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cuda discriptor added #127

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6 changes: 5 additions & 1 deletion CMakeLists.txt
Original file line number Diff line number Diff line change
@@ -1,7 +1,7 @@
cmake_minimum_required(VERSION 3.10.0)
project(fast_gicp)

option(BUILD_VGICP_CUDA "Build GPU-powered VGICP" OFF)
option(BUILD_VGICP_CUDA "Build GPU-powered VGICP" ON)
option(BUILD_apps "Build application programs" ON)
option(BUILD_test "Build test programs" OFF)
option(BUILD_PYTHON_BINDINGS "Build python bindings" OFF)
Expand Down Expand Up @@ -121,6 +121,10 @@ if(BUILD_VGICP_CUDA)
src/fast_gicp/cuda/brute_force_knn.cu
src/fast_gicp/cuda/covariance_estimation.cu
src/fast_gicp/cuda/covariance_estimation_rbf.cu
src/fast_gicp/cuda/covariance_estimation_polynomial.cu
src/fast_gicp/cuda/covariance_estimation_histogram.cu
src/fast_gicp/cuda/covariance_estimation_laplacian.cu
src/fast_gicp/cuda/covariance_estimation_gaussian.cu
src/fast_gicp/cuda/covariance_regularization.cu
src/fast_gicp/cuda/gaussian_voxelmap.cu
src/fast_gicp/cuda/find_voxel_correspondences.cu
Expand Down
8 changes: 8 additions & 0 deletions include/fast_gicp/cuda/covariance_estimation.cuh
Original file line number Diff line number Diff line change
Expand Up @@ -11,6 +11,14 @@ namespace cuda {
void covariance_estimation(const thrust::device_vector<Eigen::Vector3f>& points, int k, const thrust::device_vector<int>& k_neighbors, thrust::device_vector<Eigen::Matrix3f>& covariances);

void covariance_estimation_rbf(const thrust::device_vector<Eigen::Vector3f>& points, double kernel_width, double max_dist, thrust::device_vector<Eigen::Matrix3f>& covariances);

void covariance_estimation_polynomial(const thrust::device_vector<Eigen::Vector3f>& points, double alpha, double constant, int degree, thrust::device_vector<Eigen::Matrix3f>& covariances);

void covariance_estimation_histogram_intersection(const thrust::device_vector<Eigen::Vector3f>& points, double kernel_width, double max_dist, thrust::device_vector<Eigen::Matrix3f>& covariances);

void covariance_estimation_laplacian(const thrust::device_vector<Eigen::Vector3f>& points, double kernel_width, double max_dist, thrust::device_vector<Eigen::Matrix3f>& covariances);

void covariance_estimation_gaussian(const thrust::device_vector<Eigen::Vector3f>& points, double kernel_width, double max_dist, thrust::device_vector<Eigen::Matrix3f>& covariances);
}
} // namespace fast_gicp

Expand Down
17 changes: 17 additions & 0 deletions include/fast_gicp/cuda/fast_vgicp_cuda.cuh
Original file line number Diff line number Diff line change
Expand Up @@ -39,6 +39,7 @@ public:

void set_resolution(double resolution);
void set_kernel_params(double kernel_width, double kernel_max_dist);
void set_poly_params(double alpha, double constant, int degree);
void set_neighbor_search_method(fast_gicp::NeighborSearchMethod method, double radius);

void swap_source_and_target();
Expand All @@ -56,6 +57,18 @@ public:
void calculate_source_covariances_rbf(RegularizationMethod method);
void calculate_target_covariances_rbf(RegularizationMethod method);

void calculate_source_covariances_polynomial(RegularizationMethod method);
void calculate_target_covariances_polynomial(RegularizationMethod method);

void calculate_source_covariances_histogram_intersection(RegularizationMethod method);
void calculate_target_covariances_histogram_intersection(RegularizationMethod method);

void calculate_source_covariances_laplacian(RegularizationMethod method);
void calculate_target_covariances_laplacian(RegularizationMethod method);

void calculate_source_covariances_gaussian(RegularizationMethod method);
void calculate_target_covariances_gaussian(RegularizationMethod method);

void get_source_covariances(std::vector<Eigen::Matrix3f, Eigen::aligned_allocator<Eigen::Matrix3f>>& covs) const;
void get_target_covariances(std::vector<Eigen::Matrix3f, Eigen::aligned_allocator<Eigen::Matrix3f>>& covs) const;

Expand All @@ -74,6 +87,10 @@ public:
double resolution;
double kernel_width;
double kernel_max_dist;
double alpha;
double constant;
int degree;

std::unique_ptr<VoxelCoordinates> offsets;

std::unique_ptr<Points> source_points;
Expand Down
3 changes: 2 additions & 1 deletion include/fast_gicp/gicp/fast_vgicp_cuda.hpp
Original file line number Diff line number Diff line change
Expand Up @@ -18,7 +18,7 @@ namespace cuda {
class FastVGICPCudaCore;
}

enum class NearestNeighborMethod { CPU_PARALLEL_KDTREE, GPU_BRUTEFORCE, GPU_RBF_KERNEL };
enum class NearestNeighborMethod { CPU_PARALLEL_KDTREE, GPU_BRUTEFORCE, GPU_RBF_KERNEL, GPU_POLY_KERNEL, GPU_HISTOGRAM_KERNEL, GPU_LAPLACIAN_KERNEL, GPU_GAUSSIAN_KERNEL};

/**
* @brief Fast Voxelized GICP algorithm boosted with CUDA
Expand Down Expand Up @@ -56,6 +56,7 @@ class FastVGICPCuda : public LsqRegistration<PointSource, PointTarget> {
void setCorrespondenceRandomness(int k);
void setResolution(double resolution);
void setKernelWidth(double kernel_width, double max_dist = -1.0);
void setPolyParams(double alpha, double constant, int degree);
void setRegularizationMethod(RegularizationMethod method);
void setNeighborSearchMethod(NeighborSearchMethod method, double radius = -1.0);
void setNearestNeighborSearchMethod(NearestNeighborMethod method);
Expand Down
31 changes: 31 additions & 0 deletions include/fast_gicp/gicp/impl/fast_vgicp_cuda_impl.hpp
Original file line number Diff line number Diff line change
Expand Up @@ -50,6 +50,11 @@ void FastVGICPCuda<PointSource, PointTarget>::setKernelWidth(double kernel_width
vgicp_cuda_->set_kernel_params(kernel_width, max_dist);
}

template <typename PointSource, typename PointTarget>
void FastVGICPCuda<PointSource, PointTarget>::setPolyParams(double alpha, double constant, int degree) {
vgicp_cuda_->set_poly_params(alpha, constant, degree);
}

template<typename PointSource, typename PointTarget>
void FastVGICPCuda<PointSource, PointTarget>::setRegularizationMethod(RegularizationMethod method) {
regularization_method_ = method;
Expand Down Expand Up @@ -107,6 +112,19 @@ void FastVGICPCuda<PointSource, PointTarget>::setInputSource(const PointCloudSou
case NearestNeighborMethod::GPU_RBF_KERNEL:
vgicp_cuda_->calculate_source_covariances_rbf(regularization_method_);
break;
case NearestNeighborMethod::GPU_POLY_KERNEL:
vgicp_cuda_->calculate_source_covariances_polynomial(regularization_method_);
break;
case NearestNeighborMethod::GPU_HISTOGRAM_KERNEL:
vgicp_cuda_->calculate_source_covariances_histogram_intersection(regularization_method_);
break;
case NearestNeighborMethod::GPU_LAPLACIAN_KERNEL:
vgicp_cuda_->calculate_source_covariances_laplacian(regularization_method_);
break;
case NearestNeighborMethod::GPU_GAUSSIAN_KERNEL:
vgicp_cuda_->calculate_source_covariances_gaussian(regularization_method_);
break;

}
}

Expand Down Expand Up @@ -136,6 +154,19 @@ void FastVGICPCuda<PointSource, PointTarget>::setInputTarget(const PointCloudTar
case NearestNeighborMethod::GPU_RBF_KERNEL:
vgicp_cuda_->calculate_target_covariances_rbf(regularization_method_);
break;
case NearestNeighborMethod::GPU_POLY_KERNEL:
vgicp_cuda_->calculate_target_covariances_polynomial(regularization_method_);
break;
case NearestNeighborMethod::GPU_HISTOGRAM_KERNEL:
vgicp_cuda_->calculate_target_covariances_histogram_intersection(regularization_method_);
break;
case NearestNeighborMethod::GPU_LAPLACIAN_KERNEL:
vgicp_cuda_->calculate_target_covariances_laplacian(regularization_method_);
break;
case NearestNeighborMethod::GPU_GAUSSIAN_KERNEL:
vgicp_cuda_->calculate_target_covariances_gaussian(regularization_method_);
break;

}
vgicp_cuda_->create_target_voxelmap();
}
Expand Down
156 changes: 156 additions & 0 deletions src/fast_gicp/cuda/covariance_estimation_gaussian.cu
Original file line number Diff line number Diff line change
@@ -0,0 +1,156 @@
#include <fast_gicp/cuda/covariance_estimation.cuh>

#include <thrust/device_vector.h>

#include <thrust/async/for_each.h>
#include <thrust/async/transform.h>

namespace fast_gicp {
namespace cuda {

struct NormalDistribution {
public:
EIGEN_MAKE_ALIGNED_OPERATOR_NEW

__host__ __device__ NormalDistribution() {}

static __host__ __device__ NormalDistribution zero() {
NormalDistribution dist;
dist.sum_weights = 0.0f;
dist.mean.setZero();
dist.cov.setZero();
return dist;
}

__host__ __device__ NormalDistribution operator+(const NormalDistribution& rhs) const {
NormalDistribution sum;
sum.sum_weights = sum_weights + rhs.sum_weights;
sum.mean = mean + rhs.mean;
sum.cov = cov + rhs.cov;
return sum;
}

__host__ __device__ NormalDistribution& operator+=(const NormalDistribution& rhs) {
sum_weights += rhs.sum_weights;
mean += rhs.mean;
cov += rhs.cov;
return *this;
}

__host__ __device__ void accumulate(const float w, const Eigen::Vector3f& x) {
sum_weights += w;
mean += w * x;
cov += w * x * x.transpose();
}

__host__ __device__ NormalDistribution& finalize() {
Eigen::Vector3f sum_pt = mean;
mean /= sum_weights;
cov = (cov - mean * sum_pt.transpose()) / sum_weights;

return *this;
}

float sum_weights;
Eigen::Vector3f mean;
Eigen::Matrix3f cov;
};


struct covariance_estimation_kernel_gaussian {
static const int BLOCK_SIZE = 512;

covariance_estimation_kernel_gaussian(thrust::device_ptr<const float> exp_factor_ptr, thrust::device_ptr<const float> max_dist_ptr, thrust::device_ptr<const Eigen::Vector3f> points_ptr)
: exp_factor_ptr(exp_factor_ptr),
max_dist_ptr(max_dist_ptr),
points_ptr(points_ptr) {}

__host__ __device__ NormalDistribution operator()(const Eigen::Vector3f& x) const {
const float exp_factor = *thrust::raw_pointer_cast(exp_factor_ptr);
const float max_dist = *thrust::raw_pointer_cast(max_dist_ptr);
const float max_dist_sq = max_dist * max_dist;
const Eigen::Vector3f* points = thrust::raw_pointer_cast(points_ptr);

NormalDistribution dist = NormalDistribution::zero();
for (int i = 0; i < BLOCK_SIZE; i++) {
float sq_d = (x - points[i]).squaredNorm();
if (sq_d > max_dist_sq) {
continue;
}

float r = sqrt(sq_d);
float w = expf(-r * r / (2 * exp_factor * exp_factor));
dist.accumulate(w, points[i]);
}

return dist;
}

thrust::device_ptr<const float> exp_factor_ptr;
thrust::device_ptr<const float> max_dist_ptr;
thrust::device_ptr<const Eigen::Vector3f> points_ptr;
};

struct finalization_kernel {
finalization_kernel(const int stride, const thrust::device_vector<NormalDistribution>& accumulated_dists)
: stride(stride),
accumulated_dists_first(accumulated_dists.data()),
accumulated_dists_last(accumulated_dists.data() + accumulated_dists.size()) {}

__host__ __device__ Eigen::Matrix3f operator()(int index) const {
const NormalDistribution* dists = thrust::raw_pointer_cast(accumulated_dists_first);
const NormalDistribution* dists_last = thrust::raw_pointer_cast(accumulated_dists_last);
const int num_dists = dists_last - dists;

NormalDistribution sum = dists[index];
for (int dist_index = index + stride; dist_index < num_dists; dist_index += stride) {
sum += dists[dist_index];
}

return sum.finalize().cov;
}

const int stride;
thrust::device_ptr<const NormalDistribution> accumulated_dists_first;
thrust::device_ptr<const NormalDistribution> accumulated_dists_last;
};

void covariance_estimation_gaussian(const thrust::device_vector<Eigen::Vector3f>& points, double kernel_width, double max_dist, thrust::device_vector<Eigen::Matrix3f>& covariances) {
covariances.resize(points.size());

thrust::device_vector<float> constants(2);
constants[0] = kernel_width;
constants[1] = max_dist;
thrust::device_ptr<const float> exp_factor_ptr = constants.data();
thrust::device_ptr<const float> max_dist_ptr = constants.data() + 1;

int num_blocks = (points.size() + (covariance_estimation_kernel_gaussian::BLOCK_SIZE - 1)) / covariance_estimation_kernel_gaussian::BLOCK_SIZE;
// padding
thrust::device_vector<Eigen::Vector3f> ext_points(num_blocks * covariance_estimation_kernel_gaussian::BLOCK_SIZE);
thrust::copy(points.begin(), points.end(), ext_points.begin());
thrust::fill(ext_points.begin() + points.size(), ext_points.end(), Eigen::Vector3f(0.0f, 0.0f, 0.0f));

thrust::device_vector<NormalDistribution> accumulated_dists(points.size() * num_blocks);

thrust::system::cuda::detail::unique_stream stream;
std::vector<thrust::system::cuda::unique_eager_event> events(num_blocks);

// accumulate kerneled point distributions
for (int i = 0; i < num_blocks; i++) {
covariance_estimation_kernel_gaussian kernel(exp_factor_ptr, max_dist_ptr, ext_points.data() + covariance_estimation_kernel_gaussian::BLOCK_SIZE * i);
auto event = thrust::async::transform(points.begin(), points.end(), accumulated_dists.begin() + points.size() * i, kernel);
events[i] = std::move(event);
thrust::system::cuda::detail::create_dependency(stream, events[i]);
}

// finalize distributions
thrust::transform(
thrust::cuda::par.on(stream.native_handle()),
thrust::counting_iterator<int>(0),
thrust::counting_iterator<int>(points.size()),
covariances.begin(),
finalization_kernel(points.size(), accumulated_dists));
}

} // namespace cuda
} // namespace fast_gicp
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