/** * \file NearestNeighbor.hpp * \brief Header for GeographicLib::NearestNeighbor class * * Copyright (c) Charles Karney (2016-2019) and licensed * under the MIT/X11 License. For more information, see * https://geographiclib.sourceforge.io/ **********************************************************************/ #if !defined(GEOGRAPHICLIB_NEARESTNEIGHBOR_HPP) #define GEOGRAPHICLIB_NEARESTNEIGHBOR_HPP 1 #include // for nth_element, max_element, etc. #include #include // for priority_queue #include // for swap + pair #include #include #include #include #include // Only for GEOGRAPHICLIB_STATIC_ASSERT and GeographicLib::GeographicErr #include #if defined(GEOGRAPHICLIB_HAVE_BOOST_SERIALIZATION) && \ GEOGRAPHICLIB_HAVE_BOOST_SERIALIZATION #include #include #include #include #endif #if defined(_MSC_VER) // Squelch warnings about constant conditional expressions # pragma warning (push) # pragma warning (disable: 4127) #endif namespace GeographicLib { /** * \brief Nearest-neighbor calculations * * This class solves the nearest-neighbor problm using a vantage-point tree * as described in \ref nearest. * * This class is templated so that it can handle arbitrary metric spaces as * follows: * * @tparam dist_t the type used for measuring distances; it can be a real or * signed integer type; in typical geodetic applications, \e dist_t might * be double. * @tparam pos_t the type for specifying the positions of points; geodetic * application might bundled the latitude and longitude into a * std::pair. * @tparam distfun_t the type of a function object which takes takes two * positions (of type \e pos_t) and returns the distance (of type \e * dist_t); in geodetic applications, this might be a class which is * constructed with a Geodesic object and which implements a member * function with a signature dist_t operator() (const pos_t&, const * pos_t&) const, which returns the geodesic distance between two * points. * * \note The distance measure must satisfy the triangle inequality, \f$ * d(a,c) \le d(a,b) + d(b,c) \f$ for all points \e a, \e b, \e c. The * geodesic distance (given by Geodesic::Inverse) does, while the great * ellipse distance and the rhumb line distance do not. If you use * the ordinary Euclidean distance, i.e., \f$ \sqrt{(x_a-x_b)^2 + * (y_a-y_b)^2} \f$ for two dimensions, don't be tempted to leave out the * square root in the interests of "efficiency"; the squared distance does * not satisfy the triangle inequality! * * \note This is a "header-only" implementation and, as such, depends in a * minimal way on the rest of GeographicLib (the only dependency is through * the use of GEOGRAPHICLIB_STATIC_ASSERT and GeographicLib::GeographicErr * for handling compile-time and run-time exceptions). Therefore, it is easy * to extract this class from the rest of GeographicLib and use it as a * stand-alone facility. * * The \e dist_t type must support numeric_limits queries (specifically: * is_signed, is_integer, max(), digits). * * The NearestNeighbor object is constructed with a vector of points (type \e * pos_t) and a distance function (type \e distfun_t). However the object * does \e not store the points. When querying the object with Search(), * it's necessary to supply the same vector of points and the same distance * function. * * There's no capability in this implementation to add or remove points from * the set. Instead Initialize() should be called to re-initialize the * object with the modified vector of points. * * Because of the overhead in constructing a NearestNeighbor object for a * large set of points, functions Save() and Load() are provided to save the * object to an external file. operator<<(), operator>>() and Boost * serialization can also be used to save and restore a NearestNeighbor * object. This is illustrated in the example. * * Example of use: * \include example-NearestNeighbor.cpp **********************************************************************/ template class NearestNeighbor { // For tracking changes to the I/O format static const int version = 1; // This is what we get "free"; but if sizeof(dist_t) = 1 (unlikely), allow // 4 slots (and this accommodates the default value bucket = 4). static const int maxbucket = (2 + ((4 * sizeof(dist_t)) / sizeof(int) >= 2 ? (4 * sizeof(dist_t)) / sizeof(int) : 2)); public: /** * Default constructor for NearestNeighbor. * * This is equivalent to specifying an empty set of points. **********************************************************************/ NearestNeighbor() : _numpoints(0), _bucket(0), _cost(0) {} /** * Constructor for NearestNeighbor. * * @param[in] pts a vector of points to include in the set. * @param[in] dist the distance function object. * @param[in] bucket the size of the buckets at the leaf nodes; this must * lie in [0, 2 + 4*sizeof(dist_t)/sizeof(int)] (default 4). * @exception GeographicErr if the value of \e bucket is out of bounds or * the size of \e pts is too big for an int. * @exception std::bad_alloc if memory for the tree can't be allocated. * * \e pts may contain coincident points (i.e., the distance between them * vanishes); these are treated as distinct. * * The choice of \e bucket is a tradeoff between space and efficiency. A * larger \e bucket decreases the size of the NearestNeighbor object which * scales as pts.size() / max(1, bucket) and reduces the number of distance * calculations to construct the object by log2(bucket) * pts.size(). * However each search then requires about bucket additional distance * calculations. * * \warning The distances computed by \e dist must satisfy the standard * metric conditions. If not, the results are undefined. Neither the data * in \e pts nor the query points should contain NaNs or infinities because * such data violates the metric conditions. * * \warning The same arguments \e pts and \e dist must be provided * to the Search() function. **********************************************************************/ NearestNeighbor(const std::vector& pts, const distfun_t& dist, int bucket = 4) { Initialize(pts, dist, bucket); } /** * Initialize or re-initialize NearestNeighbor. * * @param[in] pts a vector of points to include in the tree. * @param[in] dist the distance function object. * @param[in] bucket the size of the buckets at the leaf nodes; this must * lie in [0, 2 + 4*sizeof(dist_t)/sizeof(int)] (default 4). * @exception GeographicErr if the value of \e bucket is out of bounds or * the size of \e pts is too big for an int. * @exception std::bad_alloc if memory for the tree can't be allocated. * * See also the documentation on the constructor. * * If an exception is thrown, the state of the NearestNeighbor is * unchanged. **********************************************************************/ void Initialize(const std::vector& pts, const distfun_t& dist, int bucket = 4) { GEOGRAPHICLIB_STATIC_ASSERT(std::numeric_limits::is_signed, "dist_t must be a signed type"); if (!( 0 <= bucket && bucket <= maxbucket )) throw GeographicLib::GeographicErr ("bucket must lie in [0, 2 + 4*sizeof(dist_t)/sizeof(int)]"); if (pts.size() > size_t(std::numeric_limits::max())) throw GeographicLib::GeographicErr("pts array too big"); // the pair contains distance+id std::vector ids(pts.size()); for (int k = int(ids.size()); k--;) ids[k] = std::make_pair(dist_t(0), k); int cost = 0; std::vector tree; init(pts, dist, bucket, tree, ids, cost, 0, int(ids.size()), int(ids.size()/2)); _tree.swap(tree); _numpoints = int(pts.size()); _bucket = bucket; _mc = _sc = 0; _cost = cost; _c1 = _k = _cmax = 0; _cmin = std::numeric_limits::max(); } /** * Search the NearestNeighbor. * * @param[in] pts the vector of points used for initialization. * @param[in] dist the distance function object used for initialization. * @param[in] query the query point. * @param[out] ind a vector of indices to the closest points found. * @param[in] k the number of points to search for (default = 1). * @param[in] maxdist only return points with distances of \e maxdist or * less from \e query (default is the maximum \e dist_t). * @param[in] mindist only return points with distances of more than * \e mindist from \e query (default = −1). * @param[in] exhaustive whether to do an exhaustive search (default true). * @param[in] tol the tolerance on the results (default 0). * @return the distance to the closest point found (−1 if no points * are found). * @exception GeographicErr if \e pts has a different size from that used * to construct the object. * * The indices returned in \e ind are sorted by distance from \e query * (closest first). * * The simplest invocation is with just the 4 non-optional arguments. This * returns the closest distance and the index to the closest point in * ind0. If there are several points equally close, then * ind0 gives the index of an arbirary one of them. If * there's no closest point (because the set of points is empty), then \e * ind is empty and −1 is returned. * * With \e exhaustive = true and \e tol = 0 (their default values), this * finds the indices of \e k closest neighbors to \e query whose distances * to \e query are in (\e mindist, \e maxdist]. If \e mindist and \e * maxdist have their default values, then these bounds have no effect. If * \e query is one of the points in the tree, then set \e mindist = 0 to * prevent this point (and other coincident points) from being returned. * * If \e exhaustive = false, exit as soon as \e k results satisfying the * distance criteria are found. If less than \e k results are returned * then the search was exhaustive even if \e exhaustive = false. * * If \e tol is positive, do an approximate search; in this case the * results are to be interpreted as follows: if the k'th distance is * \e dk, then all results with distances less than or equal \e dk − * \e tol are correct; all others are suspect — there may be other * closer results with distances greater or equal to \e dk − \e tol. * If less than \e k results are found, then the search is exact. * * \e mindist should be used to exclude a "small" neighborhood of the query * point (relative to the average spacing of the data). If \e mindist is * large, the efficiency of the search deteriorates. * * \note Only the shortest distance is returned (as as the function value). * The distances to other points (indexed by indj * for \e j > 0) can be found by invoking \e dist again. * * \warning The arguments \e pts and \e dist must be identical to those * used to initialize the NearestNeighbor; if not, this function will * return some meaningless result (however, if the size of \e pts is wrong, * this function throw an exception). * * \warning The query point cannot be a NaN or infinite because then the * metric conditions are violated. **********************************************************************/ dist_t Search(const std::vector& pts, const distfun_t& dist, const pos_t& query, std::vector& ind, int k = 1, dist_t maxdist = std::numeric_limits::max(), dist_t mindist = -1, bool exhaustive = true, dist_t tol = 0) const { if (_numpoints != int(pts.size())) throw GeographicLib::GeographicErr("pts array has wrong size"); std::priority_queue results; if (_numpoints > 0 && k > 0 && maxdist > mindist) { // distance to the kth closest point so far dist_t tau = maxdist; // first is negative of how far query is outside boundary of node // +1 if on boundary or inside // second is node index std::priority_queue todo; todo.push(std::make_pair(dist_t(1), int(_tree.size()) - 1)); int c = 0; while (!todo.empty()) { int n = todo.top().second; dist_t d = -todo.top().first; todo.pop(); dist_t tau1 = tau - tol; // compare tau and d again since tau may have become smaller. if (!( n >= 0 && tau1 >= d )) continue; const Node& current = _tree[n]; dist_t dst = 0; // to suppress warning about uninitialized variable bool exitflag = false, leaf = current.index < 0; for (int i = 0; i < (leaf ? _bucket : 1); ++i) { int index = leaf ? current.leaves[i] : current.index; if (index < 0) break; dst = dist(pts[index], query); ++c; if (dst > mindist && dst <= tau) { if (int(results.size()) == k) results.pop(); results.push(std::make_pair(dst, index)); if (int(results.size()) == k) { if (exhaustive) tau = results.top().first; else { exitflag = true; break; } if (tau <= tol) { exitflag = true; break; } } } } if (exitflag) break; if (current.index < 0) continue; tau1 = tau - tol; for (int l = 0; l < 2; ++l) { if (current.data.child[l] >= 0 && dst + current.data.upper[l] >= mindist) { if (dst < current.data.lower[l]) { d = current.data.lower[l] - dst; if (tau1 >= d) todo.push(std::make_pair(-d, current.data.child[l])); } else if (dst > current.data.upper[l]) { d = dst - current.data.upper[l]; if (tau1 >= d) todo.push(std::make_pair(-d, current.data.child[l])); } else todo.push(std::make_pair(dist_t(1), current.data.child[l])); } } } ++_k; _c1 += c; double omc = _mc; _mc += (c - omc) / _k; _sc += (c - omc) * (c - _mc); if (c > _cmax) _cmax = c; if (c < _cmin) _cmin = c; } dist_t d = -1; ind.resize(results.size()); for (int i = int(ind.size()); i--;) { ind[i] = int(results.top().second); if (i == 0) d = results.top().first; results.pop(); } return d; } /** * @return the total number of points in the set. **********************************************************************/ int NumPoints() const { return _numpoints; } /** * Write the object to an I/O stream. * * @param[in,out] os the stream to write to. * @param[in] bin if true (the default) save in binary mode. * @exception std::bad_alloc if memory for the string representation of the * object can't be allocated. * * The counters tracking the statistics of searches are not saved; however * the initializtion cost is saved. The format of the binary saves is \e * not portable. * * \note * Boost serialization can also be used to save and restore a * NearestNeighbor object. This requires that the * GEOGRAPHICLIB_HAVE_BOOST_SERIALIZATION macro be defined. **********************************************************************/ void Save(std::ostream& os, bool bin = true) const { int realspec = std::numeric_limits::digits * (std::numeric_limits::is_integer ? -1 : 1); if (bin) { char id[] = "NearestNeighbor_"; os.write(id, 16); int buf[6]; buf[0] = version; buf[1] = realspec; buf[2] = _bucket; buf[3] = _numpoints; buf[4] = int(_tree.size()); buf[5] = _cost; os.write(reinterpret_cast(buf), 6 * sizeof(int)); for (int i = 0; i < int(_tree.size()); ++i) { const Node& node = _tree[i]; os.write(reinterpret_cast(&node.index), sizeof(int)); if (node.index >= 0) { os.write(reinterpret_cast(node.data.lower), 2 * sizeof(dist_t)); os.write(reinterpret_cast(node.data.upper), 2 * sizeof(dist_t)); os.write(reinterpret_cast(node.data.child), 2 * sizeof(int)); } else { os.write(reinterpret_cast(node.leaves), _bucket * sizeof(int)); } } } else { std::stringstream ostring; // Ensure enough precision for type dist_t. With C++11, max_digits10 // can be used instead. if (!std::numeric_limits::is_integer) { static const int prec = int(std::ceil(std::numeric_limits::digits * std::log10(2.0) + 1)); ostring.precision(prec); } ostring << version << " " << realspec << " " << _bucket << " " << _numpoints << " " << _tree.size() << " " << _cost; for (int i = 0; i < int(_tree.size()); ++i) { const Node& node = _tree[i]; ostring << "\n" << node.index; if (node.index >= 0) { for (int l = 0; l < 2; ++l) ostring << " " << node.data.lower[l] << " " << node.data.upper[l] << " " << node.data.child[l]; } else { for (int l = 0; l < _bucket; ++l) ostring << " " << node.leaves[l]; } } os << ostring.str(); } } /** * Read the object from an I/O stream. * * @param[in,out] is the stream to read from * @param[in] bin if true (the default) load in binary mode. * @exception GeographicErr if the state read from \e is is illegal. * @exception std::bad_alloc if memory for the tree can't be allocated. * * The counters tracking the statistics of searches are reset by this * operation. Binary data must have been saved on a machine with the same * architecture. If an exception is thrown, the state of the * NearestNeighbor is unchanged. * * \note * Boost serialization can also be used to save and restore a * NearestNeighbor object. This requires that the * GEOGRAPHICLIB_HAVE_BOOST_SERIALIZATION macro be defined. * * \warning The same arguments \e pts and \e dist used for * initialization must be provided to the Search() function. **********************************************************************/ void Load(std::istream& is, bool bin = true) { int version1, realspec, bucket, numpoints, treesize, cost; if (bin) { char id[17]; is.read(id, 16); id[16] = '\0'; if (!(std::strcmp(id, "NearestNeighbor_") == 0)) throw GeographicLib::GeographicErr("Bad ID"); is.read(reinterpret_cast(&version1), sizeof(int)); is.read(reinterpret_cast(&realspec), sizeof(int)); is.read(reinterpret_cast(&bucket), sizeof(int)); is.read(reinterpret_cast(&numpoints), sizeof(int)); is.read(reinterpret_cast(&treesize), sizeof(int)); is.read(reinterpret_cast(&cost), sizeof(int)); } else { if (!( is >> version1 >> realspec >> bucket >> numpoints >> treesize >> cost )) throw GeographicLib::GeographicErr("Bad header"); } if (!( version1 == version )) throw GeographicLib::GeographicErr("Incompatible version"); if (!( realspec == std::numeric_limits::digits * (std::numeric_limits::is_integer ? -1 : 1) )) throw GeographicLib::GeographicErr("Different dist_t types"); if (!( 0 <= bucket && bucket <= maxbucket )) throw GeographicLib::GeographicErr("Bad bucket size"); if (!( 0 <= treesize && treesize <= numpoints )) throw GeographicLib::GeographicErr("Bad number of points or tree size"); if (!( 0 <= cost )) throw GeographicLib::GeographicErr("Bad value for cost"); std::vector tree; tree.reserve(treesize); for (int i = 0; i < treesize; ++i) { Node node; if (bin) { is.read(reinterpret_cast(&node.index), sizeof(int)); if (node.index >= 0) { is.read(reinterpret_cast(node.data.lower), 2 * sizeof(dist_t)); is.read(reinterpret_cast(node.data.upper), 2 * sizeof(dist_t)); is.read(reinterpret_cast(node.data.child), 2 * sizeof(int)); } else { is.read(reinterpret_cast(node.leaves), bucket * sizeof(int)); for (int l = bucket; l < maxbucket; ++l) node.leaves[l] = 0; } } else { if (!( is >> node.index )) throw GeographicLib::GeographicErr("Bad index"); if (node.index >= 0) { for (int l = 0; l < 2; ++l) { if (!( is >> node.data.lower[l] >> node.data.upper[l] >> node.data.child[l] )) throw GeographicLib::GeographicErr("Bad node data"); } } else { // Must be at least one valid leaf followed by a sequence end // markers (-1). for (int l = 0; l < bucket; ++l) { if (!( is >> node.leaves[l] )) throw GeographicLib::GeographicErr("Bad leaf data"); } for (int l = bucket; l < maxbucket; ++l) node.leaves[l] = 0; } } node.Check(numpoints, treesize, bucket); tree.push_back(node); } _tree.swap(tree); _numpoints = numpoints; _bucket = bucket; _mc = _sc = 0; _cost = cost; _c1 = _k = _cmax = 0; _cmin = std::numeric_limits::max(); } /** * Write the object to stream \e os as text. * * @param[in,out] os the output stream. * @param[in] t the NearestNeighbor object to be saved. * @exception std::bad_alloc if memory for the string representation of the * object can't be allocated. **********************************************************************/ friend std::ostream& operator<<(std::ostream& os, const NearestNeighbor& t) { t.Save(os, false); return os; } /** * Read the object from stream \e is as text. * * @param[in,out] is the input stream. * @param[out] t the NearestNeighbor object to be loaded. * @exception GeographicErr if the state read from \e is is illegal. * @exception std::bad_alloc if memory for the tree can't be allocated. **********************************************************************/ friend std::istream& operator>>(std::istream& is, NearestNeighbor& t) { t.Load(is, false); return is; } /** * Swap with another NearestNeighbor object. * * @param[in,out] t the NearestNeighbor object to swap with. **********************************************************************/ void swap(NearestNeighbor& t) { std::swap(_numpoints, t._numpoints); std::swap(_bucket, t._bucket); std::swap(_cost, t._cost); _tree.swap(t._tree); std::swap(_mc, t._mc); std::swap(_sc, t._sc); std::swap(_c1, t._c1); std::swap(_k, t._k); std::swap(_cmin, t._cmin); std::swap(_cmax, t._cmax); } /** * The accumulated statistics on the searches so far. * * @param[out] setupcost the cost of initializing the NearestNeighbor. * @param[out] numsearches the number of calls to Search(). * @param[out] searchcost the total cost of the calls to Search(). * @param[out] mincost the minimum cost of a Search(). * @param[out] maxcost the maximum cost of a Search(). * @param[out] mean the mean cost of a Search(). * @param[out] sd the standard deviation in the cost of a Search(). * * Here "cost" measures the number of distance calculations needed. Note * that the accumulation of statistics is \e not thread safe. **********************************************************************/ void Statistics(int& setupcost, int& numsearches, int& searchcost, int& mincost, int& maxcost, double& mean, double& sd) const { setupcost = _cost; numsearches = _k; searchcost = _c1; mincost = _cmin; maxcost = _cmax; mean = _mc; sd = std::sqrt(_sc / (_k - 1)); } /** * Reset the counters for the accumulated statistics on the searches so * far. **********************************************************************/ void ResetStatistics() const { _mc = _sc = 0; _c1 = _k = _cmax = 0; _cmin = std::numeric_limits::max(); } private: // Package up a dist_t and an int. We will want to sort on the dist_t so // put it first. typedef std::pair item; // \cond SKIP class Node { public: struct bounds { dist_t lower[2], upper[2]; // bounds on inner/outer distances int child[2]; }; union { bounds data; int leaves[maxbucket]; }; int index; Node() : index(-1) { for (int i = 0; i < 2; ++i) { data.lower[i] = data.upper[i] = 0; data.child[i] = -1; } } // Sanity check on a Node void Check(int numpoints, int treesize, int bucket) const { if (!( -1 <= index && index < numpoints )) throw GeographicLib::GeographicErr("Bad index"); if (index >= 0) { if (!( -1 <= data.child[0] && data.child[0] < treesize && -1 <= data.child[1] && data.child[1] < treesize )) throw GeographicLib::GeographicErr("Bad child pointers"); if (!( 0 <= data.lower[0] && data.lower[0] <= data.upper[0] && data.upper[0] <= data.lower[1] && data.lower[1] <= data.upper[1] )) throw GeographicLib::GeographicErr("Bad bounds"); } else { // Must be at least one valid leaf followed by a sequence end markers // (-1). bool start = true; for (int l = 0; l < bucket; ++l) { if (!( (start ? ((l == 0 ? 0 : -1) <= leaves[l] && leaves[l] < numpoints) : leaves[l] == -1) )) throw GeographicLib::GeographicErr("Bad leaf data"); start = leaves[l] >= 0; } for (int l = bucket; l < maxbucket; ++l) { if (leaves[l] != 0) throw GeographicLib::GeographicErr("Bad leaf data"); } } } #if defined(GEOGRAPHICLIB_HAVE_BOOST_SERIALIZATION) && \ GEOGRAPHICLIB_HAVE_BOOST_SERIALIZATION friend class boost::serialization::access; template void save(Archive& ar, const unsigned int) const { ar & boost::serialization::make_nvp("index", index); if (index < 0) ar & boost::serialization::make_nvp("leaves", leaves); else ar & boost::serialization::make_nvp("lower", data.lower) & boost::serialization::make_nvp("upper", data.upper) & boost::serialization::make_nvp("child", data.child); } template void load(Archive& ar, const unsigned int) { ar & boost::serialization::make_nvp("index", index); if (index < 0) ar & boost::serialization::make_nvp("leaves", leaves); else ar & boost::serialization::make_nvp("lower", data.lower) & boost::serialization::make_nvp("upper", data.upper) & boost::serialization::make_nvp("child", data.child); } template void serialize(Archive& ar, const unsigned int file_version) { boost::serialization::split_member(ar, *this, file_version); } #endif }; // \endcond #if defined(GEOGRAPHICLIB_HAVE_BOOST_SERIALIZATION) && \ GEOGRAPHICLIB_HAVE_BOOST_SERIALIZATION friend class boost::serialization::access; template void save(Archive& ar, const unsigned) const { int realspec = std::numeric_limits::digits * (std::numeric_limits::is_integer ? -1 : 1); // Need to use version1, otherwise load error in debug mode on Linux: // undefined reference to GeographicLib::NearestNeighbor<...>::version. int version1 = version; ar & boost::serialization::make_nvp("version", version1) & boost::serialization::make_nvp("realspec", realspec) & boost::serialization::make_nvp("bucket", _bucket) & boost::serialization::make_nvp("numpoints", _numpoints) & boost::serialization::make_nvp("cost", _cost) & boost::serialization::make_nvp("tree", _tree); } template void load(Archive& ar, const unsigned) { int version1, realspec, bucket, numpoints, cost; ar & boost::serialization::make_nvp("version", version1); if (version1 != version) throw GeographicLib::GeographicErr("Incompatible version"); std::vector tree; ar & boost::serialization::make_nvp("realspec", realspec); if (!( realspec == std::numeric_limits::digits * (std::numeric_limits::is_integer ? -1 : 1) )) throw GeographicLib::GeographicErr("Different dist_t types"); ar & boost::serialization::make_nvp("bucket", bucket); if (!( 0 <= bucket && bucket <= maxbucket )) throw GeographicLib::GeographicErr("Bad bucket size"); ar & boost::serialization::make_nvp("numpoints", numpoints) & boost::serialization::make_nvp("cost", cost) & boost::serialization::make_nvp("tree", tree); if (!( 0 <= int(tree.size()) && int(tree.size()) <= numpoints )) throw GeographicLib::GeographicErr("Bad number of points or tree size"); for (int i = 0; i < int(tree.size()); ++i) tree[i].Check(numpoints, int(tree.size()), bucket); _tree.swap(tree); _numpoints = numpoints; _bucket = bucket; _mc = _sc = 0; _cost = cost; _c1 = _k = _cmax = 0; _cmin = std::numeric_limits::max(); } template void serialize(Archive& ar, const unsigned int file_version) { boost::serialization::split_member(ar, *this, file_version); } #endif int _numpoints, _bucket, _cost; std::vector _tree; // Counters to track stastistics on the cost of searches mutable double _mc, _sc; mutable int _c1, _k, _cmin, _cmax; int init(const std::vector& pts, const distfun_t& dist, int bucket, std::vector& tree, std::vector& ids, int& cost, int l, int u, int vp) { if (u == l) return -1; Node node; if (u - l > (bucket == 0 ? 1 : bucket)) { // choose a vantage point and move it to the start int i = vp; std::swap(ids[l], ids[i]); int m = (u + l + 1) / 2; for (int k = l + 1; k < u; ++k) { ids[k].first = dist(pts[ids[l].second], pts[ids[k].second]); ++cost; } // partition around the median distance std::nth_element(ids.begin() + l + 1, ids.begin() + m, ids.begin() + u); node.index = ids[l].second; if (m > l + 1) { // node.child[0] is possibly empty typename std::vector::iterator t = std::min_element(ids.begin() + l + 1, ids.begin() + m); node.data.lower[0] = t->first; t = std::max_element(ids.begin() + l + 1, ids.begin() + m); node.data.upper[0] = t->first; // Use point with max distance as vantage point; this point act as a // "corner" point and leads to a good partition. node.data.child[0] = init(pts, dist, bucket, tree, ids, cost, l + 1, m, int(t - ids.begin())); } typename std::vector::iterator t = std::max_element(ids.begin() + m, ids.begin() + u); node.data.lower[1] = ids[m].first; node.data.upper[1] = t->first; // Use point with max distance as vantage point here too node.data.child[1] = init(pts, dist, bucket, tree, ids, cost, m, u, int(t - ids.begin())); } else { if (bucket == 0) node.index = ids[l].second; else { node.index = -1; // Sort the bucket entries so that the tree is independent of the // implementation of nth_element. std::sort(ids.begin() + l, ids.begin() + u); for (int i = l; i < u; ++i) node.leaves[i-l] = ids[i].second; for (int i = u - l; i < bucket; ++i) node.leaves[i] = -1; for (int i = bucket; i < maxbucket; ++i) node.leaves[i] = 0; } } tree.push_back(node); return int(tree.size()) - 1; } }; } // namespace GeographicLib namespace std { /** * Swap two GeographicLib::NearestNeighbor objects. * * @tparam dist_t the type used for measuring distances. * @tparam pos_t the type for specifying the positions of points. * @tparam distfun_t the type for a function object which calculates * distances between points. * @param[in,out] a the first GeographicLib::NearestNeighbor to swap. * @param[in,out] b the second GeographicLib::NearestNeighbor to swap. **********************************************************************/ template void swap(GeographicLib::NearestNeighbor& a, GeographicLib::NearestNeighbor& b) { a.swap(b); } } // namespace std #if defined(_MSC_VER) # pragma warning (pop) #endif #endif // GEOGRAPHICLIB_NEARESTNEIGHBOR_HPP