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| | #ifndef ICP_H |
| | #define ICP_H |
| | #include <nanoflann.hpp> |
| | #include <AndersonAcceleration.h> |
| | #include <time.h> |
| | #include <fstream> |
| | #include <algorithm> |
| | #include <median.h> |
| | #include <iostream> |
| |
|
| | #define TUPLE_SCALE 0.95 |
| | #define TUPLE_MAX_CNT 1000 |
| |
|
| |
|
| | |
| | namespace nanoflann { |
| | |
| | |
| | template <class MatrixType, int DIM = -1, class Distance = nanoflann::metric_L2, typename IndexType = int> |
| | struct KDTreeAdaptor { |
| | typedef KDTreeAdaptor<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; |
| | KDTreeAdaptor(const MatrixType &mat, const int leaf_max_size = 10) : m_data_matrix(mat) { |
| | const size_t dims = mat.rows(); |
| | index = new index_t(dims, *this, nanoflann::KDTreeSingleIndexAdaptorParams(leaf_max_size, dims)); |
| | index->buildIndex(); |
| | } |
| | ~KDTreeAdaptor() { 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 { |
| | nanoflann::KNNResultSet<typename MatrixType::Scalar, IndexType> resultSet(num_closest); |
| | resultSet.init(out_indices, out_distances_sq); |
| | index->findNeighbors(resultSet, query_point, nanoflann::SearchParams()); |
| | } |
| | |
| | inline IndexType closest(const num_t *query_point) const { |
| | IndexType out_indices; |
| | num_t out_distances_sq; |
| | query(query_point, 1, &out_indices, &out_distances_sq); |
| | return out_indices; |
| | } |
| | const self_t & derived() const { return *this; } |
| | self_t & derived() { return *this; } |
| | inline size_t kdtree_get_point_count() const { return m_data_matrix.cols(); } |
| | |
| | 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++) { |
| | num_t d = p1[i] - m_data_matrix.coeff(i, idx_p2); |
| | s += d*d; |
| | } |
| | return s; |
| | } |
| | |
| | inline num_t kdtree_get_pt(const size_t idx, int dim) const { |
| | return m_data_matrix.coeff(dim, idx); |
| | } |
| | |
| | template <class BBOX> bool kdtree_get_bbox(BBOX&) const { return false; } |
| | }; |
| | } |
| | |
| | |
| | namespace RigidMotionEstimator { |
| | |
| | |
| | |
| | template <typename Derived1, typename Derived2, typename Derived3> |
| | Eigen::Affine3d point_to_point(Eigen::MatrixBase<Derived1>& X, |
| | Eigen::MatrixBase<Derived2>& Y, |
| | const Eigen::MatrixBase<Derived3>& w) { |
| | int dim = X.rows(); |
| | |
| | Eigen::VectorXd w_normalized = w / w.sum(); |
| | |
| | Eigen::VectorXd X_mean(dim), Y_mean(dim); |
| | for (int i = 0; i<dim; ++i) { |
| | X_mean(i) = (X.row(i).array()*w_normalized.transpose().array()).sum(); |
| | Y_mean(i) = (Y.row(i).array()*w_normalized.transpose().array()).sum(); |
| | } |
| | X.colwise() -= X_mean; |
| | Y.colwise() -= Y_mean; |
| |
|
| | |
| | Eigen::Affine3d transformation; |
| | MatrixXX sigma = X * w_normalized.asDiagonal() * Y.transpose(); |
| | Eigen::JacobiSVD<MatrixXX> svd(sigma, Eigen::ComputeFullU | Eigen::ComputeFullV); |
| | if (svd.matrixU().determinant()*svd.matrixV().determinant() < 0.0) { |
| | VectorX S = VectorX::Ones(dim); S(dim-1) = -1.0; |
| | transformation.linear() = svd.matrixV()*S.asDiagonal()*svd.matrixU().transpose(); |
| | } |
| | else { |
| | transformation.linear() = svd.matrixV()*svd.matrixU().transpose(); |
| | } |
| | transformation.translation() = Y_mean - transformation.linear()*X_mean; |
| | |
| | X.colwise() += X_mean; |
| | Y.colwise() += Y_mean; |
| | |
| | |
| | |
| | return transformation; |
| | } |
| | |
| | |
| | template <typename Derived1, typename Derived2> |
| | inline Eigen::Affine3d point_to_point(Eigen::MatrixBase<Derived1>& X, |
| | Eigen::MatrixBase<Derived2>& Y) { |
| | return point_to_point(X, Y, Eigen::VectorXd::Ones(X.cols())); |
| | } |
| | |
| | |
| | |
| | |
| | |
| | template <typename Derived1, typename Derived2, typename Derived3, typename Derived4, typename Derived5> |
| | Eigen::Affine3d point_to_plane(Eigen::MatrixBase<Derived1>& X, |
| | Eigen::MatrixBase<Derived2>& Y, |
| | Eigen::MatrixBase<Derived3>& N, |
| | const Eigen::MatrixBase<Derived4>& w, |
| | const Eigen::MatrixBase<Derived5>& u) { |
| | typedef Eigen::Matrix<double, 6, 6> Matrix66; |
| | typedef Eigen::Matrix<double, 6, 1> Vector6; |
| | typedef Eigen::Block<Matrix66, 3, 3> Block33; |
| | |
| | Eigen::VectorXd w_normalized = w / w.sum(); |
| | |
| | Eigen::Vector3d X_mean; |
| | for (int i = 0; i<3; ++i) |
| | X_mean(i) = (X.row(i).array()*w_normalized.transpose().array()).sum(); |
| | X.colwise() -= X_mean; |
| | Y.colwise() -= X_mean; |
| | |
| | Matrix66 LHS = Matrix66::Zero(); |
| | Vector6 RHS = Vector6::Zero(); |
| | Block33 TL = LHS.topLeftCorner<3, 3>(); |
| | Block33 TR = LHS.topRightCorner<3, 3>(); |
| | Block33 BR = LHS.bottomRightCorner<3, 3>(); |
| | Eigen::MatrixXd C = Eigen::MatrixXd::Zero(3, X.cols()); |
| | #pragma omp parallel |
| | { |
| | #pragma omp for |
| | for (int i = 0; i<X.cols(); i++) { |
| | C.col(i) = X.col(i).cross(N.col(i)); |
| | } |
| | #pragma omp sections nowait |
| | { |
| | #pragma omp section |
| | for (int i = 0; i<X.cols(); i++) TL.selfadjointView<Eigen::Upper>().rankUpdate(C.col(i), w(i)); |
| | #pragma omp section |
| | for (int i = 0; i<X.cols(); i++) TR += (C.col(i)*N.col(i).transpose())*w(i); |
| | #pragma omp section |
| | for (int i = 0; i<X.cols(); i++) BR.selfadjointView<Eigen::Upper>().rankUpdate(N.col(i), w(i)); |
| | #pragma omp section |
| | for (int i = 0; i<C.cols(); i++) { |
| | double dist_to_plane = -((X.col(i) - Y.col(i)).dot(N.col(i)) - u(i))*w(i); |
| | RHS.head<3>() += C.col(i)*dist_to_plane; |
| | RHS.tail<3>() += N.col(i)*dist_to_plane; |
| | } |
| | } |
| | } |
| | LHS = LHS.selfadjointView<Eigen::Upper>(); |
| | |
| | Eigen::Affine3d transformation; |
| | Eigen::LDLT<Matrix66> ldlt(LHS); |
| | RHS = ldlt.solve(RHS); |
| | transformation = Eigen::AngleAxisd(RHS(0), Eigen::Vector3d::UnitX()) * |
| | Eigen::AngleAxisd(RHS(1), Eigen::Vector3d::UnitY()) * |
| | Eigen::AngleAxisd(RHS(2), Eigen::Vector3d::UnitZ()); |
| | transformation.translation() = RHS.tail<3>(); |
| | |
| | X = transformation*X; |
| | |
| | X.colwise() += X_mean; |
| | Y.colwise() += X_mean; |
| | transformation.translation() += -transformation.linear() * X_mean + X_mean; |
| | |
| | return transformation; |
| | } |
| | |
| | |
| | |
| | |
| | template <typename Derived1, typename Derived2, typename Derived3, typename Derived4> |
| | inline Eigen::Affine3d point_to_plane(Eigen::MatrixBase<Derived1>& X, |
| | Eigen::MatrixBase<Derived2>& Yp, |
| | Eigen::MatrixBase<Derived3>& Yn, |
| | const Eigen::MatrixBase<Derived4>& w) { |
| | return point_to_plane(X, Yp, Yn, w, Eigen::VectorXd::Zero(X.cols())); |
| | } |
| | } |
| | |
| | |
| | namespace SICP { |
| | struct Parameters { |
| | bool use_penalty = false; |
| | double p = 1.0; |
| | double mu = 10.0; |
| | double alpha = 1.2; |
| | double max_mu = 1e5; |
| | int max_icp = 100; |
| | int max_outer = 100; |
| | int max_inner = 1; |
| | double stop = 1e-5; |
| | bool print_icpn = false; |
| | Eigen::Matrix4d init_trans = Eigen::Matrix4d::Identity(); |
| | Eigen::Matrix4d gt_trans = Eigen::Matrix4d::Identity(); |
| | bool has_groundtruth = false; |
| | int convergence_iter = 0; |
| | double convergence_mse = 0.0; |
| | double convergence_gt_mse = 0.0; |
| | Eigen::Matrix4d res_trans = Eigen::Matrix4d::Identity(); |
| | std::string file_err = ""; |
| | std::string out_path = ""; |
| | int total_iters = 0; |
| | }; |
| | |
| | template<unsigned int I> |
| | inline double shrinkage(double mu, double n, double p, double s) { |
| | return shrinkage<I - 1>(mu, n, p, 1.0 - (p / mu)*std::pow(n, p - 2.0)*std::pow(s, p - 1.0)); |
| | } |
| | template<> |
| | inline double shrinkage<0>(double, double, double, double s) { return s; } |
| | |
| | template<unsigned int I> |
| | inline void shrink(Eigen::Matrix3Xd& Q, double mu, double p) { |
| | double Ba = std::pow((2.0 / mu)*(1.0 - p), 1.0 / (2.0 - p)); |
| | double ha = Ba + (p / mu)*std::pow(Ba, p - 1.0); |
| | #pragma omp parallel for |
| | for (int i = 0; i<Q.cols(); ++i) { |
| | double n = Q.col(i).norm(); |
| | double w = 0.0; |
| | if (n > ha) w = shrinkage<I>(mu, n, p, (Ba / n + 1.0) / 2.0); |
| | Q.col(i) *= w; |
| | } |
| | } |
| | |
| | template<unsigned int I> |
| | inline void shrink(Eigen::VectorXd& y, double mu, double p) { |
| | double Ba = std::pow((2.0 / mu)*(1.0 - p), 1.0 / (2.0 - p)); |
| | double ha = Ba + (p / mu)*std::pow(Ba, p - 1.0); |
| | #pragma omp parallel for |
| | for (int i = 0; i<y.rows(); ++i) { |
| | double n = std::abs(y(i)); |
| | double s = 0.0; |
| | if (n > ha) s = shrinkage<I>(mu, n, p, (Ba / n + 1.0) / 2.0); |
| | y(i) *= s; |
| | } |
| | } |
| | |
| | |
| | |
| | |
| | template <typename Derived1, typename Derived2> |
| | void point_to_point(Eigen::MatrixBase<Derived1>& X, |
| | Eigen::MatrixBase<Derived2>& Y, Eigen::Vector3d& source_mean, Eigen::Vector3d& target_mean, |
| | Parameters& par) { |
| | |
| | nanoflann::KDTreeAdaptor<Eigen::MatrixBase<Derived2>, 3, nanoflann::metric_L2_Simple> kdtree(Y); |
| | |
| | Eigen::Matrix3Xd Q = Eigen::Matrix3Xd::Zero(3, X.cols()); |
| | Eigen::Matrix3Xd Z = Eigen::Matrix3Xd::Zero(3, X.cols()); |
| | Eigen::Matrix3Xd C = Eigen::Matrix3Xd::Zero(3, X.cols()); |
| | Eigen::Matrix3Xd ori_X = X; |
| | Eigen::Affine3d T(par.init_trans); |
| | Eigen::Matrix3Xd X_gt; |
| | int nPoints = X.cols(); |
| | X = T * X; |
| | Eigen::Matrix3Xd Xo1 = X; |
| | Eigen::Matrix3Xd Xo2 = X; |
| | double gt_mse = 0.0, run_time; |
| | double begin_time, end_time; |
| | std::vector<double> gt_mses, times; |
| |
|
| | if(par.has_groundtruth) |
| | { |
| | Eigen::Vector3d temp_trans = par.gt_trans.block(0, 3, 3, 1); |
| | X_gt = ori_X; |
| | X_gt.colwise() += source_mean; |
| | X_gt = par.gt_trans.block(0, 0, 3, 3) * X_gt; |
| | X_gt.colwise() += temp_trans - target_mean; |
| | } |
| |
|
| | begin_time = omp_get_wtime(); |
| |
|
| | |
| | int icp; |
| | for (icp = 0; icp<par.max_icp; ++icp) { |
| | |
| | #pragma omp parallel for |
| | for (int i = 0; i<X.cols(); ++i) { |
| | Q.col(i) = Y.col(kdtree.closest(X.col(i).data())); |
| | } |
| |
|
| | end_time = omp_get_wtime(); |
| | run_time = end_time - begin_time; |
| | |
| | if(par.has_groundtruth) |
| | { |
| | gt_mse = (X - X_gt).squaredNorm() / nPoints; |
| | } |
| | times.push_back(run_time); |
| | gt_mses.push_back(gt_mse); |
| | |
| | |
| |
|
| | |
| | double mu = par.mu; |
| | for (int outer = 0; outer<par.max_outer; ++outer) { |
| | double dual = 0.0; |
| | for (int inner = 0; inner<par.max_inner; ++inner) { |
| | |
| | Z = X - Q + C / mu; |
| | shrink<3>(Z, mu, par.p); |
| | |
| | Eigen::Matrix3Xd U = Q + Z - C / mu; |
| | Eigen::Affine3d cur_T = RigidMotionEstimator::point_to_point(X, U); |
| | X = cur_T * X; |
| | T = cur_T * T; |
| | |
| | dual = pow((X - Xo1).norm(),2) / nPoints; |
| | Xo1 = X; |
| | if (dual < par.stop) break; |
| | } |
| | |
| | Eigen::Matrix3Xd P = X - Q - Z; |
| | if (!par.use_penalty) C.noalias() += mu*P; |
| | |
| | if (mu < par.max_mu) mu *= par.alpha; |
| | |
| | double primal = P.colwise().norm().maxCoeff(); |
| | if (primal < par.stop && dual < par.stop) break; |
| | } |
| |
|
| | |
| | double stop = (X-Xo2).colwise().norm().maxCoeff(); |
| | Xo2 = X; |
| | if (stop < par.stop) break; |
| | } |
| | if(par.has_groundtruth) |
| | gt_mse = (X-X_gt).squaredNorm()/nPoints; |
| |
|
| | if(par.print_icpn) |
| | { |
| | std::ofstream out_res(par.out_path); |
| | for(int i = 0; i<times.size(); i++) |
| | { |
| | out_res << times[i] << " " << gt_mses[i] << std::endl; |
| | } |
| | out_res.close(); |
| | } |
| |
|
| | T.translation().noalias() += -T.rotation()*source_mean + target_mean; |
| | X.colwise() += target_mean; |
| |
|
| | |
| | par.convergence_gt_mse = gt_mse; |
| | par.convergence_iter = icp; |
| | par.res_trans = T.matrix(); |
| | } |
| | |
| | |
| | |
| | |
| | |
| | template <typename Derived1, typename Derived2, typename Derived3> |
| | void point_to_plane(Eigen::MatrixBase<Derived1>& X, |
| | Eigen::MatrixBase<Derived2>& Y, |
| | Eigen::MatrixBase<Derived3>& N, Eigen::Vector3d source_mean, Eigen::Vector3d target_mean, |
| | Parameters &par) { |
| | |
| | nanoflann::KDTreeAdaptor<Eigen::MatrixBase<Derived2>, 3, nanoflann::metric_L2_Simple> kdtree(Y); |
| | |
| | Eigen::Matrix3Xd Qp = Eigen::Matrix3Xd::Zero(3, X.cols()); |
| | Eigen::Matrix3Xd Qn = Eigen::Matrix3Xd::Zero(3, X.cols()); |
| | Eigen::VectorXd Z = Eigen::VectorXd::Zero(X.cols()); |
| | Eigen::VectorXd C = Eigen::VectorXd::Zero(X.cols()); |
| | Eigen::Matrix3Xd ori_X = X; |
| | Eigen::Affine3d T(par.init_trans); |
| | Eigen::Matrix3Xd X_gt; |
| | int nPoints = X.cols(); |
| | X = T*X; |
| | Eigen::Matrix3Xd Xo1 = X; |
| | Eigen::Matrix3Xd Xo2 = X; |
| | double gt_mse = 0.0, run_time; |
| | double begin_time, end_time; |
| | std::vector<double> gt_mses, times; |
| |
|
| | if(par.has_groundtruth) |
| | { |
| | Eigen::Vector3d temp_trans = par.gt_trans.block(0, 3, 3, 1); |
| | X_gt = ori_X; |
| | X_gt.colwise() += source_mean; |
| | X_gt = par.gt_trans.block(0, 0, 3, 3) * X_gt; |
| | X_gt.colwise() += temp_trans - target_mean; |
| | } |
| |
|
| | begin_time = omp_get_wtime(); |
| |
|
| | |
| | int icp; |
| | int total_iters = 0; |
| | for (icp = 0; icp<par.max_icp; ++icp) { |
| |
|
| | |
| | #pragma omp parallel for |
| | for (int i = 0; i<X.cols(); ++i) { |
| | int id = kdtree.closest(X.col(i).data()); |
| | Qp.col(i) = Y.col(id); |
| | Qn.col(i) = N.col(id); |
| | } |
| |
|
| | end_time = omp_get_wtime(); |
| | run_time = end_time - begin_time; |
| | |
| | if(par.has_groundtruth) |
| | { |
| | gt_mse = (X - X_gt).squaredNorm() / nPoints; |
| | } |
| | times.push_back(run_time); |
| | gt_mses.push_back(gt_mse); |
| |
|
| | if(par.print_icpn) |
| | std::cout << "iter = " << icp << ", time = " << run_time << ", gt_mse = " << gt_mse << std::endl; |
| |
|
| | |
| | double mu = par.mu; |
| | for (int outer = 0; outer<par.max_outer; ++outer) { |
| | double dual = 0.0; |
| | for (int inner = 0; inner<par.max_inner; ++inner) { |
| | total_iters++; |
| | |
| | Z = (Qn.array()*(X - Qp).array()).colwise().sum().transpose() + C.array() / mu; |
| | shrink<3>(Z, mu, par.p); |
| | |
| | Eigen::VectorXd U = Z - C / mu; |
| | T = RigidMotionEstimator::point_to_plane(X, Qp, Qn, Eigen::VectorXd::Ones(X.cols()), U)*T; |
| | |
| | dual = (X - Xo1).colwise().norm().maxCoeff(); |
| | Xo1 = X; |
| | if (dual < par.stop) break; |
| | } |
| | |
| | Eigen::VectorXd P = (Qn.array()*(X - Qp).array()).colwise().sum().transpose() - Z.array(); |
| | if (!par.use_penalty) C.noalias() += mu*P; |
| | |
| | if (mu < par.max_mu) mu *= par.alpha; |
| | |
| | double primal = P.array().abs().maxCoeff(); |
| | if (primal < par.stop && dual < par.stop) break; |
| | } |
| | |
| | double stop = (X - Xo2).colwise().norm().maxCoeff(); |
| | Xo2 = X; |
| | if (stop < par.stop) break; |
| | } |
| | if(par.has_groundtruth) |
| | { |
| | gt_mse = (X-X_gt).squaredNorm()/nPoints; |
| | } |
| | if(par.print_icpn) |
| | { |
| | std::ofstream out_res(par.out_path); |
| | for(int i = 0; i<times.size(); i++) |
| | { |
| | out_res << times[i] << " " <<gt_mses[i] << std::endl; |
| | } |
| | out_res.close(); |
| | } |
| |
|
| | T.translation() += - T.rotation() * source_mean + target_mean; |
| | X.colwise() += target_mean; |
| | |
| | par.convergence_gt_mse = gt_mse; |
| | par.convergence_iter = icp; |
| | par.res_trans = T.matrix(); |
| | par.total_iters = total_iters; |
| | } |
| | } |
| | |
| | |
| | namespace ICP { |
| | enum Function { |
| | PNORM, |
| | TUKEY, |
| | FAIR, |
| | LOGISTIC, |
| | TRIMMED, |
| | WELSCH, |
| | AUTOWELSCH, |
| | NONE |
| | }; |
| | enum AAElementType { |
| | EULERANGLE, |
| | QUATERNION, |
| | LOG_TRANS, |
| | ROTATION, |
| | FPFH, |
| | DUAL_QUATERNION |
| | }; |
| | class Parameters { |
| | public: |
| | Parameters() : f(NONE), |
| | p(0.1), |
| | max_icp(100), |
| | max_outer(1), |
| | stop(1e-5), |
| | use_AA(false), |
| | print_energy(false), |
| | print_output(false), |
| | anderson_m(5), |
| | beta_(1.0), |
| | error_overflow_threshold_(0.05), |
| | has_groundtruth(false), |
| | gt_trans(Eigen::Matrix4d::Identity()), |
| | convergence_energy(0.0), |
| | convergence_iter(0), |
| | convergence_gt_mse(0.0), |
| | nu_begin_k(3), |
| | nu_end_k(1.0/(3.0*sqrt(3.0))), |
| | use_init(false), |
| | nu_alpha(1.0/2) {} |
| | |
| | Function f; |
| | double p; |
| | int max_icp; |
| | int max_outer; |
| | double stop; |
| | bool use_AA; |
| | std::string out_path; |
| | bool print_energy; |
| | bool print_output; |
| | int anderson_m; |
| | double beta_; |
| | double error_overflow_threshold_; |
| | MatrixXX init_trans; |
| | MatrixXX gt_trans; |
| | bool has_groundtruth; |
| | double convergence_energy; |
| | int convergence_iter; |
| | double convergence_gt_mse; |
| | MatrixXX res_trans; |
| | double nu_begin_k; |
| | double nu_end_k; |
| | bool use_init; |
| | double nu_alpha; |
| | }; |
| | |
| | |
| | |
| | void uniform_weight(Eigen::VectorXd& r) { |
| | r = Eigen::VectorXd::Ones(r.rows()); |
| | } |
| | |
| | |
| | void pnorm_weight(Eigen::VectorXd& r, double p, double reg = 1e-8) { |
| | for (int i = 0; i<r.rows(); ++i) { |
| | r(i) = p / (std::pow(r(i), 2 - p) + reg); |
| | } |
| | } |
| | |
| | |
| | void tukey_weight(Eigen::VectorXd& r, double p) { |
| | for (int i = 0; i<r.rows(); ++i) { |
| | if (r(i) > p) r(i) = 0.0; |
| | else r(i) = std::pow((1.0 - std::pow(r(i) / p, 2.0)), 2.0); |
| | } |
| | } |
| | |
| | |
| | void fair_weight(Eigen::VectorXd& r, double p) { |
| | for (int i = 0; i<r.rows(); ++i) { |
| | r(i) = 1.0 / (1.0 + r(i) / p); |
| | } |
| | } |
| | |
| | |
| | void logistic_weight(Eigen::VectorXd& r, double p) { |
| | for (int i = 0; i<r.rows(); ++i) { |
| | r(i) = (p / r(i))*std::tanh(r(i) / p); |
| | } |
| | } |
| | struct sort_pred { |
| | bool operator()(const std::pair<int, double> &left, |
| | const std::pair<int, double> &right) { |
| | return left.second < right.second; |
| | } |
| | }; |
| | |
| | |
| | void trimmed_weight(Eigen::VectorXd& r, double p) { |
| | std::vector<std::pair<int, double> > sortedDist(r.rows()); |
| | for (int i = 0; i<r.rows(); ++i) { |
| | sortedDist[i] = std::pair<int, double>(i, r(i)); |
| | } |
| | std::sort(sortedDist.begin(), sortedDist.end(), sort_pred()); |
| | r.setZero(); |
| | int nbV = r.rows()*p; |
| | for (int i = 0; i<nbV; ++i) { |
| | r(sortedDist[i].first) = 1.0; |
| | } |
| | } |
| | |
| | |
| | void welsch_weight(Eigen::VectorXd& r, double p) { |
| | for (int i = 0; i<r.rows(); ++i) { |
| | r(i) = std::exp(-r(i)*r(i)/(2*p*p)); |
| | } |
| | } |
| |
|
| | |
| | |
| | void autowelsch_weight(Eigen::VectorXd& r, double p) { |
| | double median; |
| | igl::median(r, median); |
| | welsch_weight(r, p*median/(std::sqrt(2)*2.3)); |
| | |
| | } |
| |
|
| | |
| | |
| | |
| | double uniform_energy(Eigen::VectorXd& r) { |
| | double energy = 0; |
| | for (int i = 0; i<r.rows(); ++i) { |
| | energy += r(i)*r(i); |
| | } |
| | return energy; |
| | } |
| | |
| | |
| | double pnorm_energy(Eigen::VectorXd& r, double p, double reg = 1e-8) { |
| | double energy = 0; |
| | for (int i = 0; i<r.rows(); ++i) { |
| | energy += (r(i)*r(i))*p / (std::pow(r(i), 2 - p) + reg); |
| | } |
| | return energy; |
| | } |
| | |
| | |
| | double tukey_energy(Eigen::VectorXd& r, double p) { |
| | double energy = 0; |
| | double w; |
| | for (int i = 0; i<r.rows(); ++i) { |
| | if (r(i) > p) w = 0.0; |
| | else w = std::pow((1.0 - std::pow(r(i) / p, 2.0)), 2.0); |
| |
|
| | energy += (r(i)*r(i))*w; |
| | } |
| | return energy; |
| | } |
| | |
| | |
| | double fair_energy(Eigen::VectorXd& r, double p) { |
| | double energy = 0; |
| | for (int i = 0; i<r.rows(); ++i) { |
| | energy += (r(i)*r(i))*1.0 / (1.0 + r(i) / p); |
| | } |
| | return energy; |
| | } |
| | |
| | |
| | double logistic_energy(Eigen::VectorXd& r, double p) { |
| | double energy = 0; |
| | for (int i = 0; i<r.rows(); ++i) { |
| | energy += (r(i)*r(i))*(p / r(i))*std::tanh(r(i) / p); |
| | } |
| | return energy; |
| | } |
| | |
| | |
| | double trimmed_energy(Eigen::VectorXd& r, double p) { |
| | std::vector<std::pair<int, double> > sortedDist(r.rows()); |
| | for (int i = 0; i<r.rows(); ++i) { |
| | sortedDist[i] = std::pair<int, double>(i, r(i)); |
| | } |
| | std::sort(sortedDist.begin(), sortedDist.end(), sort_pred()); |
| | Eigen::VectorXd t = r; |
| | t.setZero(); |
| | double energy = 0; |
| | int nbV = r.rows()*p; |
| | for (int i = 0; i<nbV; ++i) { |
| | energy += r(i)*r(i); |
| | } |
| | return energy; |
| | } |
| |
|
| | |
| | |
| | double welsch_energy(Eigen::VectorXd& r, double p) { |
| | double energy = 0; |
| | for (int i = 0; i<r.rows(); ++i) { |
| | energy += 1.0 - std::exp(-r(i)*r(i)/(2*p*p)); |
| | } |
| | return energy; |
| | } |
| | |
| | |
| | double autowelsch_energy(Eigen::VectorXd& r, double p) { |
| | double energy = 0; |
| | energy = welsch_energy(r, 0.5); |
| | return energy; |
| | } |
| | |
| | |
| | |
| | void robust_weight(Function f, Eigen::VectorXd& r, double p) { |
| | switch (f) { |
| | case PNORM: pnorm_weight(r, p); break; |
| | case TUKEY: tukey_weight(r, p); break; |
| | case FAIR: fair_weight(r, p); break; |
| | case LOGISTIC: logistic_weight(r, p); break; |
| | case TRIMMED: trimmed_weight(r, p); break; |
| | case WELSCH: welsch_weight(r, p); break; |
| | case AUTOWELSCH: autowelsch_weight(r,p); break; |
| | case NONE: uniform_weight(r); break; |
| | default: uniform_weight(r); break; |
| | } |
| | } |
| |
|
| | |
| | double get_energy(Function f, Eigen::VectorXd& r, double p) { |
| | double energy = 0; |
| | switch (f) { |
| | |
| | case TUKEY: energy = tukey_energy(r, p); break; |
| | case FAIR: energy = fair_energy(r, p); break; |
| | case LOGISTIC: energy = logistic_energy(r, p); break; |
| | case TRIMMED: energy = trimmed_energy(r, p); break; |
| | case WELSCH: energy = welsch_energy(r, p); break; |
| | case AUTOWELSCH: energy = autowelsch_energy(r, p); break; |
| | case NONE: energy = uniform_energy(r); break; |
| | default: energy = uniform_energy(r); break; |
| | } |
| | return energy; |
| | } |
| | } |
| | namespace AAICP{ |
| | typedef Eigen::Matrix<Scalar, 3, 1> Vector3; |
| | typedef Eigen::Matrix<Scalar, 6, 1> Vector6; |
| | typedef Eigen::Matrix<Scalar, 3, 3> Matrix3; |
| | typedef Eigen::Matrix<Scalar, 4, 4> Matrix4; |
| | typedef Eigen::Matrix<Scalar, Eigen::Dynamic, 1> VectorX; |
| | typedef Eigen::Matrix<Scalar, 6, Eigen::Dynamic> Matrix6X; |
| |
|
| | |
| | |
| | Vector6 Matrix42Vector6 (const Matrix4 m) |
| | { |
| | Vector6 v; |
| | Matrix3 s = m.block(0,0,3,3); |
| | v.head(3) = s.eulerAngles(0, 1, 2); |
| | v.tail(3) = m.col(3).head(3); |
| | return v; |
| | } |
| |
|
| | |
| | Matrix4 Vector62Matrix4 (const Vector6 v) |
| | { |
| | Matrix3 s (Eigen::AngleAxis<Scalar>(v(0), Vector3::UnitX()) |
| | * Eigen::AngleAxis<Scalar>(v(1), Vector3::UnitY()) |
| | * Eigen::AngleAxis<Scalar>(v(2), Vector3::UnitZ())); |
| | Matrix4 m = Matrix4::Zero(); |
| | m.block(0,0,3,3) = s; |
| | m(3,3) = 1; |
| | m.col(3).head(3) = v.tail(3); |
| | return m; |
| | } |
| |
|
| | |
| | int alphas_cond (VectorX alphas) |
| | { |
| | double alpha_limit_min_ = -10; |
| | double alpha_limit_max_ = 10; |
| | return alpha_limit_min_ < alphas.minCoeff() && alphas.maxCoeff() < alpha_limit_max_ && alphas(alphas.size()-1) > 0; |
| | } |
| |
|
| | |
| | VectorX get_alphas_lstsq (const Matrix6X f) |
| | { |
| | Matrix6X A = f.leftCols(f.cols()-1); |
| | A *= -1; |
| | A += f.rightCols(1) * VectorX::Constant(f.cols()-1, 1).transpose(); |
| | VectorX sol = A.colPivHouseholderQr().solve(f.rightCols(1)); |
| | sol.conservativeResize(sol.size()+1); |
| | sol[sol.size()-1] = 0; |
| | sol[sol.size()-1] = 1-sol.sum(); |
| | return sol; |
| | } |
| |
|
| | |
| | VectorX get_next_u (const Matrix6X u, const Matrix6X g, const Matrix6X f, std::vector<double> & save_alphas) |
| | { |
| | int i = 1; |
| | double beta_ = 1.0; |
| | save_alphas.clear(); |
| | Vector6 sol = ((1-beta_)*u.col(u.cols()-1) + beta_*g.col(g.cols()-1)); |
| | VectorX sol_alphas(1); |
| | sol_alphas << 1; |
| |
|
| | i = 2; |
| | for (; i <= f.cols(); i++) |
| | { |
| | VectorX alphas = get_alphas_lstsq(f.rightCols(i)); |
| | if (!alphas_cond(alphas)) |
| | { |
| | break; |
| | } |
| | sol = (1-beta_)*u.rightCols(i)*alphas + beta_*g.rightCols(i)*alphas; |
| | sol_alphas = alphas; |
| | } |
| | for(int i= 0; i<sol_alphas.rows(); i++) |
| | { |
| | save_alphas.push_back(sol_alphas[i]); |
| | } |
| | return sol; |
| | } |
| |
|
| |
|
| | template <typename Derived1, typename Derived2, typename Derived3> |
| | void point_to_point_aaicp(Eigen::MatrixBase<Derived1>& X,Eigen::MatrixBase<Derived2>& Y, Eigen::MatrixBase<Derived3>& source_mean, |
| | Eigen::MatrixBase<Derived3>& target_mean, |
| | ICP::Parameters& par) { |
| | |
| | nanoflann::KDTreeAdaptor<Eigen::MatrixBase<Derived2>, 3, nanoflann::metric_L2_Simple> kdtree(Y); |
| | |
| | Eigen::Matrix3Xd Q = Eigen::Matrix3Xd::Zero(3, X.cols()); |
| | Eigen::VectorXd W = Eigen::VectorXd::Zero(X.cols()); |
| | Eigen::Matrix3Xd ori_X = X; |
| |
|
| | double prev_energy = std::numeric_limits<double>::max(), energy = std::numeric_limits<double>::max(); |
| | Eigen::Affine3d T; |
| | if(par.use_init) |
| | { |
| | T.linear() = par.init_trans.block(0,0,3,3); |
| | T.translation() = par.init_trans.block(0,3,3,1); |
| | } |
| | else |
| | T = Eigen::Affine3d::Identity(); |
| | Eigen::Matrix3Xd X_gt = X; |
| | |
| | MatrixXX To1 =T.matrix(); |
| | MatrixXX To2 = T.matrix(); |
| |
|
| | |
| | Matrix6X u(6,0), g(6,0), f(6,0); |
| | Vector6 u_next, u_k; |
| | Matrix4 transformation = Matrix4::Identity(); |
| | Matrix4 final_transformation = Matrix4::Identity(); |
| |
|
| | |
| | std::vector<double> times, energys, gt_mses; |
| | double gt_mse; |
| | double begin_time, end_time, run_time; |
| | begin_time = omp_get_wtime(); |
| |
|
| | |
| | std::vector<std::vector<double>> coeffs; |
| | coeffs.clear(); |
| | std::vector<double> alphas; |
| |
|
| | X = T * X; |
| | |
| | if(par.has_groundtruth) |
| | { |
| | Eigen::Vector3d temp_trans = par.gt_trans.block(0, 3, 3, 1); |
| | X_gt = ori_X; |
| | X_gt.colwise() += source_mean; |
| | X_gt = par.gt_trans.block(0, 0, 3, 3) * X_gt; |
| | X_gt.colwise() += temp_trans - target_mean; |
| | } |
| |
|
| | |
| | int icp = 0; |
| | for (; icp<par.max_icp; ++icp) |
| | { |
| | bool accept_aa = false; |
| | int nPoints = X.cols(); |
| | end_time = omp_get_wtime(); |
| | run_time = end_time - begin_time; |
| | |
| | #pragma omp parallel for |
| | for (int i = 0; i<nPoints; ++i) { |
| | Q.col(i) = Y.col(kdtree.closest(X.col(i).data())); |
| | } |
| |
|
| | |
| |
|
| | times.push_back(run_time); |
| | if(par.has_groundtruth) |
| | { |
| | gt_mse = pow((X - X_gt).norm(),2) / nPoints; |
| | } |
| | gt_mses.push_back(gt_mse); |
| |
|
| | |
| | |
| | W = (X - Q).colwise().norm(); |
| | robust_weight(par.f, W, par.p); |
| |
|
| | |
| | T = RigidMotionEstimator::point_to_point(X, Q, W) * T; |
| | final_transformation = T.matrix(); |
| |
|
| | |
| | if(icp) |
| | { |
| | Vector6 g_k = Matrix42Vector6(transformation * final_transformation); |
| | |
| | W = (X - Q).colwise().norm(); |
| | energy = get_energy(par.f, W, par.p); |
| |
|
| | |
| | if ((energy - prev_energy)/prev_energy > par.error_overflow_threshold_) { |
| | u_next = u_k = g.rightCols(1); |
| | prev_energy = std::numeric_limits<double>::max(); |
| | u = u.rightCols(2); |
| | g = g.rightCols(1); |
| | f = f.rightCols(1); |
| | } |
| | else |
| | { |
| | prev_energy = energy; |
| |
|
| | g.conservativeResize(g.rows(),g.cols()+1); |
| | g.col(g.cols()-1) = g_k; |
| |
|
| | Vector6 f_k = g_k - u_k; |
| | f.conservativeResize(f.rows(),f.cols()+1); |
| | f.col(f.cols()-1) = f_k; |
| |
|
| | u_next = get_next_u(u, g, f, alphas); |
| | u.conservativeResize(u.rows(),u.cols()+1); |
| | u.col(u.cols()-1) = u_next; |
| |
|
| | u_k = u_next; |
| | accept_aa = true; |
| | } |
| | } |
| | |
| | else |
| | { |
| | |
| | W = (X - Q).colwise().norm(); |
| | prev_energy = get_energy(par.f, W, par.p); |
| | Vector6 u0 = Matrix42Vector6(Matrix4::Identity()); |
| | u.conservativeResize(u.rows(),u.cols()+1); |
| | u.col(0)=u0; |
| |
|
| | Vector6 u1 = Matrix42Vector6(transformation * final_transformation); |
| | g.conservativeResize(g.rows(),g.cols()+1); |
| | g.col(0)=u1; |
| |
|
| | u.conservativeResize(u.rows(),u.cols()+1); |
| |
|
| | u.col(1)=u1; |
| |
|
| | f.conservativeResize(f.rows(),f.cols()+1); |
| | f.col(0)=u1 - u0; |
| |
|
| | u_next = u1; |
| | u_k = u1; |
| |
|
| | energy = prev_energy; |
| | } |
| |
|
| | transformation = Vector62Matrix4(u_next)*(final_transformation.inverse()); |
| | final_transformation = Vector62Matrix4(u_next); |
| | X = final_transformation.block(0,0,3,3) * ori_X; |
| | Vector3 trans = final_transformation.block(0,3,3,1); |
| | X.colwise() += trans; |
| |
|
| | energys.push_back(energy); |
| |
|
| | if (par.print_energy) |
| | std::cout << "icp iter = " << icp << ", Energy = " << energy << ", gt_mse = " << gt_mse<< std::endl; |
| |
|
| | |
| | double stop2 = (final_transformation - To2).norm(); |
| | To2 = final_transformation; |
| | if (stop2 < par.stop && icp) break; |
| | } |
| |
|
| | W = (X - Q).colwise().norm(); |
| | double last_energy = get_energy(par.f, W, par.p); |
| | gt_mse = pow((X - X_gt).norm(),2) / X.cols(); |
| |
|
| | final_transformation.block(0,3,3,1) += -final_transformation.block(0, 0, 3, 3)*source_mean + target_mean; |
| | X.colwise() += target_mean; |
| |
|
| | |
| | par.convergence_energy = last_energy; |
| | par.convergence_gt_mse = gt_mse; |
| | par.convergence_iter = icp; |
| | par.res_trans = final_transformation; |
| |
|
| | |
| | if (par.print_output) |
| | { |
| | std::ofstream out_res(par.out_path); |
| | if (!out_res.is_open()) |
| | { |
| | std::cout << "Can't open out file " << par.out_path << std::endl; |
| | } |
| | |
| | out_res.precision(16); |
| | for (int i = 0; i<icp; i++) |
| | { |
| | out_res << times[i] << " " << energys[i] <<" " << gt_mses[i] << std::endl; |
| | } |
| | out_res.close(); |
| | } |
| | } |
| | } |
| | #endif |
| |
|