407 lines
13 KiB
C++
407 lines
13 KiB
C++
// This file is part of OpenCV project.
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// It is subject to the license terms in the LICENSE file found in the top-level directory
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// of this distribution and at http://opencv.org/license.html.
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#ifndef OPENCV_VIDEO_DETAIL_TRACKING_HPP
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#define OPENCV_VIDEO_DETAIL_TRACKING_HPP
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/*
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* Partially based on:
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* ====================================================================================================================
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* - [AAM] S. Salti, A. Cavallaro, L. Di Stefano, Adaptive Appearance Modeling for Video Tracking: Survey and Evaluation
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* - [AMVOT] X. Li, W. Hu, C. Shen, Z. Zhang, A. Dick, A. van den Hengel, A Survey of Appearance Models in Visual Object Tracking
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*
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* This Tracking API has been designed with PlantUML. If you modify this API please change UML files under modules/tracking/doc/uml
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*
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*/
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#include "opencv2/core.hpp"
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namespace cv {
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namespace detail {
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inline namespace tracking {
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/** @addtogroup tracking_detail
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@{
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*/
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/************************************ TrackerFeature Base Classes ************************************/
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/** @brief Abstract base class for TrackerFeature that represents the feature.
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*/
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class CV_EXPORTS TrackerFeature
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{
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public:
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virtual ~TrackerFeature();
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/** @brief Compute the features in the images collection
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@param images The images
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@param response The output response
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*/
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void compute(const std::vector<Mat>& images, Mat& response);
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protected:
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virtual bool computeImpl(const std::vector<Mat>& images, Mat& response) = 0;
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};
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/** @brief Class that manages the extraction and selection of features
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@cite AAM Feature Extraction and Feature Set Refinement (Feature Processing and Feature Selection).
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See table I and section III C @cite AMVOT Appearance modelling -\> Visual representation (Table II,
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section 3.1 - 3.2)
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TrackerFeatureSet is an aggregation of TrackerFeature
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@sa
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TrackerFeature
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*/
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class CV_EXPORTS TrackerFeatureSet
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{
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public:
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TrackerFeatureSet();
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~TrackerFeatureSet();
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/** @brief Extract features from the images collection
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@param images The input images
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*/
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void extraction(const std::vector<Mat>& images);
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/** @brief Add TrackerFeature in the collection. Return true if TrackerFeature is added, false otherwise
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@param feature The TrackerFeature class
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*/
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bool addTrackerFeature(const Ptr<TrackerFeature>& feature);
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/** @brief Get the TrackerFeature collection (TrackerFeature name, TrackerFeature pointer)
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*/
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const std::vector<Ptr<TrackerFeature>>& getTrackerFeatures() const;
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/** @brief Get the responses
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@note Be sure to call extraction before getResponses Example TrackerFeatureSet::getResponses
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*/
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const std::vector<Mat>& getResponses() const;
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private:
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void clearResponses();
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bool blockAddTrackerFeature;
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std::vector<Ptr<TrackerFeature>> features; // list of features
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std::vector<Mat> responses; // list of response after compute
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};
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/************************************ TrackerSampler Base Classes ************************************/
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/** @brief Abstract base class for TrackerSamplerAlgorithm that represents the algorithm for the specific
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sampler.
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*/
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class CV_EXPORTS TrackerSamplerAlgorithm
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{
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public:
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virtual ~TrackerSamplerAlgorithm();
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/** @brief Computes the regions starting from a position in an image.
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Return true if samples are computed, false otherwise
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@param image The current frame
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@param boundingBox The bounding box from which regions can be calculated
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@param sample The computed samples @cite AAM Fig. 1 variable Sk
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*/
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virtual bool sampling(const Mat& image, const Rect& boundingBox, std::vector<Mat>& sample) = 0;
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};
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/**
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* \brief Class that manages the sampler in order to select regions for the update the model of the tracker
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* [AAM] Sampling e Labeling. See table I and section III B
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*/
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/** @brief Class that manages the sampler in order to select regions for the update the model of the tracker
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@cite AAM Sampling e Labeling. See table I and section III B
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TrackerSampler is an aggregation of TrackerSamplerAlgorithm
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@sa
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TrackerSamplerAlgorithm
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*/
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class CV_EXPORTS TrackerSampler
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{
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public:
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TrackerSampler();
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~TrackerSampler();
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/** @brief Computes the regions starting from a position in an image
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@param image The current frame
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@param boundingBox The bounding box from which regions can be calculated
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*/
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void sampling(const Mat& image, Rect boundingBox);
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/** @brief Return the collection of the TrackerSamplerAlgorithm
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*/
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const std::vector<Ptr<TrackerSamplerAlgorithm>>& getSamplers() const;
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/** @brief Return the samples from all TrackerSamplerAlgorithm, @cite AAM Fig. 1 variable Sk
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*/
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const std::vector<Mat>& getSamples() const;
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/** @brief Add TrackerSamplerAlgorithm in the collection. Return true if sampler is added, false otherwise
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@param sampler The TrackerSamplerAlgorithm
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*/
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bool addTrackerSamplerAlgorithm(const Ptr<TrackerSamplerAlgorithm>& sampler);
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private:
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std::vector<Ptr<TrackerSamplerAlgorithm>> samplers;
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std::vector<Mat> samples;
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bool blockAddTrackerSampler;
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void clearSamples();
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};
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/************************************ TrackerModel Base Classes ************************************/
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/** @brief Abstract base class for TrackerTargetState that represents a possible state of the target.
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See @cite AAM \f$\hat{x}^{i}_{k}\f$ all the states candidates.
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Inherits this class with your Target state, In own implementation you can add scale variation,
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width, height, orientation, etc.
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*/
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class CV_EXPORTS TrackerTargetState
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{
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public:
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virtual ~TrackerTargetState() {};
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/** @brief Get the position
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* @return The position
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*/
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Point2f getTargetPosition() const;
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/** @brief Set the position
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* @param position The position
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*/
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void setTargetPosition(const Point2f& position);
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/** @brief Get the width of the target
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* @return The width of the target
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*/
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int getTargetWidth() const;
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/** @brief Set the width of the target
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* @param width The width of the target
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*/
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void setTargetWidth(int width);
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/** @brief Get the height of the target
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* @return The height of the target
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*/
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int getTargetHeight() const;
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/** @brief Set the height of the target
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* @param height The height of the target
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*/
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void setTargetHeight(int height);
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protected:
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Point2f targetPosition;
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int targetWidth;
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int targetHeight;
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};
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/** @brief Represents the model of the target at frame \f$k\f$ (all states and scores)
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See @cite AAM The set of the pair \f$\langle \hat{x}^{i}_{k}, C^{i}_{k} \rangle\f$
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@sa TrackerTargetState
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*/
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typedef std::vector<std::pair<Ptr<TrackerTargetState>, float>> ConfidenceMap;
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/** @brief Represents the estimate states for all frames
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@cite AAM \f$x_{k}\f$ is the trajectory of the target up to time \f$k\f$
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@sa TrackerTargetState
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*/
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typedef std::vector<Ptr<TrackerTargetState>> Trajectory;
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/** @brief Abstract base class for TrackerStateEstimator that estimates the most likely target state.
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See @cite AAM State estimator
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See @cite AMVOT Statistical modeling (Fig. 3), Table III (generative) - IV (discriminative) - V (hybrid)
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*/
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class CV_EXPORTS TrackerStateEstimator
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{
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public:
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virtual ~TrackerStateEstimator();
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/** @brief Estimate the most likely target state, return the estimated state
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@param confidenceMaps The overall appearance model as a list of :cConfidenceMap
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*/
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Ptr<TrackerTargetState> estimate(const std::vector<ConfidenceMap>& confidenceMaps);
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/** @brief Update the ConfidenceMap with the scores
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@param confidenceMaps The overall appearance model as a list of :cConfidenceMap
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*/
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void update(std::vector<ConfidenceMap>& confidenceMaps);
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/** @brief Create TrackerStateEstimator by tracker state estimator type
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@param trackeStateEstimatorType The TrackerStateEstimator name
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The modes available now:
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- "BOOSTING" -- Boosting-based discriminative appearance models. See @cite AMVOT section 4.4
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The modes available soon:
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- "SVM" -- SVM-based discriminative appearance models. See @cite AMVOT section 4.5
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*/
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static Ptr<TrackerStateEstimator> create(const String& trackeStateEstimatorType);
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/** @brief Get the name of the specific TrackerStateEstimator
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*/
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String getClassName() const;
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protected:
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virtual Ptr<TrackerTargetState> estimateImpl(const std::vector<ConfidenceMap>& confidenceMaps) = 0;
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virtual void updateImpl(std::vector<ConfidenceMap>& confidenceMaps) = 0;
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String className;
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};
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/** @brief Abstract class that represents the model of the target.
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It must be instantiated by specialized tracker
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See @cite AAM Ak
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Inherits this with your TrackerModel
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*/
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class CV_EXPORTS TrackerModel
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{
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public:
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TrackerModel();
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virtual ~TrackerModel();
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/** @brief Set TrackerEstimator, return true if the tracker state estimator is added, false otherwise
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@param trackerStateEstimator The TrackerStateEstimator
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@note You can add only one TrackerStateEstimator
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*/
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bool setTrackerStateEstimator(Ptr<TrackerStateEstimator> trackerStateEstimator);
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/** @brief Estimate the most likely target location
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@cite AAM ME, Model Estimation table I
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@param responses Features extracted from TrackerFeatureSet
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*/
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void modelEstimation(const std::vector<Mat>& responses);
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/** @brief Update the model
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@cite AAM MU, Model Update table I
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*/
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void modelUpdate();
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/** @brief Run the TrackerStateEstimator, return true if is possible to estimate a new state, false otherwise
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*/
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bool runStateEstimator();
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/** @brief Set the current TrackerTargetState in the Trajectory
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@param lastTargetState The current TrackerTargetState
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*/
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void setLastTargetState(const Ptr<TrackerTargetState>& lastTargetState);
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/** @brief Get the last TrackerTargetState from Trajectory
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*/
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Ptr<TrackerTargetState> getLastTargetState() const;
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/** @brief Get the list of the ConfidenceMap
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*/
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const std::vector<ConfidenceMap>& getConfidenceMaps() const;
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/** @brief Get the last ConfidenceMap for the current frame
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*/
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const ConfidenceMap& getLastConfidenceMap() const;
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/** @brief Get the TrackerStateEstimator
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*/
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Ptr<TrackerStateEstimator> getTrackerStateEstimator() const;
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private:
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void clearCurrentConfidenceMap();
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protected:
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std::vector<ConfidenceMap> confidenceMaps;
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Ptr<TrackerStateEstimator> stateEstimator;
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ConfidenceMap currentConfidenceMap;
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Trajectory trajectory;
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int maxCMLength;
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virtual void modelEstimationImpl(const std::vector<Mat>& responses) = 0;
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virtual void modelUpdateImpl() = 0;
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};
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/************************************ Specific TrackerStateEstimator Classes ************************************/
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// None
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/************************************ Specific TrackerSamplerAlgorithm Classes ************************************/
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/** @brief TrackerSampler based on CSC (current state centered), used by MIL algorithm TrackerMIL
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*/
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class CV_EXPORTS TrackerSamplerCSC : public TrackerSamplerAlgorithm
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{
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public:
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~TrackerSamplerCSC();
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enum MODE
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{
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MODE_INIT_POS = 1, //!< mode for init positive samples
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MODE_INIT_NEG = 2, //!< mode for init negative samples
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MODE_TRACK_POS = 3, //!< mode for update positive samples
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MODE_TRACK_NEG = 4, //!< mode for update negative samples
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MODE_DETECT = 5 //!< mode for detect samples
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};
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struct CV_EXPORTS Params
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{
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Params();
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float initInRad; //!< radius for gathering positive instances during init
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float trackInPosRad; //!< radius for gathering positive instances during tracking
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float searchWinSize; //!< size of search window
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int initMaxNegNum; //!< # negative samples to use during init
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int trackMaxPosNum; //!< # positive samples to use during training
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int trackMaxNegNum; //!< # negative samples to use during training
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};
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/** @brief Constructor
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@param parameters TrackerSamplerCSC parameters TrackerSamplerCSC::Params
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*/
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TrackerSamplerCSC(const TrackerSamplerCSC::Params& parameters = TrackerSamplerCSC::Params());
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/** @brief Set the sampling mode of TrackerSamplerCSC
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@param samplingMode The sampling mode
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The modes are:
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- "MODE_INIT_POS = 1" -- for the positive sampling in initialization step
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- "MODE_INIT_NEG = 2" -- for the negative sampling in initialization step
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- "MODE_TRACK_POS = 3" -- for the positive sampling in update step
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- "MODE_TRACK_NEG = 4" -- for the negative sampling in update step
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- "MODE_DETECT = 5" -- for the sampling in detection step
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*/
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void setMode(int samplingMode);
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bool sampling(const Mat& image, const Rect& boundingBox, std::vector<Mat>& sample) CV_OVERRIDE;
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private:
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Params params;
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int mode;
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RNG rng;
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std::vector<Mat> sampleImage(const Mat& img, int x, int y, int w, int h, float inrad, float outrad = 0, int maxnum = 1000000);
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};
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//! @}
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}}} // namespace cv::detail::tracking
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#endif // OPENCV_VIDEO_DETAIL_TRACKING_HPP
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