dcenter[k+5] += (vec[l]>>5) & 0x01;
|
|
dcenter[k+6] += (vec[l]>>6) & 0x01;
|
|
dcenter[k+7] += (vec[l]>>7) & 0x01;
|
|
}
|
|
}
|
|
for (int i=0; i<branching; ++i) {
|
|
double cnt = static_cast<double>(count[i]);
|
|
unsigned int* dcenter = dcenters[i];
|
|
unsigned char* charCenter = (unsigned char*)centers[i];
|
|
for (size_t k=0, l=0; k<accumulator_veclen; k+=BITS_PER_CHAR, ++l) {
|
|
charCenter[l] = static_cast<unsigned char>(
|
|
(((int)(0.5 + (double)(dcenter[k]) / cnt)))
|
|
| (((int)(0.5 + (double)(dcenter[k+1]) / cnt))<<1)
|
|
| (((int)(0.5 + (double)(dcenter[k+2]) / cnt))<<2)
|
|
| (((int)(0.5 + (double)(dcenter[k+3]) / cnt))<<3)
|
|
| (((int)(0.5 + (double)(dcenter[k+4]) / cnt))<<4)
|
|
| (((int)(0.5 + (double)(dcenter[k+5]) / cnt))<<5)
|
|
| (((int)(0.5 + (double)(dcenter[k+6]) / cnt))<<6)
|
|
| (((int)(0.5 + (double)(dcenter[k+7]) / cnt))<<7));
|
|
}
|
|
}
|
|
|
|
std::vector<int> new_centroids(indices_length);
|
|
std::vector<DistanceType> dists(indices_length);
|
|
|
|
// reassign points to clusters
|
|
KMeansDistanceComputer<ElementType**> invoker(
|
|
distance_, dataset_, branching, indices, centers, veclen_, new_centroids, dists);
|
|
parallel_for_(cv::Range(0, (int)indices_length), invoker);
|
|
|
|
for (int i=0; i < indices_length; ++i) {
|
|
DistanceType dist(dists[i]);
|
|
int new_centroid(new_centroids[i]);
|
|
if (dist > radiuses[new_centroid]) {
|
|
radiuses[new_centroid] = dist;
|
|
}
|
|
if (new_centroid != belongs_to[i]) {
|
|
count[belongs_to[i]]--;
|
|
count[new_centroid]++;
|
|
belongs_to[i] = new_centroid;
|
|
converged = false;
|
|
}
|
|
}
|
|
|
|
for (int i=0; i<branching; ++i) {
|
|
// if one cluster converges to an empty cluster,
|
|
// move an element into that cluster
|
|
if (count[i]==0) {
|
|
int j = (i+1)%branching;
|
|
while (count[j]<=1) {
|
|
j = (j+1)%branching;
|
|
}
|
|
|
|
for (int k=0; k<indices_length; ++k) {
|
|
if (belongs_to[k]==j) {
|
|
// for cluster j, we move the furthest element from the center to the empty cluster i
|
|
if ( distance_(dataset_[indices[k]], centers[j], veclen_) == radiuses[j] ) {
|
|
belongs_to[k] = i;
|
|
count[j]--;
|
|
count[i]++;
|
|
break;
|
|
}
|
|
}
|
|
}
|
|
converged = false;
|
|
}
|
|
}
|
|
}
|
|
}
|
|
|
|
|
|
void refineDnaClustering(int* indices, int indices_length, int branching, CentersType** centers,
|
|
std::vector<DistanceType>& radiuses, int* belongs_to, int* count)
|
|
{
|
|
for (int i=0; i<branching; ++i) {
|
|
centers[i] = new CentersType[veclen_];
|
|
memoryCounter_ += (int)(veclen_*sizeof(CentersType));
|
|
}
|
|
|
|
const unsigned int histos_veclen = static_cast<unsigned int>(
|
|
veclen_*sizeof(CentersType)*(HISTOS_PER_BASE*BASE_PER_CHAR));
|
|
cv::AutoBuffer<unsigned int> histos_buf(branching*histos_veclen);
|
|
Matrix<unsigned int> histos(histos_buf.data(), branching, histos_veclen);
|
|
|
|
bool converged = false;
|
|
int iteration = 0;
|
|
while (!converged && iteration<iterations_) {
|
|
converged = true;
|
|
iteration++;
|
|
|
|
// compute the new cluster centers
|
|
for (int i=0; i<branching; ++i) {
|
|
memset(histos[i],0,sizeof(unsigned int)*histos_veclen);
|
|
radiuses[i] = 0;
|
|
}
|
|
for (int i=0; i<indices_length; ++i) {
|
|
unsigned char* vec = (unsigned char*)dataset_[indices[i]];
|
|
unsigned int* h = histos[belongs_to[i]];
|
|
for (size_t k=0, l=0; k<histos_veclen; k+=HISTOS_PER_BASE*BASE_PER_CHAR, ++l) {
|
|
h[k + ((vec[l]) & 0x03)]++;
|
|
h[k + 4 + ((vec[l]>>2) & 0x03)]++;
|
|
h[k + 8 + ((vec[l]>>4) & 0x03)]++;
|
|
h[k +12 + ((vec[l]>>6) & 0x03)]++;
|
|
}
|
|
}
|
|
for (int i=0; i<branching; ++i) {
|
|
unsigned int* h = histos[i];
|
|
unsigned char* charCenter = (unsigned char*)centers[i];
|
|
for (size_t k=0, l=0; k<histos_veclen; k+=HISTOS_PER_BASE*BASE_PER_CHAR, ++l) {
|
|
charCenter[l]= (h[k] > h[k+1] ? h[k+2] > h[k+3] ? h[k] > h[k+2] ? 0x00 : 0x10
|
|
: h[k] > h[k+3] ? 0x00 : 0x11
|
|
: h[k+2] > h[k+3] ? h[k+1] > h[k+2] ? 0x01 : 0x10
|
|
: h[k+1] > h[k+3] ? 0x01 : 0x11)
|
|
| (h[k+4]>h[k+5] ? h[k+6] > h[k+7] ? h[k+4] > h[k+6] ? 0x00 : 0x1000
|
|
: h[k+4] > h[k+7] ? 0x00 : 0x1100
|
|
: h[k+6] > h[k+7] ? h[k+5] > h[k+6] ? 0x0100 : 0x1000
|
|
: h[k+5] > h[k+7] ? 0x0100 : 0x1100)
|
|
| (h[k+8]>h[k+9] ? h[k+10]>h[k+11] ? h[k+8] >h[k+10] ? 0x00 : 0x100000
|
|
: h[k+8] >h[k+11] ? 0x00 : 0x110000
|
|
: h[k+10]>h[k+11] ? h[k+9] >h[k+10] ? 0x010000 : 0x100000
|
|
: h[k+9] >h[k+11] ? 0x010000 : 0x110000)
|
|
| (h[k+12]>h[k+13] ? h[k+14]>h[k+15] ? h[k+12] >h[k+14] ? 0x00 : 0x10000000
|
|
: h[k+12] >h[k+15] ? 0x00 : 0x11000000
|
|
: h[k+14]>h[k+15] ? h[k+13] >h[k+14] ? 0x01000000 : 0x10000000
|
|
: h[k+13] >h[k+15] ? 0x01000000 : 0x11000000);
|
|
}
|
|
}
|
|
|
|
std::vector<int> new_centroids(indices_length);
|
|
std::vector<DistanceType> dists(indices_length);
|
|
|
|
// reassign points to clusters
|
|
KMeansDistanceComputer<ElementType**> invoker(
|
|
distance_, dataset_, branching, indices, centers, veclen_, new_centroids, dists);
|
|
parallel_for_(cv::Range(0, (int)indices_length), invoker);
|
|
|
|
for (int i=0; i < indices_length; ++i) {
|
|
DistanceType dist(dists[i]);
|
|
int new_centroid(new_centroids[i]);
|
|
if (dist > radiuses[new_centroid]) {
|
|
radiuses[new_centroid] = dist;
|
|
}
|
|
if (new_centroid != belongs_to[i]) {
|
|
count[belongs_to[i]]--;
|
|
count[new_centroid]++;
|
|
belongs_to[i] = new_centroid;
|
|
converged = false;
|
|
}
|
|
}
|
|
|
|
for (int i=0; i<branching; ++i) {
|
|
// if one cluster converges to an empty cluster,
|
|
// move an element into that cluster
|
|
if (count[i]==0) {
|
|
int j = (i+1)%branching;
|
|
while (count[j]<=1) {
|
|
j = (j+1)%branching;
|
|
}
|
|
|
|
for (int k=0; k<indices_length; ++k) {
|
|
if (belongs_to[k]==j) {
|
|
// for cluster j, we move the furthest element from the center to the empty cluster i
|
|
if ( distance_(dataset_[indices[k]], centers[j], veclen_) == radiuses[j] ) {
|
|
belongs_to[k] = i;
|
|
count[j]--;
|
|
count[i]++;
|
|
break;
|
|
}
|
|
}
|
|
}
|
|
converged = false;
|
|
}
|
|
}
|
|
}
|
|
}
|
|
|
|
|
|
void computeSubClustering(KMeansNodePtr node, int* indices, int indices_length,
|
|
int branching, int level, CentersType** centers,
|
|
std::vector<DistanceType>& radiuses, int* belongs_to, int* count)
|
|
{
|
|
// compute kmeans clustering for each of the resulting clusters
|
|
node->childs = pool_.allocate<KMeansNodePtr>(branching);
|
|
int start = 0;
|
|
int end = start;
|
|
for (int c=0; c<branching; ++c) {
|
|
int s = count[c];
|
|
|
|
DistanceType variance = 0;
|
|
DistanceType mean_radius =0;
|
|
for (int i=0; i<indices_length; ++i) {
|
|
if (belongs_to[i]==c) {
|
|
DistanceType d = distance_(dataset_[indices[i]], ZeroIterator<ElementType>(), veclen_);
|
|
variance += d;
|
|
mean_radius += static_cast<DistanceType>( sqrt(d) );
|
|
std::swap(indices[i],indices[end]);
|
|
std::swap(belongs_to[i],belongs_to[end]);
|
|
end++;
|
|
}
|
|
}
|
|
variance /= s;
|
|
mean_radius /= s;
|
|
variance -= distance_(centers[c], ZeroIterator<ElementType>(), veclen_);
|
|
|
|
node->childs[c] = pool_.allocate<KMeansNode>();
|
|
std::memset(node->childs[c], 0, sizeof(KMeansNode));
|
|
node->childs[c]->radius = radiuses[c];
|
|
node->childs[c]->pivot = centers[c];
|
|
node->childs[c]->variance = variance;
|
|
node->childs[c]->mean_radius = mean_radius;
|
|
computeClustering(node->childs[c],indices+start, end-start, branching, level+1);
|
|
start=end;
|
|
}
|
|
}
|
|
|
|
|
|
void computeAnyBitfieldSubClustering(KMeansNodePtr node, int* indices, int indices_length,
|
|
int branching, int level, CentersType** centers,
|
|
std::vector<DistanceType>& radiuses, int* belongs_to, int* count)
|
|
{
|
|
// compute kmeans clustering for each of the resulting clusters
|
|
node->childs = pool_.allocate<KMeansNodePtr>(branching);
|
|
int start = 0;
|
|
int end = start;
|
|
for (int c=0; c<branching; ++c) {
|
|
int s = count[c];
|
|
|
|
unsigned long long variance = 0ull;
|
|
DistanceType mean_radius =0;
|
|
for (int i=0; i<indices_length; ++i) {
|
|
if (belongs_to[i]==c) {
|
|
DistanceType d = distance_(dataset_[indices[i]], ZeroIterator<ElementType>(), veclen_);
|
|
variance += static_cast<unsigned long long>( ensureSquareDistance<Distance>(d) );
|
|
mean_radius += ensureSimpleDistance<Distance>(d);
|
|
std::swap(indices[i],indices[end]);
|
|
std::swap(belongs_to[i],belongs_to[end]);
|
|
end++;
|
|
}
|
|
}
|
|
mean_radius = static_cast<DistanceType>(
|
|
0.5f + static_cast<float>(mean_radius) / static_cast<float>(s));
|
|
variance = static_cast<unsigned long long>(
|
|
0.5 + static_cast<double>(variance) / static_cast<double>(s));
|
|
variance -= static_cast<unsigned long long>(
|
|
ensureSquareDistance<Distance>(
|
|
distance_(centers[c], ZeroIterator<ElementType>(), veclen_)));
|
|
|
|
node->childs[c] = pool_.allocate<KMeansNode>();
|
|
std::memset(node->childs[c], 0, sizeof(KMeansNode));
|
|
node->childs[c]->radius = radiuses[c];
|
|
node->childs[c]->pivot = centers[c];
|
|
node->childs[c]->variance = static_cast<DistanceType>(variance);
|
|
node->childs[c]->mean_radius = mean_radius;
|
|
computeClustering(node->childs[c],indices+start, end-start, branching, level+1);
|
|
start=end;
|
|
}
|
|
}
|
|
|
|
|
|
template<typename DistType>
|
|
void refineAndSplitClustering(
|
|
KMeansNodePtr node, int* indices, int indices_length, int branching,
|
|
int level, CentersType** centers, std::vector<DistanceType>& radiuses,
|
|
int* belongs_to, int* count, const DistType* identifier)
|
|
{
|
|
(void)identifier;
|
|
refineClustering(indices, indices_length, branching, centers, radiuses, belongs_to, count);
|
|
|
|
computeSubClustering(node, indices, indices_length, branching,
|
|
level, centers, radiuses, belongs_to, count);
|
|
}
|
|
|
|
|
|
/**
|
|
* The methods responsible with doing the recursive hierarchical clustering on
|
|
* binary vectors.
|
|
* As some might have heard that KMeans on binary data doesn't make sense,
|
|
* it's worth a little explanation why it actually fairly works. As
|
|
* with the Hierarchical Clustering algortihm, we seed several centers for the
|
|
* current node by picking some of its points. Then in a first pass each point
|
|
* of the node is then related to its closest center. Now let's have a look at
|
|
* the 5 central dimensions of the 9 following points:
|
|
*
|
|
* xxxxxx11100xxxxx (1)
|
|
* xxxxxx11010xxxxx (2)
|
|
* xxxxxx11001xxxxx (3)
|
|
* xxxxxx10110xxxxx (4)
|
|
* xxxxxx10101xxxxx (5)
|
|
* xxxxxx10011xxxxx (6)
|
|
* xxxxxx01110xxxxx (7)
|
|
* xxxxxx01101xxxxx (8)
|
|
* xxxxxx01011xxxxx (9)
|
|
* sum _____
|
|
* of 1: 66555
|
|
*
|
|
* Even if the barycenter notion doesn't apply, we can set a center
|
|
* xxxxxx11111xxxxx that will better fit the five dimensions we are focusing
|
|
* on for these points.
|
|
*
|
|
* Note that convergence isn't ensured anymore. In practice, using Gonzales
|
|
* as seeding algorithm should be fine for getting convergence ("iterations"
|
|
* value can be set to -1). But with KMeans++ seeding you should definitely
|
|
* set a maximum number of iterations (but make it higher than the "iterations"
|
|
* default value of 11).
|
|
*
|
|
* Params:
|
|
* node = the node to cluster
|
|
* indices = indices of the points belonging to the current node
|
|
* indices_length = number of points in the current node
|
|
* branching = the branching factor to use in the clustering
|
|
* level = 0 for the root node, it increases with the subdivision levels
|
|
* centers = clusters centers to compute
|
|
* radiuses = radiuses of clusters
|
|
* belongs_to = LookUp Table returning, for a given indice id, the center id it belongs to
|
|
* count = array storing the number of indices for a given center id
|
|
* identifier = dummy pointer on an instance of Distance (use to branch correctly among templates)
|
|
*/
|
|
void refineAndSplitClustering(
|
|
KMeansNodePtr node, int* indices, int indices_length, int branching,
|
|
int level, CentersType** centers, std::vector<DistanceType>& radiuses,
|
|
int* belongs_to, int* count, const cvflann::HammingLUT* identifier)
|
|
{
|
|
(void)identifier;
|
|
refineBitfieldClustering(
|
|
indices, indices_length, branching, centers, radiuses, belongs_to, count);
|
|
|
|
computeAnyBitfieldSubClustering(node, indices, indices_length, branching,
|
|
level, centers, radiuses, belongs_to, count);
|
|
}
|
|
|
|
|
|
void refineAndSplitClustering(
|
|
KMeansNodePtr node, int* indices, int indices_length, int branching,
|
|
int level, CentersType** centers, std::vector<DistanceType>& radiuses,
|
|
int* belongs_to, int* count, const cvflann::Hamming<unsigned char>* identifier)
|
|
{
|
|
(void)identifier;
|
|
refineBitfieldClustering(
|
|
indices, indices_length, branching, centers, radiuses, belongs_to, count);
|
|
|
|
computeAnyBitfieldSubClustering(node, indices, indices_length, branching,
|
|
level, centers, radiuses, belongs_to, count);
|
|
}
|
|
|
|
|
|
void refineAndSplitClustering(
|
|
KMeansNodePtr node, int* indices, int indices_length, int branching,
|
|
int level, CentersType** centers, std::vector<DistanceType>& radiuses,
|
|
int* belongs_to, int* count, const cvflann::Hamming2<unsigned char>* identifier)
|
|
{
|
|
(void)identifier;
|
|
refineBitfieldClustering(
|
|
indices, indices_length, branching, centers, radiuses, belongs_to, count);
|
|
|
|
computeAnyBitfieldSubClustering(node, indices, indices_length, branching,
|
|
level, centers, radiuses, belongs_to, count);
|
|
}
|
|
|
|
|
|
void refineAndSplitClustering(
|
|
KMeansNodePtr node, int* indices, int indices_length, int branching,
|
|
int level, CentersType** centers, std::vector<DistanceType>& radiuses,
|
|
int* belongs_to, int* count, const cvflann::DNAmmingLUT* identifier)
|
|
{
|
|
(void)identifier;
|
|
refineDnaClustering(
|
|
indices, indices_length, branching, centers, radiuses, belongs_to, count);
|
|
|
|
computeAnyBitfieldSubClustering(node, indices, indices_length, branching,
|
|
level, centers, radiuses, belongs_to, count);
|
|
}
|
|
|
|
|
|
void refineAndSplitClustering(
|
|
KMeansNodePtr node, int* indices, int indices_length, int branching,
|
|
int level, CentersType** centers, std::vector<DistanceType>& radiuses,
|
|
int* belongs_to, int* count, const cvflann::DNAmming2<unsigned char>* identifier)
|
|
{
|
|
(void)identifier;
|
|
refineDnaClustering(
|
|
indices, indices_length, branching, centers, radiuses, belongs_to, count);
|
|
|
|
computeAnyBitfieldSubClustering(node, indices, indices_length, branching,
|
|
level, centers, radiuses, belongs_to, count);
|
|
}
|
|
|
|
|
|
/**
|
|
* The method responsible with actually doing the recursive hierarchical
|
|
* clustering
|
|
*
|
|
* Params:
|
|
* node = the node to cluster
|
|
* indices = indices of the points belonging to the current node
|
|
* branching = the branching factor to use in the clustering
|
|
*
|
|
* TODO: for 1-sized clusters don't store a cluster center (it's the same as the single cluster point)
|
|
*/
|
|
void computeClustering(KMeansNodePtr node, int* indices, int indices_length, int branching, int level)
|
|
{
|
|
node->size = indices_length;
|
|
node->level = level;
|
|
|
|
if (indices_length < branching) {
|
|
node->indices = indices;
|
|
std::sort(node->indices,node->indices+indices_length);
|
|
node->childs = NULL;
|
|
return;
|
|
}
|
|
|
|
cv::AutoBuffer<int> centers_idx_buf(branching);
|
|
int* centers_idx = centers_idx_buf.data();
|
|
int centers_length;
|
|
(this->*chooseCenters)(branching, indices, indices_length, centers_idx, centers_length);
|
|
|
|
if (centers_length<branching) {
|
|
node->indices = indices;
|
|
std::sort(node->indices,node->indices+indices_length);
|
|
node->childs = NULL;
|
|
return;
|
|
}
|
|
|
|
|
|
std::vector<DistanceType> radiuses(branching);
|
|
cv::AutoBuffer<int> count_buf(branching);
|
|
int* count = count_buf.data();
|
|
for (int i=0; i<branching; ++i) {
|
|
radiuses[i] = 0;
|
|
count[i] = 0;
|
|
}
|
|
|
|
// assign points to clusters
|
|
cv::AutoBuffer<int> belongs_to_buf(indices_length);
|
|
int* belongs_to = belongs_to_buf.data();
|
|
for (int i=0; i<indices_length; ++i) {
|
|
DistanceType sq_dist = distance_(dataset_[indices[i]], dataset_[centers_idx[0]], veclen_);
|
|
belongs_to[i] = 0;
|
|
for (int j=1; j<branching; ++j) {
|
|
DistanceType new_sq_dist = distance_(dataset_[indices[i]], dataset_[centers_idx[j]], veclen_);
|
|
if (sq_dist>new_sq_dist) {
|
|
belongs_to[i] = j;
|
|
sq_dist = new_sq_dist;
|
|
}
|
|
}
|
|
if (sq_dist>radiuses[belongs_to[i]]) {
|
|
radiuses[belongs_to[i]] = sq_dist;
|
|
}
|
|
count[belongs_to[i]]++;
|
|
}
|
|
|
|
CentersType** centers = new CentersType*[branching];
|
|
|
|
Distance* dummy = NULL;
|
|
refineAndSplitClustering(node, indices, indices_length, branching, level,
|
|
centers, radiuses, belongs_to, count, dummy);
|
|
|
|
delete[] centers;
|
|
}
|
|
|
|
|
|
/**
|
|
* Performs one descent in the hierarchical k-means tree. The branches not
|
|
* visited are stored in a priority queue.
|
|
*
|
|
* Params:
|
|
* node = node to explore
|
|
* result = container for the k-nearest neighbors found
|
|
* vec = query points
|
|
* checks = how many points in the dataset have been checked so far
|
|
* maxChecks = maximum dataset points to checks
|
|
*/
|
|
|
|
|
|
void findNN(KMeansNodePtr node, ResultSet<DistanceType>& result, const ElementType* vec, int& checks, int maxChecks,
|
|
const cv::Ptr<Heap<BranchSt>>& heap)
|
|
{
|
|
// Ignore those clusters that are too far away
|
|
{
|
|
DistanceType bsq = distance_(vec, node->pivot, veclen_);
|
|
DistanceType rsq = node->radius;
|
|
DistanceType wsq = result.worstDist();
|
|
|
|
if (isSquareDistance<Distance>())
|
|
{
|
|
DistanceType val = bsq-rsq-wsq;
|
|
if ((val>0) && (val*val > 4*rsq*wsq))
|
|
return;
|
|
}
|
|
else
|
|
{
|
|
if (bsq-rsq > wsq)
|
|
return;
|
|
}
|
|
}
|
|
|
|
if (node->childs==NULL) {
|
|
if ((checks>=maxChecks) && result.full()) {
|
|
return;
|
|
}
|
|
checks += node->size;
|
|
for (int i=0; i<node->size; ++i) {
|
|
int index = node->indices[i];
|
|
DistanceType dist = distance_(dataset_[index], vec, veclen_);
|
|
result.addPoint(dist, index);
|
|
}
|
|
}
|
|
else {
|
|
DistanceType* domain_distances = new DistanceType[branching_];
|
|
int closest_center = exploreNodeBranches(node, vec, domain_distances, heap);
|
|
delete[] domain_distances;
|
|
findNN(node->childs[closest_center],result,vec, checks, maxChecks, heap);
|
|
}
|
|
}
|
|
|
|
/**
|
|
* Helper function that computes the nearest childs of a node to a given query point.
|
|
* Params:
|
|
* node = the node
|
|
* q = the query point
|
|
* distances = array with the distances to each child node.
|
|
* Returns:
|
|
*/
|
|
int exploreNodeBranches(KMeansNodePtr node, const ElementType* q, DistanceType* domain_distances, const cv::Ptr<Heap<BranchSt>>& heap)
|
|
{
|
|
|
|
int best_index = 0;
|
|
domain_distances[best_index] = distance_(q, node->childs[best_index]->pivot, veclen_);
|
|
for (int i=1; i<branching_; ++i) {
|
|
domain_distances[i] = distance_(q, node->childs[i]->pivot, veclen_);
|
|
if (domain_distances[i]<domain_distances[best_index]) {
|
|
best_index = i;
|
|
}
|
|
}
|
|
|
|
// float* best_center = node->childs[best_index]->pivot;
|
|
for (int i=0; i<branching_; ++i) {
|
|
if (i != best_index) {
|
|
domain_distances[i] -= cvflann::round<DistanceType>(
|
|
cb_index_*node->childs[i]->variance );
|
|
|
|
// float dist_to_border = getDistanceToBorder(node.childs[i].pivot,best_center,q);
|
|
// if (domain_distances[i]<dist_to_border) {
|
|
// domain_distances[i] = dist_to_border;
|
|
// }
|
|
heap->insert(BranchSt(node->childs[i],domain_distances[i]));
|
|
}
|
|
}
|
|
|
|
return best_index;
|
|
}
|
|
|
|
|
|
/**
|
|
* Function the performs exact nearest neighbor search by traversing the entire tree.
|
|
*/
|
|
void findExactNN(KMeansNodePtr node, ResultSet<DistanceType>& result, const ElementType* vec)
|
|
{
|
|
// Ignore those clusters that are too far away
|
|
{
|
|
DistanceType bsq = distance_(vec, node->pivot, veclen_);
|
|
DistanceType rsq = node->radius;
|
|
DistanceType wsq = result.worstDist();
|
|
|
|
if (isSquareDistance<Distance>())
|
|
{
|
|
DistanceType val = bsq-rsq-wsq;
|
|
if ((val>0) && (val*val > 4*rsq*wsq))
|
|
return;
|
|
}
|
|
else
|
|
{
|
|
if (bsq-rsq > wsq)
|
|
return;
|
|
}
|
|
}
|
|
|
|
|
|
if (node->childs==NULL) {
|
|
for (int i=0; i<node->size; ++i) {
|
|
int index = node->indices[i];
|
|
DistanceType dist = distance_(dataset_[index], vec, veclen_);
|
|
result.addPoint(dist, index);
|
|
}
|
|
}
|
|
else {
|
|
int* sort_indices = new int[branching_];
|
|
|
|
getCenterOrdering(node, vec, sort_indices);
|
|
|
|
for (int i=0; i<branching_; ++i) {
|
|
findExactNN(node->childs[sort_indices[i]],result,vec);
|
|
}
|
|
|
|
delete[] sort_indices;
|
|
}
|
|
}
|
|
|
|
|
|
/**
|
|
* Helper function.
|
|
*
|
|
* I computes the order in which to traverse the child nodes of a particular node.
|
|
*/
|
|
void getCenterOrdering(KMeansNodePtr node, const ElementType* q, int* sort_indices)
|
|
{
|
|
DistanceType* domain_distances = new DistanceType[branching_];
|
|
for (int i=0; i<branching_; ++i) {
|
|
DistanceType dist = distance_(q, node->childs[i]->pivot, veclen_);
|
|
|
|
int j=0;
|
|
while (domain_distances[j]<dist && j<i)
|
|
j++;
|
|
for (int k=i; k>j; --k) {
|
|
domain_distances[k] = domain_distances[k-1];
|
|
sort_indices[k] = sort_indices[k-1];
|
|
}
|
|
domain_distances[j] = dist;
|
|
sort_indices[j] = i;
|
|
}
|
|
delete[] domain_distances;
|
|
}
|
|
|
|
/**
|
|
* Method that computes the squared distance from the query point q
|
|
* from inside region with center c to the border between this
|
|
* region and the region with center p
|
|
*/
|
|
DistanceType getDistanceToBorder(DistanceType* p, DistanceType* c, DistanceType* q)
|
|
{
|
|
DistanceType sum = 0;
|
|
DistanceType sum2 = 0;
|
|
|
|
for (int i=0; i<veclen_; ++i) {
|
|
DistanceType t = c[i]-p[i];
|
|
sum += t*(q[i]-(c[i]+p[i])/2);
|
|
sum2 += t*t;
|
|
}
|
|
|
|
return sum*sum/sum2;
|
|
}
|
|
|
|
|
|
/**
|
|
* Helper function the descends in the hierarchical k-means tree by splitting those clusters that minimize
|
|
* the overall variance of the clustering.
|
|
* Params:
|
|
* root = root node
|
|
* clusters = array with clusters centers (return value)
|
|
* varianceValue = variance of the clustering (return value)
|
|
* Returns:
|
|
*/
|
|
int getMinVarianceClusters(KMeansNodePtr root, KMeansNodePtr* clusters, int clusters_length, DistanceType& varianceValue)
|
|
{
|
|
int clusterCount = 1;
|
|
clusters[0] = root;
|
|
|
|
DistanceType meanVariance = root->variance*root->size;
|
|
|
|
while (clusterCount<clusters_length) {
|
|
DistanceType minVariance = (std::numeric_limits<DistanceType>::max)();
|
|
int splitIndex = -1;
|
|
|
|
for (int i=0; i<clusterCount; ++i) {
|
|
if (clusters[i]->childs != NULL) {
|
|
|
|
DistanceType variance = meanVariance - clusters[i]->variance*clusters[i]->size;
|
|
|
|
for (int j=0; j<branching_; ++j) {
|
|
variance += clusters[i]->childs[j]->variance*clusters[i]->childs[j]->size;
|
|
}
|
|
if (variance<minVariance) {
|
|
minVariance = variance;
|
|
splitIndex = i;
|
|
}
|
|
}
|
|
}
|
|
|
|
if (splitIndex==-1) break;
|
|
if ( (branching_+clusterCount-1) > clusters_length) break;
|
|
|
|
meanVariance = minVariance;
|
|
|
|
// split node
|
|
KMeansNodePtr toSplit = clusters[splitIndex];
|
|
clusters[splitIndex] = toSplit->childs[0];
|
|
for (int i=1; i<branching_; ++i) {
|
|
clusters[clusterCount++] = toSplit->childs[i];
|
|
}
|
|
}
|
|
|
|
varianceValue = meanVariance/root->size;
|
|
return clusterCount;
|
|
}
|
|
|
|
private:
|
|
/** The branching factor used in the hierarchical k-means clustering */
|
|
int branching_;
|
|
|
|
/** Number of kmeans trees (default is one) */
|
|
int trees_;
|
|
|
|
/** Maximum number of iterations to use when performing k-means clustering */
|
|
int iterations_;
|
|
|
|
/** Algorithm for choosing the cluster centers */
|
|
flann_centers_init_t centers_init_;
|
|
|
|
/**
|
|
* Cluster border index. This is used in the tree search phase when determining
|
|
* the closest cluster to explore next. A zero value takes into account only
|
|
* the cluster centres, a value greater then zero also take into account the size
|
|
* of the cluster.
|
|
*/
|
|
float cb_index_;
|
|
|
|
/**
|
|
* The dataset used by this index
|
|
*/
|
|
const Matrix<ElementType> dataset_;
|
|
|
|
/** Index parameters */
|
|
IndexParams index_params_;
|
|
|
|
/**
|
|
* Number of features in the dataset.
|
|
*/
|
|
size_t size_;
|
|
|
|
/**
|
|
* Length of each feature.
|
|
*/
|
|
size_t veclen_;
|
|
|
|
/**
|
|
* The root node in the tree.
|
|
*/
|
|
KMeansNodePtr* root_;
|
|
|
|
/**
|
|
* Array of indices to vectors in the dataset.
|
|
*/
|
|
int** indices_;
|
|
|
|
/**
|
|
* The distance
|
|
*/
|
|
Distance distance_;
|
|
|
|
/**
|
|
* Pooled memory allocator.
|
|
*/
|
|
PooledAllocator pool_;
|
|
|
|
/**
|
|
* Memory occupied by the index.
|
|
*/
|
|
int memoryCounter_;
|
|
};
|
|
|
|
}
|
|
|
|
//! @endcond
|
|
|
|
#endif //OPENCV_FLANN_KMEANS_INDEX_H_
|