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/*!
* \file FeatureEvaluator.h
* \date 2019/11/12
*
* \author Lin, Chi
* Contact: lin.chi@hzleaper.com
*
*
* \note
*/
#ifndef __FeatureEvaluator_h_
#define __FeatureEvaluator_h_
#include "CyclopsCommon.h"
#include "CyclopsModules.h"
#include "CyclopsEnums.h"
#include "CyclopsFeature.h"
#include "StdUtils.h"
#include "CVUtils.h"
#include "SampleDBManager.h"
/*! \brief Feature evaluator, for feature extraction and selection
* Should be used together with LLClassifier
*/
class FeatureEvaluator : public ICyclopsModuleInstance
{
public:
FeatureEvaluator() : mDirtyBit(false) {}
virtual ~FeatureEvaluator() {}
//! Smart pointer to hold an instance of FeatureEvaluator
typedef std::shared_ptr<FeatureEvaluator> Ptr;
DECL_GET_INSTANCE(FeatureEvaluator::Ptr)
/*! \fn serializeToMemory
* Serialize information of the feature evaluator into a in-memory string, see also deserializeFromMemory()
* @param str used to take the output serialization result
* @return true for succeed, false for fail
* \fn serializeToFile
* Serialize information of the feature evaluator into a text file, see also deserializeFromFile()
* @param filename file name (full path) where we will write the data
* @return true for succeed, false for fail
* \fn deserializeFromMemory
* Deserialize the feature evaluator from in-memory string, see also serializeToMemory()
* @param str in-memory string
* @return true for succeed, false for fail
* \fn deserializeFromFile
* Deserialize the feature evaluator from a text file, see also serializeToFile()
* @param filename file name (full path) where we will read the data
* @return true for succeed, false for fail
*/
DECL_SERIALIZE_FUNCS
/*! Add a new feature of given type */
virtual CyclopsFeature::Ptr add(FeatureType ftype);
/*! Total count of features defined in this evaluator */
int size() const { return mFeatures.size(); }
/*! Get feature by index */
CyclopsFeature::Ptr get(int index) {
if (index < 0 || index >= size()) return nullptr;
return mFeatures[index];
}
/*! Remove feature by index */
virtual bool remove(int index);
/*! Remove all features */
virtual bool removeAll();
/*! Query feature index by its name */
virtual int indexByName(const std::string& name);
/*! Total count of all enabled features */
virtual int enabledSize() const;
/*! Enable or disable all features */
virtual void enableAll(bool val);
/*! Check whether we need to fix some features of bad parameter configuration
* @param sampleSize uniformed sample size
* @param doFix true if we should also do the real fix
* @return true if fix is needed
*/
virtual bool needFix(const Size& sampleSize, bool doFix = false);
/*! Check whether we need to re-train some features if parameter changed
* @param sampleSize uniformed sample size
* @return true if re-train is needed
*/
virtual bool needTrain(const Size& sampleSize);
/*! Train features with provided samples */
virtual bool train(std::vector<SampleInstIterator>& samples, const Size& sampleSize);
/** @overload Only train feature with given index */
virtual bool train(int index, std::vector<SampleInstIterator>& samples, const Size& sampleSize);
/*! Evaluate current parameter configuration with provided samples
* @param index feature index
* @param samples samples used for training
* @param sampleSize uniformed sample size
* @param score output evaluation score, higher is better
* @param time output computation time of the feature
* @return true if everything is fine
*/
virtual bool evaluate(int index, std::vector<SampleInstIterator>& samples, const Size& sampleSize,
double& score, double& time);
/*! Evaluate whether it is hard to distinguish the provided sample collections */
virtual bool confuse(std::vector<SampleInstIterator>& samples,
const Size& sampleSize, Mat& confuseMat);
/*! Total length of feature vector contains all */
virtual int featureVecSize(const Size& sampleSize) const;
/*! Get range of features in feature vector */
virtual vector<Range> featureVecRanges(const Size& sampleSize) const;
/*! Compute feature vector for given image */
virtual void compute(const SampleInstPtr& sample, Mat& result);
/*! True if any feature's any parameter is changed */
virtual bool isDirty() const;
/*! Clear trained cache of all features */
virtual void cleanAll();
private:
virtual bool serialize(FileStorage& fs);
virtual bool deserialize(const FileNode& fs);
void silhouetteAnalysis(int classCount, int totalSampleCount,
const std::vector<Mat>& featureMats, const Mat& labelMat, const Mat& weightMat,
vector<double>& shMeans);
private:
std::vector<CyclopsFeature::Ptr> mFeatures;
bool mDirtyBit;
};
#endif // FeatureEvaluator_h_