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							- /*M///////////////////////////////////////////////////////////////////////////////////////
 
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-  //                For Open Source Computer Vision Library
 
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- #ifndef __OPENCV_TRACKING_LENLEN_HPP__
 
- #define __OPENCV_TRACKING_LENLEN_HPP__
 
- #include "opencv2/core/cvdef.h"
 
- /** @defgroup tracking Tracking API
 
- Long-term optical tracking API
 
- ------------------------------
 
- Long-term optical tracking is one of most important issue for many computer vision applications in
 
- real world scenario. The development in this area is very fragmented and this API is an unique
 
- interface useful for plug several algorithms and compare them. This work is partially based on
 
- @cite AAM and @cite AMVOT .
 
- This algorithms start from a bounding box of the target and with their internal representation they
 
- avoid the drift during the tracking. These long-term trackers are able to evaluate online the
 
- quality of the location of the target in the new frame, without ground truth.
 
- There are three main components: the TrackerSampler, the TrackerFeatureSet and the TrackerModel. The
 
- first component is the object that computes the patches over the frame based on the last target
 
- location. The TrackerFeatureSet is the class that manages the Features, is possible plug many kind
 
- of these (HAAR, HOG, LBP, Feature2D, etc). The last component is the internal representation of the
 
- target, it is the appearence model. It stores all state candidates and compute the trajectory (the
 
- most likely target states). The class TrackerTargetState represents a possible state of the target.
 
- The TrackerSampler and the TrackerFeatureSet are the visual representation of the target, instead
 
- the TrackerModel is the statistical model.
 
- A recent benchmark between these algorithms can be found in @cite OOT
 
- To see how API works, try tracker demo:
 
- <https://github.com/lenlen/opencv/blob/tracking_api/samples/cpp/tracker.cpp>
 
- Creating Own Tracker
 
- --------------------
 
- If you want create a new tracker, here's what you have to do. First, decide on the name of the class
 
- for the tracker (to meet the existing style, we suggest something with prefix "tracker", e.g.
 
- trackerMIL, trackerBoosting) -- we shall refer to this choice as to "classname" in subsequent. Also,
 
- you should decide upon the name of the tracker, is it will be known to user (the current style
 
- suggests using all capitals, say MIL or BOOSTING) --we'll call it a "name".
 
- -   Declare your tracker in include/opencv2/tracking/tracker.hpp. Your tracker should inherit from
 
-     Tracker (please, see the example below). You should declare the specialized Param structure,
 
-     where you probably will want to put the data, needed to initialize your tracker. Also don't
 
-     forget to put the BOILERPLATE_CODE(name,classname) macro inside the class declaration. That
 
-     macro will generate static createTracker() function, which we'll talk about later. You should
 
-     get something similar to :
 
- @code
 
-         class CV_EXPORTS_W TrackerMIL : public Tracker
 
-         {
 
-          public:
 
-           struct CV_EXPORTS Params
 
-           {
 
-             Params();
 
-             //parameters for sampler
 
-             float samplerInitInRadius;  // radius for gathering positive instances during init
 
-             int samplerInitMaxNegNum;  // # negative samples to use during init
 
-             float samplerSearchWinSize;  // size of search window
 
-             float samplerTrackInRadius;  // radius for gathering positive instances during tracking
 
-             int samplerTrackMaxPosNum;  // # positive samples to use during tracking
 
-             int samplerTrackMaxNegNum;  // # negative samples to use during tracking
 
-             int featureSetNumFeatures;  // #features
 
-             void read( const FileNode& fn );
 
-             void write( FileStorage& fs ) const;
 
-           };
 
- @endcode
 
-     of course, you can also add any additional methods of your choice. It should be pointed out,
 
-     however, that it is not expected to have a constructor declared, as creation should be done via
 
-     the corresponding createTracker() method.
 
- -   In src/tracker.cpp file add BOILERPLATE_CODE(name,classname) line to the body of
 
-     Tracker::create() method you will find there, like :
 
- @code
 
-         Ptr<Tracker> Tracker::create( const String& trackerType )
 
-         {
 
-           BOILERPLATE_CODE("BOOSTING",TrackerBoosting);
 
-           BOILERPLATE_CODE("MIL",TrackerMIL);
 
-           return Ptr<Tracker>();
 
-         }
 
- @endcode
 
- -   Finally, you should implement the function with signature :
 
- @code
 
-         Ptr<classname> classname::createTracker(const classname::Params ¶meters){
 
-             ...
 
-         }
 
- @endcode
 
-     That function can (and probably will) return a pointer to some derived class of "classname",
 
-     which will probably have a real constructor.
 
- Every tracker has three component TrackerSampler, TrackerFeatureSet and TrackerModel. The first two
 
- are instantiated from Tracker base class, instead the last component is abstract, so you must
 
- implement your TrackerModel.
 
- ### TrackerSampler
 
- TrackerSampler is already instantiated, but you should define the sampling algorithm and add the
 
- classes (or single class) to TrackerSampler. You can choose one of the ready implementation as
 
- TrackerSamplerCSC or you can implement your sampling method, in this case the class must inherit
 
- TrackerSamplerAlgorithm. Fill the samplingImpl method that writes the result in "sample" output
 
- argument.
 
- Example of creating specialized TrackerSamplerAlgorithm TrackerSamplerCSC : :
 
- @code
 
-     class CV_EXPORTS_W TrackerSamplerCSC : public TrackerSamplerAlgorithm
 
-     {
 
-      public:
 
-       TrackerSamplerCSC( const TrackerSamplerCSC::Params ¶meters = TrackerSamplerCSC::Params() );
 
-       ~TrackerSamplerCSC();
 
-       ...
 
-      protected:
 
-       bool samplingImpl( const Mat& image, Rect boundingBox, std::vector<Mat>& sample );
 
-       ...
 
-     };
 
- @endcode
 
- Example of adding TrackerSamplerAlgorithm to TrackerSampler : :
 
- @code
 
-     //sampler is the TrackerSampler
 
-     Ptr<TrackerSamplerAlgorithm> CSCSampler = new TrackerSamplerCSC( CSCparameters );
 
-     if( !sampler->addTrackerSamplerAlgorithm( CSCSampler ) )
 
-      return false;
 
-     //or add CSC sampler with default parameters
 
-     //sampler->addTrackerSamplerAlgorithm( "CSC" );
 
- @endcode
 
- @sa
 
-    TrackerSamplerCSC, TrackerSamplerAlgorithm
 
- ### TrackerFeatureSet
 
- TrackerFeatureSet is already instantiated (as first) , but you should define what kinds of features
 
- you'll use in your tracker. You can use multiple feature types, so you can add a ready
 
- implementation as TrackerFeatureHAAR in your TrackerFeatureSet or develop your own implementation.
 
- In this case, in the computeImpl method put the code that extract the features and in the selection
 
- method optionally put the code for the refinement and selection of the features.
 
- Example of creating specialized TrackerFeature TrackerFeatureHAAR : :
 
- @code
 
-     class CV_EXPORTS_W TrackerFeatureHAAR : public TrackerFeature
 
-     {
 
-      public:
 
-       TrackerFeatureHAAR( const TrackerFeatureHAAR::Params ¶meters = TrackerFeatureHAAR::Params() );
 
-       ~TrackerFeatureHAAR();
 
-       void selection( Mat& response, int npoints );
 
-       ...
 
-      protected:
 
-       bool computeImpl( const std::vector<Mat>& images, Mat& response );
 
-       ...
 
-     };
 
- @endcode
 
- Example of adding TrackerFeature to TrackerFeatureSet : :
 
- @code
 
-     //featureSet is the TrackerFeatureSet
 
-     Ptr<TrackerFeature> trackerFeature = new TrackerFeatureHAAR( HAARparameters );
 
-     featureSet->addTrackerFeature( trackerFeature );
 
- @endcode
 
- @sa
 
-    TrackerFeatureHAAR, TrackerFeatureSet
 
- ### TrackerModel
 
- TrackerModel is abstract, so in your implementation you must develop your TrackerModel that inherit
 
- from TrackerModel. Fill the method for the estimation of the state "modelEstimationImpl", that
 
- estimates the most likely target location, see @cite AAM table I (ME) for further information. Fill
 
- "modelUpdateImpl" in order to update the model, see @cite AAM table I (MU). In this class you can use
 
- the :cConfidenceMap and :cTrajectory to storing the model. The first represents the model on the all
 
- possible candidate states and the second represents the list of all estimated states.
 
- Example of creating specialized TrackerModel TrackerMILModel : :
 
- @code
 
-     class TrackerMILModel : public TrackerModel
 
-     {
 
-      public:
 
-       TrackerMILModel( const Rect& boundingBox );
 
-       ~TrackerMILModel();
 
-       ...
 
-      protected:
 
-       void modelEstimationImpl( const std::vector<Mat>& responses );
 
-       void modelUpdateImpl();
 
-       ...
 
-     };
 
- @endcode
 
- And add it in your Tracker : :
 
- @code
 
-     bool TrackerMIL::initImpl( const Mat& image, const Rect2d& boundingBox )
 
-     {
 
-       ...
 
-       //model is the general TrackerModel field of the general Tracker
 
-       model = new TrackerMILModel( boundingBox );
 
-       ...
 
-     }
 
- @endcode
 
- In the last step you should define the TrackerStateEstimator based on your implementation or you can
 
- use one of ready class as TrackerStateEstimatorMILBoosting. It represent the statistical part of the
 
- model that estimates the most likely target state.
 
- Example of creating specialized TrackerStateEstimator TrackerStateEstimatorMILBoosting : :
 
- @code
 
-     class CV_EXPORTS_W TrackerStateEstimatorMILBoosting : public TrackerStateEstimator
 
-     {
 
-      class TrackerMILTargetState : public TrackerTargetState
 
-      {
 
-      ...
 
-      };
 
-      public:
 
-       TrackerStateEstimatorMILBoosting( int nFeatures = 250 );
 
-       ~TrackerStateEstimatorMILBoosting();
 
-       ...
 
-      protected:
 
-       Ptr<TrackerTargetState> estimateImpl( const std::vector<ConfidenceMap>& confidenceMaps );
 
-       void updateImpl( std::vector<ConfidenceMap>& confidenceMaps );
 
-       ...
 
-     };
 
- @endcode
 
- And add it in your TrackerModel : :
 
- @code
 
-     //model is the TrackerModel of your Tracker
 
-     Ptr<TrackerStateEstimatorMILBoosting> stateEstimator = new TrackerStateEstimatorMILBoosting( params.featureSetNumFeatures );
 
-     model->setTrackerStateEstimator( stateEstimator );
 
- @endcode
 
- @sa
 
-    TrackerModel, TrackerStateEstimatorMILBoosting, TrackerTargetState
 
- During this step, you should define your TrackerTargetState based on your implementation.
 
- TrackerTargetState base class has only the bounding box (upper-left position, width and height), you
 
- can enrich it adding scale factor, target rotation, etc.
 
- Example of creating specialized TrackerTargetState TrackerMILTargetState : :
 
- @code
 
-     class TrackerMILTargetState : public TrackerTargetState
 
-     {
 
-      public:
 
-       TrackerMILTargetState( const Point2f& position, int targetWidth, int targetHeight, bool foreground, const Mat& features );
 
-       ~TrackerMILTargetState();
 
-       ...
 
-      private:
 
-       bool isTarget;
 
-       Mat targetFeatures;
 
-       ...
 
-     };
 
- @endcode
 
- ### Try it
 
- To try your tracker you can use the demo at
 
- <https://github.com/lenlen/opencv/blob/tracking_api/samples/cpp/tracker.cpp>.
 
- The first argument is the name of the tracker and the second is a video source.
 
- */
 
- #include <opencv2/tracking/tracker.hpp>
 
- #include <opencv2/tracking/tldDataset.hpp>
 
- #endif //__OPENCV_TRACKING_LENLEN
 
 
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