Move templates in dist.h in order to share them between KMeansIndex and HierarchicalClusteringIndex classes.
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@ -812,6 +812,66 @@ struct ZeroIterator
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/*
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* Depending on processed distances, some of them are already squared (e.g. L2)
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* and some are not (e.g.Hamming). In KMeans++ for instance we want to be sure
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* we are working on ^2 distances, thus following templates to ensure that.
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*/
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template <typename Distance, typename ElementType>
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struct squareDistance
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{
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typedef typename Distance::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist*dist; }
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};
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template <typename ElementType>
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struct squareDistance<L2_Simple<ElementType>, ElementType>
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{
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typedef typename L2_Simple<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename ElementType>
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struct squareDistance<L2<ElementType>, ElementType>
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{
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typedef typename L2<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename ElementType>
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struct squareDistance<MinkowskiDistance<ElementType>, ElementType>
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{
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typedef typename MinkowskiDistance<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename ElementType>
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struct squareDistance<HellingerDistance<ElementType>, ElementType>
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{
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typedef typename HellingerDistance<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename ElementType>
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struct squareDistance<ChiSquareDistance<ElementType>, ElementType>
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{
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typedef typename ChiSquareDistance<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename Distance>
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typename Distance::ResultType ensureSquareDistance( typename Distance::ResultType dist )
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{
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typedef typename Distance::ElementType ElementType;
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squareDistance<Distance, ElementType> dummy;
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return dummy( dist );
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}
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}
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}
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#endif //OPENCV_FLANN_DIST_H_
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#endif //OPENCV_FLANN_DIST_H_
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@ -214,7 +214,7 @@ private:
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// far from previous centers (and this complies to "k-means++: the advantages of careful seeding" article)
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// far from previous centers (and this complies to "k-means++: the advantages of careful seeding" article)
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for (int i = 0; i < n; i++) {
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for (int i = 0; i < n; i++) {
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closestDistSq[i] = distance(dataset[dsindices[i]], dataset[dsindices[index]], dataset.cols);
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closestDistSq[i] = distance(dataset[dsindices[i]], dataset[dsindices[index]], dataset.cols);
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closestDistSq[i] *= closestDistSq[i];
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closestDistSq[i] = ensureSquareDistance<Distance>( closestDistSq[i] );
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currentPot += closestDistSq[i];
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currentPot += closestDistSq[i];
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}
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}
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@ -242,7 +242,7 @@ private:
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double newPot = 0;
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double newPot = 0;
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for (int i = 0; i < n; i++) {
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for (int i = 0; i < n; i++) {
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DistanceType dist = distance(dataset[dsindices[i]], dataset[dsindices[index]], dataset.cols);
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DistanceType dist = distance(dataset[dsindices[i]], dataset[dsindices[index]], dataset.cols);
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newPot += std::min( dist*dist, closestDistSq[i] );
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newPot += std::min( ensureSquareDistance<Distance>(dist), closestDistSq[i] );
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}
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}
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// Store the best result
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// Store the best result
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@ -257,7 +257,7 @@ private:
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currentPot = bestNewPot;
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currentPot = bestNewPot;
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for (int i = 0; i < n; i++) {
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for (int i = 0; i < n; i++) {
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DistanceType dist = distance(dataset[dsindices[i]], dataset[dsindices[bestNewIndex]], dataset.cols);
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DistanceType dist = distance(dataset[dsindices[i]], dataset[dsindices[bestNewIndex]], dataset.cols);
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closestDistSq[i] = std::min( dist*dist, closestDistSq[i] );
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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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}
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}
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@ -53,62 +53,6 @@
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namespace cvflann
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namespace cvflann
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{
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{
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template <typename Distance, typename ElementType>
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struct squareDistance
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{
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typedef typename Distance::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist*dist; }
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};
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template <typename ElementType>
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struct squareDistance<L2_Simple<ElementType>, ElementType>
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{
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typedef typename L2_Simple<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename ElementType>
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struct squareDistance<L2<ElementType>, ElementType>
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{
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typedef typename L2<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename ElementType>
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struct squareDistance<MinkowskiDistance<ElementType>, ElementType>
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{
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typedef typename MinkowskiDistance<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename ElementType>
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struct squareDistance<HellingerDistance<ElementType>, ElementType>
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{
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typedef typename HellingerDistance<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename ElementType>
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struct squareDistance<ChiSquareDistance<ElementType>, ElementType>
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{
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typedef typename ChiSquareDistance<ElementType>::ResultType ResultType;
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ResultType operator()( ResultType dist ) { return dist; }
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};
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template <typename Distance>
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typename Distance::ResultType ensureSquareDistance( typename Distance::ResultType dist )
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{
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typedef typename Distance::ElementType ElementType;
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squareDistance<Distance, ElementType> dummy;
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return dummy( dist );
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}
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struct KMeansIndexParams : public IndexParams
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struct KMeansIndexParams : public IndexParams
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{
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{
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KMeansIndexParams(int branching = 32, int iterations = 11,
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KMeansIndexParams(int branching = 32, int iterations = 11,
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