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| #ifndef NANOFLANN_HPP_ |
| #define NANOFLANN_HPP_ |
|
|
| #include <vector> |
| #include <cassert> |
| #include <algorithm> |
| #include <stdexcept> |
| #include <cstdio> |
| #include <cmath> |
| #include <limits> |
|
|
| |
| #if !defined(NOMINMAX) && (defined(_WIN32) || defined(_WIN32_) || defined(WIN32) || defined(_WIN64)) |
| # define NOMINMAX |
| # ifdef max |
| # undef max |
| # undef min |
| # endif |
| #endif |
|
|
| namespace nanoflann |
| { |
| |
| |
|
|
| |
| #define NANOFLANN_VERSION 0x113 |
|
|
| |
| |
| template <typename DistanceType, typename IndexType = size_t, typename CountType = size_t> |
| class KNNResultSet |
| { |
| IndexType * indices; |
| DistanceType* dists; |
| CountType capacity; |
| CountType count; |
|
|
| public: |
| inline KNNResultSet(CountType capacity_) : capacity(capacity_), count(0) |
| { |
| } |
|
|
| inline void init(IndexType* indices_, DistanceType* dists_) |
| { |
| indices = indices_; |
| dists = dists_; |
| count = 0; |
| dists[capacity-1] = (std::numeric_limits<DistanceType>::max)(); |
| } |
|
|
| inline CountType size() const |
| { |
| return count; |
| } |
|
|
| inline bool full() const |
| { |
| return count == capacity; |
| } |
|
|
|
|
| inline void addPoint(DistanceType dist, IndexType index) |
| { |
| CountType i; |
| for (i=count; i>0; --i) { |
| #ifdef NANOFLANN_FIRST_MATCH |
| if ( (dists[i-1]>dist) || ((dist==dists[i-1])&&(indices[i-1]>index)) ) { |
| #else |
| if (dists[i-1]>dist) { |
| #endif |
| if (i<capacity) { |
| dists[i] = dists[i-1]; |
| indices[i] = indices[i-1]; |
| } |
| } |
| else break; |
| } |
| if (i<capacity) { |
| dists[i] = dist; |
| indices[i] = index; |
| } |
| if (count<capacity) count++; |
| } |
|
|
| inline DistanceType worstDist() const |
| { |
| return dists[capacity-1]; |
| } |
| }; |
|
|
|
|
| |
| |
| |
| template <typename DistanceType, typename IndexType = size_t> |
| class RadiusResultSet |
| { |
| public: |
| const DistanceType radius; |
|
|
| std::vector<std::pair<IndexType,DistanceType> >& m_indices_dists; |
|
|
| inline RadiusResultSet(DistanceType radius_, std::vector<std::pair<IndexType,DistanceType> >& indices_dists) : radius(radius_), m_indices_dists(indices_dists) |
| { |
| init(); |
| } |
|
|
| inline ~RadiusResultSet() { } |
|
|
| inline void init() { clear(); } |
| inline void clear() { m_indices_dists.clear(); } |
|
|
| inline size_t size() const { return m_indices_dists.size(); } |
|
|
| inline bool full() const { return true; } |
|
|
| inline void addPoint(DistanceType dist, IndexType index) |
| { |
| if (dist<radius) |
| m_indices_dists.push_back(std::make_pair<IndexType,DistanceType>(index,dist)); |
| } |
|
|
| inline DistanceType worstDist() const { return radius; } |
|
|
| |
| inline void set_radius_and_clear( const DistanceType r ) |
| { |
| radius = r; |
| clear(); |
| } |
|
|
| |
| |
| |
| |
| std::pair<IndexType,DistanceType> worst_item() const |
| { |
| if (m_indices_dists.empty()) throw std::runtime_error("Cannot invoke RadiusResultSet::worst_item() on an empty list of results."); |
| typedef typename std::vector<std::pair<IndexType,DistanceType> >::const_iterator DistIt; |
| DistIt it = std::max_element(m_indices_dists.begin(), m_indices_dists.end()); |
| return *it; |
| } |
| }; |
|
|
| |
| struct IndexDist_Sorter |
| { |
| |
| template <typename PairType> |
| inline bool operator()(const PairType &p1, const PairType &p2) const { |
| return p1.second < p2.second; |
| } |
| }; |
|
|
| |
|
|
|
|
| |
| |
| template<typename T> |
| void save_value(FILE* stream, const T& value, size_t count = 1) |
| { |
| fwrite(&value, sizeof(value),count, stream); |
| } |
|
|
| template<typename T> |
| void save_value(FILE* stream, const std::vector<T>& value) |
| { |
| size_t size = value.size(); |
| fwrite(&size, sizeof(size_t), 1, stream); |
| fwrite(&value[0], sizeof(T), size, stream); |
| } |
|
|
| template<typename T> |
| void load_value(FILE* stream, T& value, size_t count = 1) |
| { |
| size_t read_cnt = fread(&value, sizeof(value), count, stream); |
| if (read_cnt != count) { |
| throw std::runtime_error("Cannot read from file"); |
| } |
| } |
|
|
|
|
| template<typename T> |
| void load_value(FILE* stream, std::vector<T>& value) |
| { |
| size_t size; |
| size_t read_cnt = fread(&size, sizeof(size_t), 1, stream); |
| if (read_cnt!=1) { |
| throw std::runtime_error("Cannot read from file"); |
| } |
| value.resize(size); |
| read_cnt = fread(&value[0], sizeof(T), size, stream); |
| if (read_cnt!=size) { |
| throw std::runtime_error("Cannot read from file"); |
| } |
| } |
| |
|
|
|
|
| |
| |
|
|
| template<typename T> inline T abs(T x) { return (x<0) ? -x : x; } |
| template<> inline int abs<int>(int x) { return ::abs(x); } |
| template<> inline float abs<float>(float x) { return fabsf(x); } |
| template<> inline double abs<double>(double x) { return fabs(x); } |
| template<> inline long double abs<long double>(long double x) { return fabsl(x); } |
|
|
| |
| |
| |
| |
| |
| template<class T, class DataSource, typename _DistanceType = T> |
| struct L1_Adaptor |
| { |
| typedef T ElementType; |
| typedef _DistanceType DistanceType; |
|
|
| const DataSource &data_source; |
|
|
| L1_Adaptor(const DataSource &_data_source) : data_source(_data_source) { } |
|
|
| inline DistanceType operator()(const T* a, const size_t b_idx, size_t size, DistanceType worst_dist = -1) const |
| { |
| DistanceType result = DistanceType(); |
| const T* last = a + size; |
| const T* lastgroup = last - 3; |
| size_t d = 0; |
|
|
| |
| while (a < lastgroup) { |
| const DistanceType diff0 = nanoflann::abs(a[0] - data_source.kdtree_get_pt(b_idx,d++)); |
| const DistanceType diff1 = nanoflann::abs(a[1] - data_source.kdtree_get_pt(b_idx,d++)); |
| const DistanceType diff2 = nanoflann::abs(a[2] - data_source.kdtree_get_pt(b_idx,d++)); |
| const DistanceType diff3 = nanoflann::abs(a[3] - data_source.kdtree_get_pt(b_idx,d++)); |
| result += diff0 + diff1 + diff2 + diff3; |
| a += 4; |
| if ((worst_dist>0)&&(result>worst_dist)) { |
| return result; |
| } |
| } |
| |
| while (a < last) { |
| result += nanoflann::abs( *a++ - data_source.kdtree_get_pt(b_idx,d++) ); |
| } |
| return result; |
| } |
|
|
| template <typename U, typename V> |
| inline DistanceType accum_dist(const U a, const V b, int dim) const |
| { |
| return (a-b)*(a-b); |
| } |
| }; |
|
|
| |
| |
| |
| |
| |
| template<class T, class DataSource, typename _DistanceType = T> |
| struct L2_Adaptor |
| { |
| typedef T ElementType; |
| typedef _DistanceType DistanceType; |
|
|
| const DataSource &data_source; |
|
|
| L2_Adaptor(const DataSource &_data_source) : data_source(_data_source) { } |
|
|
| inline DistanceType operator()(const T* a, const size_t b_idx, size_t size, DistanceType worst_dist = -1) const |
| { |
| DistanceType result = DistanceType(); |
| const T* last = a + size; |
| const T* lastgroup = last - 3; |
| size_t d = 0; |
|
|
| |
| while (a < lastgroup) { |
| const DistanceType diff0 = a[0] - data_source.kdtree_get_pt(b_idx,d++); |
| const DistanceType diff1 = a[1] - data_source.kdtree_get_pt(b_idx,d++); |
| const DistanceType diff2 = a[2] - data_source.kdtree_get_pt(b_idx,d++); |
| const DistanceType diff3 = a[3] - data_source.kdtree_get_pt(b_idx,d++); |
| result += diff0 * diff0 + diff1 * diff1 + diff2 * diff2 + diff3 * diff3; |
| a += 4; |
| if ((worst_dist>0)&&(result>worst_dist)) { |
| return result; |
| } |
| } |
| |
| while (a < last) { |
| const DistanceType diff0 = *a++ - data_source.kdtree_get_pt(b_idx,d++); |
| result += diff0 * diff0; |
| } |
| return result; |
| } |
|
|
| template <typename U, typename V> |
| inline DistanceType accum_dist(const U a, const V b, int dim) const |
| { |
| return (a-b)*(a-b); |
| } |
| }; |
|
|
| |
| |
| |
| |
| |
| template<class T, class DataSource, typename _DistanceType = T> |
| struct L2_Simple_Adaptor |
| { |
| typedef T ElementType; |
| typedef _DistanceType DistanceType; |
|
|
| const DataSource &data_source; |
|
|
| L2_Simple_Adaptor(const DataSource &_data_source) : data_source(_data_source) { } |
|
|
| inline DistanceType operator()(const T* a, const size_t b_idx, size_t size) const { |
| return data_source.kdtree_distance(a,b_idx,size); |
| } |
|
|
| template <typename U, typename V> |
| inline DistanceType accum_dist(const U a, const V b, int dim) const |
| { |
| dim = dim; |
| return (a-b)*(a-b); |
| } |
| }; |
|
|
| |
| struct metric_L1 { |
| template<class T, class DataSource> |
| struct traits { |
| typedef L1_Adaptor<T,DataSource> distance_t; |
| }; |
| }; |
| |
| struct metric_L2 { |
| template<class T, class DataSource> |
| struct traits { |
| typedef L2_Adaptor<T,DataSource> distance_t; |
| }; |
| }; |
| |
| struct metric_L2_Simple { |
| template<class T, class DataSource> |
| struct traits { |
| typedef L2_Simple_Adaptor<T,DataSource> distance_t; |
| }; |
| }; |
|
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| |
| |
| struct KDTreeSingleIndexAdaptorParams |
| { |
| KDTreeSingleIndexAdaptorParams(size_t _leaf_max_size = 10, int dim_ = -1) : |
| leaf_max_size(_leaf_max_size), dim(dim_) |
| {} |
|
|
| size_t leaf_max_size; |
| int dim; |
| }; |
|
|
| |
| struct SearchParams |
| { |
| |
| SearchParams(int checks_IGNORED_ = 32, float eps_ = 0, bool sorted_ = true ) : |
| eps(eps_), sorted(sorted_) { |
| checks_IGNORED_ = checks_IGNORED_; |
| } |
|
|
| int checks; |
| float eps; |
| bool sorted; |
| }; |
| |
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| |
| |
| template <typename T> |
| inline T* allocate(size_t count = 1) |
| { |
| T* mem = (T*) ::malloc(sizeof(T)*count); |
| return mem; |
| } |
|
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|
|
| const size_t WORDSIZE=16; |
| const size_t BLOCKSIZE=8192; |
|
|
| class PooledAllocator |
| { |
| |
| |
| |
| |
|
|
|
|
| size_t remaining; |
| void* base; |
| void* loc; |
| size_t blocksize; |
|
|
|
|
| public: |
| size_t usedMemory; |
| size_t wastedMemory; |
|
|
| |
| |
| |
| PooledAllocator(const size_t blocksize = BLOCKSIZE) |
| { |
| this->blocksize = blocksize; |
| remaining = 0; |
| base = NULL; |
|
|
| usedMemory = 0; |
| wastedMemory = 0; |
| } |
|
|
| |
| |
| |
| ~PooledAllocator() |
| { |
| while (base != NULL) { |
| void *prev = *((void**) base); |
| ::free(base); |
| base = prev; |
| } |
| } |
|
|
| |
| |
| |
| |
| void* malloc(const size_t req_size) |
| { |
| |
| |
| |
| |
| const size_t size = (req_size + (WORDSIZE - 1)) & ~(WORDSIZE - 1); |
|
|
| |
| |
| |
| if (size > remaining) { |
|
|
| wastedMemory += remaining; |
|
|
| |
| const size_t blocksize = (size + sizeof(void*) + (WORDSIZE-1) > BLOCKSIZE) ? |
| size + sizeof(void*) + (WORDSIZE-1) : BLOCKSIZE; |
|
|
| |
| void* m = ::malloc(blocksize); |
| if (!m) { |
| fprintf(stderr,"Failed to allocate memory.\n"); |
| return NULL; |
| } |
|
|
| |
| ((void**) m)[0] = base; |
| base = m; |
|
|
| size_t shift = 0; |
| |
|
|
| remaining = blocksize - sizeof(void*) - shift; |
| loc = ((char*)m + sizeof(void*) + shift); |
| } |
| void* rloc = loc; |
| loc = (char*)loc + size; |
| remaining -= size; |
|
|
| usedMemory += size; |
|
|
| return rloc; |
| } |
|
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| |
| |
| |
| |
| |
| template <typename T> |
| T* allocate(const size_t count = 1) |
| { |
| T* mem = (T*) this->malloc(sizeof(T)*count); |
| return mem; |
| } |
|
|
| }; |
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| |
| template <typename Distance, class DatasetAdaptor,int DIM = -1, typename IndexType = size_t> |
| class KDTreeSingleIndexAdaptor |
| { |
| public: |
| typedef typename Distance::ElementType ElementType; |
| typedef typename Distance::DistanceType DistanceType; |
| protected: |
|
|
| |
| |
| |
| std::vector<IndexType> vind; |
|
|
| size_t m_leaf_max_size; |
|
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|
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| |
| |
| |
| const DatasetAdaptor &dataset; |
|
|
| const KDTreeSingleIndexAdaptorParams index_params; |
|
|
| size_t m_size; |
| int dim; |
|
|
|
|
| |
| struct Node |
| { |
| union { |
| struct |
| { |
| |
| |
| |
| IndexType left, right; |
| } lr; |
| struct |
| { |
| |
| |
| |
| int divfeat; |
| |
| |
| |
| DistanceType divlow, divhigh; |
| } sub; |
| }; |
| |
| |
| |
| Node* child1, * child2; |
| }; |
| typedef Node* NodePtr; |
|
|
|
|
| struct Interval |
| { |
| ElementType low, high; |
| }; |
|
|
| typedef std::vector<Interval> BoundingBox; |
|
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|
|
| |
| |
| |
| |
| template <typename T, typename DistanceType> |
| struct BranchStruct |
| { |
| T node; |
| DistanceType mindist; |
|
|
| BranchStruct() {} |
| BranchStruct(const T& aNode, DistanceType dist) : node(aNode), mindist(dist) {} |
|
|
| inline bool operator<(const BranchStruct<T, DistanceType>& rhs) const |
| { |
| return mindist<rhs.mindist; |
| } |
| }; |
|
|
| |
| |
| |
| NodePtr root_node; |
| typedef BranchStruct<NodePtr, DistanceType> BranchSt; |
| typedef BranchSt* Branch; |
|
|
| BoundingBox root_bbox; |
|
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| |
| |
| |
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| |
| |
| PooledAllocator pool; |
|
|
| public: |
|
|
| Distance distance; |
|
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| |
| |
| |
| |
| |
| |
| KDTreeSingleIndexAdaptor(const int dimensionality, const DatasetAdaptor& inputData, const KDTreeSingleIndexAdaptorParams& params = KDTreeSingleIndexAdaptorParams() ) : |
| dataset(inputData), index_params(params), distance(inputData) |
| { |
| m_size = dataset.kdtree_get_point_count(); |
| dim = dimensionality; |
| if (DIM>0) dim=DIM; |
| else { |
| if (params.dim>0) dim = params.dim; |
| } |
| m_leaf_max_size = params.leaf_max_size; |
|
|
| |
| init_vind(); |
| } |
|
|
| |
| |
| |
| ~KDTreeSingleIndexAdaptor() |
| { |
| } |
|
|
| |
| |
| |
| void buildIndex() |
| { |
| init_vind(); |
| computeBoundingBox(root_bbox); |
| root_node = divideTree(0, m_size, root_bbox ); |
| } |
|
|
| |
| |
| |
| size_t size() const |
| { |
| return m_size; |
| } |
|
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| |
| |
| |
| size_t veclen() const |
| { |
| return static_cast<size_t>(DIM>0 ? DIM : dim); |
| } |
|
|
| |
| |
| |
| |
| size_t usedMemory() const |
| { |
| return pool.usedMemory+pool.wastedMemory+dataset.kdtree_get_point_count()*sizeof(IndexType); |
| } |
|
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| |
| |
| template <typename RESULTSET> |
| void findNeighbors(RESULTSET& result, const ElementType* vec, const SearchParams& searchParams) const |
| { |
| assert(vec); |
| float epsError = 1+searchParams.eps; |
|
|
| std::vector<DistanceType> dists( (DIM>0 ? DIM : dim) ,0); |
| DistanceType distsq = computeInitialDistances(vec, dists); |
| searchLevel(result, vec, root_node, distsq, dists, epsError); |
| } |
|
|
| |
| |
| |
| |
| |
| |
| inline void knnSearch(const ElementType *query_point, const size_t num_closest, IndexType *out_indices, DistanceType *out_distances_sq) const |
| { |
| nanoflann::KNNResultSet<DistanceType,IndexType> resultSet(num_closest); |
| resultSet.init(out_indices, out_distances_sq); |
| this->findNeighbors(resultSet, query_point, nanoflann::SearchParams()); |
| } |
|
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| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| size_t radiusSearch(const ElementType *query_point,const DistanceType radius, std::vector<std::pair<IndexType,DistanceType> >& IndicesDists, const SearchParams& searchParams) const |
| { |
| RadiusResultSet<DistanceType,IndexType> resultSet(radius,IndicesDists); |
| this->findNeighbors(resultSet, query_point, searchParams); |
|
|
| if (searchParams.sorted) |
| std::sort(IndicesDists.begin(),IndicesDists.end(), IndexDist_Sorter() ); |
|
|
| return resultSet.size(); |
| } |
|
|
| |
|
|
| private: |
| |
| void init_vind() |
| { |
| |
| m_size = dataset.kdtree_get_point_count(); |
| if (vind.size()!=m_size) |
| { |
| vind.resize(m_size); |
| for (size_t i = 0; i < m_size; i++) vind[i] = i; |
| } |
| } |
|
|
| |
| inline ElementType dataset_get(size_t idx, int component) const { |
| return dataset.kdtree_get_pt(idx,component); |
| } |
|
|
|
|
| void save_tree(FILE* stream, NodePtr tree) |
| { |
| save_value(stream, *tree); |
| if (tree->child1!=NULL) { |
| save_tree(stream, tree->child1); |
| } |
| if (tree->child2!=NULL) { |
| save_tree(stream, tree->child2); |
| } |
| } |
|
|
|
|
| void load_tree(FILE* stream, NodePtr& tree) |
| { |
| tree = pool.allocate<Node>(); |
| load_value(stream, *tree); |
| if (tree->child1!=NULL) { |
| load_tree(stream, tree->child1); |
| } |
| if (tree->child2!=NULL) { |
| load_tree(stream, tree->child2); |
| } |
| } |
|
|
|
|
| void computeBoundingBox(BoundingBox& bbox) |
| { |
| bbox.resize((DIM>0 ? DIM : dim)); |
| if (dataset.kdtree_get_bbox(bbox)) |
| { |
| |
| } |
| else |
| { |
| for (int i=0; i<(DIM>0 ? DIM : dim); ++i) { |
| bbox[i].low = |
| bbox[i].high = dataset_get(0,i); |
| } |
| const size_t N = dataset.kdtree_get_point_count(); |
| for (size_t k=1; k<N; ++k) { |
| for (int i=0; i<(DIM>0 ? DIM : dim); ++i) { |
| if (dataset_get(k,i)<bbox[i].low) bbox[i].low = dataset_get(k,i); |
| if (dataset_get(k,i)>bbox[i].high) bbox[i].high = dataset_get(k,i); |
| } |
| } |
| } |
| } |
|
|
|
|
| |
| |
| |
| |
| |
| |
| |
| |
| |
| NodePtr divideTree(const IndexType left, const IndexType right, BoundingBox& bbox) |
| { |
| NodePtr node = pool.allocate<Node>(); |
|
|
| |
| if ( (right-left) <= m_leaf_max_size) { |
| node->child1 = node->child2 = NULL; |
| node->lr.left = left; |
| node->lr.right = right; |
|
|
| |
| for (int i=0; i<(DIM>0 ? DIM : dim); ++i) { |
| bbox[i].low = dataset_get(vind[left],i); |
| bbox[i].high = dataset_get(vind[left],i); |
| } |
| for (IndexType k=left+1; k<right; ++k) { |
| for (int i=0; i<(DIM>0 ? DIM : dim); ++i) { |
| if (bbox[i].low>dataset_get(vind[k],i)) bbox[i].low=dataset_get(vind[k],i); |
| if (bbox[i].high<dataset_get(vind[k],i)) bbox[i].high=dataset_get(vind[k],i); |
| } |
| } |
| } |
| else { |
| IndexType idx; |
| int cutfeat; |
| DistanceType cutval; |
| middleSplit_(&vind[0]+left, right-left, idx, cutfeat, cutval, bbox); |
|
|
| node->sub.divfeat = cutfeat; |
|
|
| BoundingBox left_bbox(bbox); |
| left_bbox[cutfeat].high = cutval; |
| node->child1 = divideTree(left, left+idx, left_bbox); |
|
|
| BoundingBox right_bbox(bbox); |
| right_bbox[cutfeat].low = cutval; |
| node->child2 = divideTree(left+idx, right, right_bbox); |
|
|
| node->sub.divlow = left_bbox[cutfeat].high; |
| node->sub.divhigh = right_bbox[cutfeat].low; |
|
|
| for (int i=0; i<(DIM>0 ? DIM : dim); ++i) { |
| bbox[i].low = std::min(left_bbox[i].low, right_bbox[i].low); |
| bbox[i].high = std::max(left_bbox[i].high, right_bbox[i].high); |
| } |
| } |
|
|
| return node; |
| } |
|
|
| void computeMinMax(IndexType* ind, IndexType count, int element, ElementType& min_elem, ElementType& max_elem) |
| { |
| min_elem = dataset_get(ind[0],element); |
| max_elem = dataset_get(ind[0],element); |
| for (IndexType i=1; i<count; ++i) { |
| ElementType val = dataset_get(ind[i],element); |
| if (val<min_elem) min_elem = val; |
| if (val>max_elem) max_elem = val; |
| } |
| } |
|
|
| void middleSplit(IndexType* ind, IndexType count, IndexType& index, int& cutfeat, DistanceType& cutval, const BoundingBox& bbox) |
| { |
| |
| ElementType max_span = bbox[0].high-bbox[0].low; |
| cutfeat = 0; |
| cutval = (bbox[0].high+bbox[0].low)/2; |
| for (int i=1; i<(DIM>0 ? DIM : dim); ++i) { |
| ElementType span = bbox[i].low-bbox[i].low; |
| if (span>max_span) { |
| max_span = span; |
| cutfeat = i; |
| cutval = (bbox[i].high+bbox[i].low)/2; |
| } |
| } |
|
|
| |
| ElementType min_elem, max_elem; |
| computeMinMax(ind, count, cutfeat, min_elem, max_elem); |
| cutval = (min_elem+max_elem)/2; |
| max_span = max_elem - min_elem; |
|
|
| |
| size_t k = cutfeat; |
| for (size_t i=0; i<(DIM>0 ? DIM : dim); ++i) { |
| if (i==k) continue; |
| ElementType span = bbox[i].high-bbox[i].low; |
| if (span>max_span) { |
| computeMinMax(ind, count, i, min_elem, max_elem); |
| span = max_elem - min_elem; |
| if (span>max_span) { |
| max_span = span; |
| cutfeat = i; |
| cutval = (min_elem+max_elem)/2; |
| } |
| } |
| } |
| IndexType lim1, lim2; |
| planeSplit(ind, count, cutfeat, cutval, lim1, lim2); |
|
|
| if (lim1>count/2) index = lim1; |
| else if (lim2<count/2) index = lim2; |
| else index = count/2; |
| } |
|
|
|
|
| void middleSplit_(IndexType* ind, IndexType count, IndexType& index, int& cutfeat, DistanceType& cutval, const BoundingBox& bbox) |
| { |
| const DistanceType EPS=static_cast<DistanceType>(0.00001); |
| ElementType max_span = bbox[0].high-bbox[0].low; |
| for (int i=1; i<(DIM>0 ? DIM : dim); ++i) { |
| ElementType span = bbox[i].high-bbox[i].low; |
| if (span>max_span) { |
| max_span = span; |
| } |
| } |
| ElementType max_spread = -1; |
| cutfeat = 0; |
| for (int i=0; i<(DIM>0 ? DIM : dim); ++i) { |
| ElementType span = bbox[i].high-bbox[i].low; |
| if (span>(1-EPS)*max_span) { |
| ElementType min_elem, max_elem; |
| computeMinMax(ind, count, cutfeat, min_elem, max_elem); |
| ElementType spread = max_elem-min_elem;; |
| if (spread>max_spread) { |
| cutfeat = i; |
| max_spread = spread; |
| } |
| } |
| } |
| |
| DistanceType split_val = (bbox[cutfeat].low+bbox[cutfeat].high)/2; |
| ElementType min_elem, max_elem; |
| computeMinMax(ind, count, cutfeat, min_elem, max_elem); |
|
|
| if (split_val<min_elem) cutval = min_elem; |
| else if (split_val>max_elem) cutval = max_elem; |
| else cutval = split_val; |
|
|
| IndexType lim1, lim2; |
| planeSplit(ind, count, cutfeat, cutval, lim1, lim2); |
|
|
| if (lim1>count/2) index = lim1; |
| else if (lim2<count/2) index = lim2; |
| else index = count/2; |
| } |
|
|
|
|
| |
| |
| |
| |
| |
| |
| |
| |
| |
| void planeSplit(IndexType* ind, const IndexType count, int cutfeat, DistanceType cutval, IndexType& lim1, IndexType& lim2) |
| { |
| |
| IndexType left = 0; |
| IndexType right = count-1; |
| for (;; ) { |
| while (left<=right && dataset_get(ind[left],cutfeat)<cutval) ++left; |
| while (right && left<=right && dataset_get(ind[right],cutfeat)>=cutval) --right; |
| if (left>right || !right) break; |
| std::swap(ind[left], ind[right]); |
| ++left; |
| --right; |
| } |
| |
| |
| |
| lim1 = left; |
| right = count-1; |
| for (;; ) { |
| while (left<=right && dataset_get(ind[left],cutfeat)<=cutval) ++left; |
| while (right && left<=right && dataset_get(ind[right],cutfeat)>cutval) --right; |
| if (left>right || !right) break; |
| std::swap(ind[left], ind[right]); |
| ++left; |
| --right; |
| } |
| lim2 = left; |
| } |
|
|
| DistanceType computeInitialDistances(const ElementType* vec, std::vector<DistanceType>& dists) const |
| { |
| assert(vec); |
| DistanceType distsq = 0.0; |
|
|
| for (int i = 0; i < (DIM>0 ? DIM : dim); ++i) { |
| if (vec[i] < root_bbox[i].low) { |
| dists[i] = distance.accum_dist(vec[i], root_bbox[i].low, i); |
| distsq += dists[i]; |
| } |
| if (vec[i] > root_bbox[i].high) { |
| dists[i] = distance.accum_dist(vec[i], root_bbox[i].high, i); |
| distsq += dists[i]; |
| } |
| } |
|
|
| return distsq; |
| } |
|
|
| |
| |
| |
| |
| template <class RESULTSET> |
| void searchLevel(RESULTSET& result_set, const ElementType* vec, const NodePtr node, DistanceType mindistsq, |
| std::vector<DistanceType>& dists, const float epsError) const |
| { |
| |
| if ((node->child1 == NULL)&&(node->child2 == NULL)) { |
| |
| DistanceType worst_dist = result_set.worstDist(); |
| for (IndexType i=node->lr.left; i<node->lr.right; ++i) { |
| const IndexType index = vind[i]; |
| DistanceType dist = distance(vec, index, (DIM>0 ? DIM : dim)); |
| if (dist<worst_dist) { |
| result_set.addPoint(dist,vind[i]); |
| } |
| } |
| return; |
| } |
|
|
| |
| int idx = node->sub.divfeat; |
| ElementType val = vec[idx]; |
| DistanceType diff1 = val - node->sub.divlow; |
| DistanceType diff2 = val - node->sub.divhigh; |
|
|
| NodePtr bestChild; |
| NodePtr otherChild; |
| DistanceType cut_dist; |
| if ((diff1+diff2)<0) { |
| bestChild = node->child1; |
| otherChild = node->child2; |
| cut_dist = distance.accum_dist(val, node->sub.divhigh, idx); |
| } |
| else { |
| bestChild = node->child2; |
| otherChild = node->child1; |
| cut_dist = distance.accum_dist( val, node->sub.divlow, idx); |
| } |
|
|
| |
| searchLevel(result_set, vec, bestChild, mindistsq, dists, epsError); |
|
|
| DistanceType dst = dists[idx]; |
| mindistsq = mindistsq + cut_dist - dst; |
| dists[idx] = cut_dist; |
| if (mindistsq*epsError<=result_set.worstDist()) { |
| searchLevel(result_set, vec, otherChild, mindistsq, dists, epsError); |
| } |
| dists[idx] = dst; |
| } |
|
|
|
|
| void saveIndex(FILE* stream) |
| { |
| save_value(stream, m_size); |
| save_value(stream, dim); |
| save_value(stream, root_bbox); |
| save_value(stream, m_leaf_max_size); |
| save_value(stream, vind); |
| save_tree(stream, root_node); |
| } |
|
|
| void loadIndex(FILE* stream) |
| { |
| load_value(stream, m_size); |
| load_value(stream, dim); |
| load_value(stream, root_bbox); |
| load_value(stream, m_leaf_max_size); |
| load_value(stream, vind); |
| load_tree(stream, root_node); |
| } |
|
|
| }; |
|
|
|
|
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| template <class MatrixType, int DIM = -1, class Distance = nanoflann::metric_L2, typename IndexType = size_t> |
| struct KDTreeEigenMatrixAdaptor |
| { |
| typedef KDTreeEigenMatrixAdaptor<MatrixType,DIM,Distance> self_t; |
| typedef typename MatrixType::Scalar num_t; |
| typedef typename Distance::template traits<num_t,self_t>::distance_t metric_t; |
| typedef KDTreeSingleIndexAdaptor< metric_t,self_t,DIM,IndexType> index_t; |
|
|
| index_t* index; |
|
|
| |
| KDTreeEigenMatrixAdaptor(const int dimensionality, const MatrixType &mat, const int leaf_max_size = 10) : m_data_matrix(mat) |
| { |
| const size_t dims = mat.cols(); |
| if (DIM>0 && static_cast<int>(dims)!=DIM) |
| throw std::runtime_error("Data set dimensionality does not match the 'DIM' template argument"); |
| index = new index_t( dims, *this , nanoflann::KDTreeSingleIndexAdaptorParams(leaf_max_size, dims ) ); |
| index->buildIndex(); |
| } |
|
|
| ~KDTreeEigenMatrixAdaptor() { |
| delete index; |
| } |
|
|
| const MatrixType &m_data_matrix; |
|
|
| |
| |
| |
| |
| |
| inline void query(const num_t *query_point, const size_t num_closest, IndexType *out_indices, num_t *out_distances_sq, const int nChecks_IGNORED = 10) const |
| { |
| nanoflann::KNNResultSet<typename MatrixType::Scalar,IndexType> resultSet(num_closest); |
| resultSet.init(out_indices, out_distances_sq); |
| index->findNeighbors(resultSet, query_point, nanoflann::SearchParams()); |
| } |
|
|
| |
| |
|
|
| const self_t & derived() const { |
| return *this; |
| } |
| self_t & derived() { |
| return *this; |
| } |
|
|
| |
| inline size_t kdtree_get_point_count() const { |
| return m_data_matrix.rows(); |
| } |
|
|
| |
| inline num_t kdtree_distance(const num_t *p1, const size_t idx_p2,size_t size) const |
| { |
| num_t s=0; |
| for (size_t i=0; i<size; i++) { |
| const num_t d= p1[i]-m_data_matrix.coeff(idx_p2,i); |
| s+=d*d; |
| } |
| return s; |
| } |
|
|
| |
| inline num_t kdtree_get_pt(const size_t idx, int dim) const { |
| return m_data_matrix.coeff(idx,dim); |
| } |
|
|
| |
| |
| |
| template <class BBOX> |
| bool kdtree_get_bbox(BBOX &bb) const { |
| return false; |
| } |
|
|
| |
|
|
| }; |
| |
|
|
| |
| } |
|
|
|
|
| #endif |
|
|