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- #ifndef OPENCV_FLANN_HIERARCHICAL_CLUSTERING_INDEX_H_
- #define OPENCV_FLANN_HIERARCHICAL_CLUSTERING_INDEX_H_
- #include <algorithm>
- #include <map>
- #include <cassert>
- #include <limits>
- #include <cmath>
- #include "general.h"
- #include "nn_index.h"
- #include "dist.h"
- #include "matrix.h"
- #include "result_set.h"
- #include "heap.h"
- #include "allocator.h"
- #include "random.h"
- #include "saving.h"
- namespace cvflann
- {
- struct HierarchicalClusteringIndexParams : public IndexParams
- {
- HierarchicalClusteringIndexParams(int branching = 32,
- flann_centers_init_t centers_init = FLANN_CENTERS_RANDOM,
- int trees = 4, int leaf_size = 100)
- {
- (*this)["algorithm"] = FLANN_INDEX_HIERARCHICAL;
-
- (*this)["branching"] = branching;
-
- (*this)["centers_init"] = centers_init;
-
- (*this)["trees"] = trees;
-
- (*this)["leaf_size"] = leaf_size;
- }
- };
- template <typename Distance>
- class HierarchicalClusteringIndex : public NNIndex<Distance>
- {
- public:
- typedef typename Distance::ElementType ElementType;
- typedef typename Distance::ResultType DistanceType;
- private:
- typedef void (HierarchicalClusteringIndex::* centersAlgFunction)(int, int*, int, int*, int&);
-
- centersAlgFunction chooseCenters;
-
- void chooseCentersRandom(int k, int* dsindices, int indices_length, int* centers, int& centers_length)
- {
- UniqueRandom r(indices_length);
- int index;
- for (index=0; index<k; ++index) {
- bool duplicate = true;
- int rnd;
- while (duplicate) {
- duplicate = false;
- rnd = r.next();
- if (rnd<0) {
- centers_length = index;
- return;
- }
- centers[index] = dsindices[rnd];
- for (int j=0; j<index; ++j) {
- DistanceType sq = distance(dataset[centers[index]], dataset[centers[j]], dataset.cols);
- if (sq<1e-16) {
- duplicate = true;
- }
- }
- }
- }
- centers_length = index;
- }
-
- void chooseCentersGonzales(int k, int* dsindices, int indices_length, int* centers, int& centers_length)
- {
- int n = indices_length;
- int rnd = rand_int(n);
- assert(rnd >=0 && rnd < n);
- centers[0] = dsindices[rnd];
- int index;
- for (index=1; index<k; ++index) {
- int best_index = -1;
- DistanceType best_val = 0;
- for (int j=0; j<n; ++j) {
- DistanceType dist = distance(dataset[centers[0]],dataset[dsindices[j]],dataset.cols);
- for (int i=1; i<index; ++i) {
- DistanceType tmp_dist = distance(dataset[centers[i]],dataset[dsindices[j]],dataset.cols);
- if (tmp_dist<dist) {
- dist = tmp_dist;
- }
- }
- if (dist>best_val) {
- best_val = dist;
- best_index = j;
- }
- }
- if (best_index!=-1) {
- centers[index] = dsindices[best_index];
- }
- else {
- break;
- }
- }
- centers_length = index;
- }
-
- void chooseCentersKMeanspp(int k, int* dsindices, int indices_length, int* centers, int& centers_length)
- {
- int n = indices_length;
- double currentPot = 0;
- DistanceType* closestDistSq = new DistanceType[n];
-
- int index = rand_int(n);
- assert(index >=0 && index < n);
- centers[0] = dsindices[index];
-
-
- for (int i = 0; i < n; i++) {
- closestDistSq[i] = distance(dataset[dsindices[i]], dataset[dsindices[index]], dataset.cols);
- closestDistSq[i] = ensureSquareDistance<Distance>( closestDistSq[i] );
- currentPot += closestDistSq[i];
- }
- const int numLocalTries = 1;
-
- int centerCount;
- for (centerCount = 1; centerCount < k; centerCount++) {
-
- double bestNewPot = -1;
- int bestNewIndex = 0;
- for (int localTrial = 0; localTrial < numLocalTries; localTrial++) {
-
-
- double randVal = rand_double(currentPot);
- for (index = 0; index < n-1; index++) {
- if (randVal <= closestDistSq[index]) break;
- else randVal -= closestDistSq[index];
- }
-
- double newPot = 0;
- for (int i = 0; i < n; i++) {
- DistanceType dist = distance(dataset[dsindices[i]], dataset[dsindices[index]], dataset.cols);
- newPot += std::min( ensureSquareDistance<Distance>(dist), closestDistSq[i] );
- }
-
- if ((bestNewPot < 0)||(newPot < bestNewPot)) {
- bestNewPot = newPot;
- bestNewIndex = index;
- }
- }
-
- centers[centerCount] = dsindices[bestNewIndex];
- currentPot = bestNewPot;
- for (int i = 0; i < n; i++) {
- DistanceType dist = distance(dataset[dsindices[i]], dataset[dsindices[bestNewIndex]], dataset.cols);
- closestDistSq[i] = std::min( ensureSquareDistance<Distance>(dist), closestDistSq[i] );
- }
- }
- centers_length = centerCount;
- delete[] closestDistSq;
- }
-
- void GroupWiseCenterChooser(int k, int* dsindices, int indices_length, int* centers, int& centers_length)
- {
- const float kSpeedUpFactor = 1.3f;
- int n = indices_length;
- DistanceType* closestDistSq = new DistanceType[n];
-
- int index = rand_int(n);
- assert(index >=0 && index < n);
- centers[0] = dsindices[index];
- for (int i = 0; i < n; i++) {
- closestDistSq[i] = distance(dataset[dsindices[i]], dataset[dsindices[index]], dataset.cols);
- }
-
- int centerCount;
- for (centerCount = 1; centerCount < k; centerCount++) {
-
- double bestNewPot = -1;
- int bestNewIndex = 0;
- DistanceType furthest = 0;
- for (index = 0; index < n; index++) {
-
- if( closestDistSq[index] > kSpeedUpFactor * (float)furthest ) {
-
- double newPot = 0;
- for (int i = 0; i < n; i++) {
- newPot += std::min( distance(dataset[dsindices[i]], dataset[dsindices[index]], dataset.cols)
- , closestDistSq[i] );
- }
-
- if ((bestNewPot < 0)||(newPot <= bestNewPot)) {
- bestNewPot = newPot;
- bestNewIndex = index;
- furthest = closestDistSq[index];
- }
- }
- }
-
- centers[centerCount] = dsindices[bestNewIndex];
- for (int i = 0; i < n; i++) {
- closestDistSq[i] = std::min( distance(dataset[dsindices[i]], dataset[dsindices[bestNewIndex]], dataset.cols)
- , closestDistSq[i] );
- }
- }
- centers_length = centerCount;
- delete[] closestDistSq;
- }
- public:
-
- HierarchicalClusteringIndex(const Matrix<ElementType>& inputData, const IndexParams& index_params = HierarchicalClusteringIndexParams(),
- Distance d = Distance())
- : dataset(inputData), params(index_params), root(NULL), indices(NULL), distance(d)
- {
- memoryCounter = 0;
- size_ = dataset.rows;
- veclen_ = dataset.cols;
- branching_ = get_param(params,"branching",32);
- centers_init_ = get_param(params,"centers_init", FLANN_CENTERS_RANDOM);
- trees_ = get_param(params,"trees",4);
- leaf_size_ = get_param(params,"leaf_size",100);
- if (centers_init_==FLANN_CENTERS_RANDOM) {
- chooseCenters = &HierarchicalClusteringIndex::chooseCentersRandom;
- }
- else if (centers_init_==FLANN_CENTERS_GONZALES) {
- chooseCenters = &HierarchicalClusteringIndex::chooseCentersGonzales;
- }
- else if (centers_init_==FLANN_CENTERS_KMEANSPP) {
- chooseCenters = &HierarchicalClusteringIndex::chooseCentersKMeanspp;
- }
- else if (centers_init_==FLANN_CENTERS_GROUPWISE) {
- chooseCenters = &HierarchicalClusteringIndex::GroupWiseCenterChooser;
- }
- else {
- throw FLANNException("Unknown algorithm for choosing initial centers.");
- }
- trees_ = get_param(params,"trees",4);
- root = new NodePtr[trees_];
- indices = new int*[trees_];
- for (int i=0; i<trees_; ++i) {
- root[i] = NULL;
- indices[i] = NULL;
- }
- }
- HierarchicalClusteringIndex(const HierarchicalClusteringIndex&);
- HierarchicalClusteringIndex& operator=(const HierarchicalClusteringIndex&);
-
- virtual ~HierarchicalClusteringIndex()
- {
- free_elements();
- if (root!=NULL) {
- delete[] root;
- }
- if (indices!=NULL) {
- delete[] indices;
- }
- }
-
- void free_elements()
- {
- if (indices!=NULL) {
- for(int i=0; i<trees_; ++i) {
- if (indices[i]!=NULL) {
- delete[] indices[i];
- indices[i] = NULL;
- }
- }
- }
- }
-
- size_t size() const
- {
- return size_;
- }
-
- size_t veclen() const
- {
- return veclen_;
- }
-
- int usedMemory() const
- {
- return pool.usedMemory+pool.wastedMemory+memoryCounter;
- }
-
- void buildIndex()
- {
- if (branching_<2) {
- throw FLANNException("Branching factor must be at least 2");
- }
- free_elements();
- for (int i=0; i<trees_; ++i) {
- indices[i] = new int[size_];
- for (size_t j=0; j<size_; ++j) {
- indices[i][j] = (int)j;
- }
- root[i] = pool.allocate<Node>();
- computeClustering(root[i], indices[i], (int)size_, branching_,0);
- }
- }
- flann_algorithm_t getType() const
- {
- return FLANN_INDEX_HIERARCHICAL;
- }
- void saveIndex(FILE* stream)
- {
- save_value(stream, branching_);
- save_value(stream, trees_);
- save_value(stream, centers_init_);
- save_value(stream, leaf_size_);
- save_value(stream, memoryCounter);
- for (int i=0; i<trees_; ++i) {
- save_value(stream, *indices[i], size_);
- save_tree(stream, root[i], i);
- }
- }
- void loadIndex(FILE* stream)
- {
- free_elements();
- if (root!=NULL) {
- delete[] root;
- }
- if (indices!=NULL) {
- delete[] indices;
- }
- load_value(stream, branching_);
- load_value(stream, trees_);
- load_value(stream, centers_init_);
- load_value(stream, leaf_size_);
- load_value(stream, memoryCounter);
- indices = new int*[trees_];
- root = new NodePtr[trees_];
- for (int i=0; i<trees_; ++i) {
- indices[i] = new int[size_];
- load_value(stream, *indices[i], size_);
- load_tree(stream, root[i], i);
- }
- params["algorithm"] = getType();
- params["branching"] = branching_;
- params["trees"] = trees_;
- params["centers_init"] = centers_init_;
- params["leaf_size"] = leaf_size_;
- }
-
- void findNeighbors(ResultSet<DistanceType>& result, const ElementType* vec, const SearchParams& searchParams)
- {
- int maxChecks = get_param(searchParams,"checks",32);
-
- Heap<BranchSt>* heap = new Heap<BranchSt>((int)size_);
- std::vector<bool> checked(size_,false);
- int checks = 0;
- for (int i=0; i<trees_; ++i) {
- findNN(root[i], result, vec, checks, maxChecks, heap, checked);
- }
- BranchSt branch;
- while (heap->popMin(branch) && (checks<maxChecks || !result.full())) {
- NodePtr node = branch.node;
- findNN(node, result, vec, checks, maxChecks, heap, checked);
- }
- assert(result.full());
- delete heap;
- }
- IndexParams getParameters() const
- {
- return params;
- }
- private:
-
- struct Node
- {
-
- int pivot;
-
- int size;
-
- Node** childs;
-
- int* indices;
-
- int level;
- };
- typedef Node* NodePtr;
-
- typedef BranchStruct<NodePtr, DistanceType> BranchSt;
- void save_tree(FILE* stream, NodePtr node, int num)
- {
- save_value(stream, *node);
- 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, NodePtr& node, int num)
- {
- node = pool.allocate<Node>();
- load_value(stream, *node);
- if (node->childs==NULL) {
- int indices_offset;
- load_value(stream, indices_offset);
- node->indices = indices[num] + indices_offset;
- }
- else {
- node->childs = pool.allocate<NodePtr>(branching_);
- for(int i=0; i<branching_; ++i) {
- load_tree(stream, node->childs[i], num);
- }
- }
- }
- void computeLabels(int* dsindices, int indices_length, int* centers, int centers_length, int* labels, DistanceType& cost)
- {
- cost = 0;
- for (int i=0; i<indices_length; ++i) {
- ElementType* point = dataset[dsindices[i]];
- DistanceType dist = distance(point, dataset[centers[0]], veclen_);
- labels[i] = 0;
- for (int j=1; j<centers_length; ++j) {
- DistanceType new_dist = distance(point, dataset[centers[j]], veclen_);
- if (dist>new_dist) {
- labels[i] = j;
- dist = new_dist;
- }
- }
- cost += dist;
- }
- }
-
- void computeClustering(NodePtr node, int* dsindices, int indices_length, int branching, int level)
- {
- node->size = indices_length;
- node->level = level;
- if (indices_length < leaf_size_) {
- node->indices = dsindices;
- std::sort(node->indices,node->indices+indices_length);
- node->childs = NULL;
- return;
- }
- std::vector<int> centers(branching);
- std::vector<int> labels(indices_length);
- int centers_length;
- (this->*chooseCenters)(branching, dsindices, indices_length, ¢ers[0], centers_length);
- if (centers_length<branching) {
- node->indices = dsindices;
- std::sort(node->indices,node->indices+indices_length);
- node->childs = NULL;
- return;
- }
-
- DistanceType cost;
- computeLabels(dsindices, indices_length, ¢ers[0], centers_length, &labels[0], cost);
- node->childs = pool.allocate<NodePtr>(branching);
- int start = 0;
- int end = start;
- for (int i=0; i<branching; ++i) {
- for (int j=0; j<indices_length; ++j) {
- if (labels[j]==i) {
- std::swap(dsindices[j],dsindices[end]);
- std::swap(labels[j],labels[end]);
- end++;
- }
- }
- node->childs[i] = pool.allocate<Node>();
- node->childs[i]->pivot = centers[i];
- node->childs[i]->indices = NULL;
- computeClustering(node->childs[i],dsindices+start, end-start, branching, level+1);
- start=end;
- }
- }
-
- void findNN(NodePtr node, ResultSet<DistanceType>& result, const ElementType* vec, int& checks, int maxChecks,
- Heap<BranchSt>* heap, std::vector<bool>& checked)
- {
- if (node->childs==NULL) {
- if (checks>=maxChecks) {
- if (result.full()) return;
- }
- for (int i=0; i<node->size; ++i) {
- int index = node->indices[i];
- if (!checked[index]) {
- DistanceType dist = distance(dataset[index], vec, veclen_);
- result.addPoint(dist, index);
- checked[index] = true;
- ++checks;
- }
- }
- }
- else {
- DistanceType* domain_distances = new DistanceType[branching_];
- int best_index = 0;
- domain_distances[best_index] = distance(vec, dataset[node->childs[best_index]->pivot], veclen_);
- for (int i=1; i<branching_; ++i) {
- domain_distances[i] = distance(vec, dataset[node->childs[i]->pivot], veclen_);
- if (domain_distances[i]<domain_distances[best_index]) {
- best_index = i;
- }
- }
- for (int i=0; i<branching_; ++i) {
- if (i!=best_index) {
- heap->insert(BranchSt(node->childs[i],domain_distances[i]));
- }
- }
- delete[] domain_distances;
- findNN(node->childs[best_index],result,vec, checks, maxChecks, heap, checked);
- }
- }
- private:
-
- const Matrix<ElementType> dataset;
-
- IndexParams params;
-
- size_t size_;
-
- size_t veclen_;
-
- NodePtr* root;
-
- int** indices;
-
- Distance distance;
-
- PooledAllocator pool;
-
- int memoryCounter;
-
- int branching_;
- int trees_;
- flann_centers_init_t centers_init_;
- int leaf_size_;
- };
- }
- #endif
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