roiaware_pool3d.cpp 5.78 KB
Newer Older
1
2
3
4
// Modified from
// https://github.com/sshaoshuai/PCDet/blob/master/pcdet/ops/roiaware_pool3d/src/roiaware_pool3d_kernel.cu
// Written by Shaoshuai Shi
// All Rights Reserved 2019.
wuyuefeng's avatar
wuyuefeng committed
5
6

#include <assert.h>
7
8
#include <torch/extension.h>
#include <torch/serialize/tensor.h>
wuyuefeng's avatar
wuyuefeng committed
9

10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
#define CHECK_CUDA(x) \
  TORCH_CHECK(x.device().is_cuda(), #x, " must be a CUDAtensor ")
#define CHECK_CONTIGUOUS(x) \
  TORCH_CHECK(x.is_contiguous(), #x, " must be contiguous ")
#define CHECK_INPUT(x) \
  CHECK_CUDA(x);       \
  CHECK_CONTIGUOUS(x)

void roiaware_pool3d_launcher(int boxes_num, int pts_num, int channels,
                              int max_pts_each_voxel, int out_x, int out_y,
                              int out_z, const float *rois, const float *pts,
                              const float *pts_feature, int *argmax,
                              int *pts_idx_of_voxels, float *pooled_features,
                              int pool_method);

void roiaware_pool3d_backward_launcher(int boxes_num, int out_x, int out_y,
                                       int out_z, int channels,
                                       int max_pts_each_voxel,
                                       const int *pts_idx_of_voxels,
                                       const int *argmax, const float *grad_out,
                                       float *grad_in, int pool_method);

int roiaware_pool3d_gpu(at::Tensor rois, at::Tensor pts, at::Tensor pts_feature,
                        at::Tensor argmax, at::Tensor pts_idx_of_voxels,
                        at::Tensor pooled_features, int pool_method);

int roiaware_pool3d_gpu_backward(at::Tensor pts_idx_of_voxels,
                                 at::Tensor argmax, at::Tensor grad_out,
                                 at::Tensor grad_in, int pool_method);

int points_in_boxes_cpu(at::Tensor boxes_tensor, at::Tensor pts_tensor,
                        at::Tensor pts_indices_tensor);

43
44
int points_in_boxes_part(at::Tensor boxes_tensor, at::Tensor pts_tensor,
                         at::Tensor box_idx_of_points_tensor);
45

46
47
int points_in_boxes_all(at::Tensor boxes_tensor, at::Tensor pts_tensor,
                        at::Tensor box_idx_of_points_tensor);
wuyuefeng's avatar
Votenet  
wuyuefeng committed
48

49
50
51
int roiaware_pool3d_gpu(at::Tensor rois, at::Tensor pts, at::Tensor pts_feature,
                        at::Tensor argmax, at::Tensor pts_idx_of_voxels,
                        at::Tensor pooled_features, int pool_method) {
52
  // params rois: (N, 7) [x, y, z, x_size, y_size, z_size, ry] in LiDAR coordinate
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
  // params pts: (npoints, 3) [x, y, z] in LiDAR coordinate
  // params pts_feature: (npoints, C)
  // params argmax: (N, out_x, out_y, out_z, C)
  // params pts_idx_of_voxels: (N, out_x, out_y, out_z, max_pts_each_voxel)
  // params pooled_features: (N, out_x, out_y, out_z, C)
  // params pool_method: 0: max_pool 1: avg_pool

  CHECK_INPUT(rois);
  CHECK_INPUT(pts);
  CHECK_INPUT(pts_feature);
  CHECK_INPUT(argmax);
  CHECK_INPUT(pts_idx_of_voxels);
  CHECK_INPUT(pooled_features);

  int boxes_num = rois.size(0);
  int pts_num = pts.size(0);
  int channels = pts_feature.size(1);
  int max_pts_each_voxel = pts_idx_of_voxels.size(4);  // index 0 is the counter
  int out_x = pts_idx_of_voxels.size(1);
  int out_y = pts_idx_of_voxels.size(2);
  int out_z = pts_idx_of_voxels.size(3);
  assert((out_x < 256) && (out_y < 256) &&
         (out_z < 256));  // we encode index with 8bit

  const float *rois_data = rois.data_ptr<float>();
  const float *pts_data = pts.data_ptr<float>();
  const float *pts_feature_data = pts_feature.data_ptr<float>();
  int *argmax_data = argmax.data_ptr<int>();
  int *pts_idx_of_voxels_data = pts_idx_of_voxels.data_ptr<int>();
  float *pooled_features_data = pooled_features.data_ptr<float>();

  roiaware_pool3d_launcher(
      boxes_num, pts_num, channels, max_pts_each_voxel, out_x, out_y, out_z,
      rois_data, pts_data, pts_feature_data, argmax_data,
      pts_idx_of_voxels_data, pooled_features_data, pool_method);

  return 1;
wuyuefeng's avatar
wuyuefeng committed
90
91
}

92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
int roiaware_pool3d_gpu_backward(at::Tensor pts_idx_of_voxels,
                                 at::Tensor argmax, at::Tensor grad_out,
                                 at::Tensor grad_in, int pool_method) {
  // params pts_idx_of_voxels: (N, out_x, out_y, out_z, max_pts_each_voxel)
  // params argmax: (N, out_x, out_y, out_z, C)
  // params grad_out: (N, out_x, out_y, out_z, C)
  // params grad_in: (npoints, C), return value
  // params pool_method: 0: max_pool 1: avg_pool

  CHECK_INPUT(pts_idx_of_voxels);
  CHECK_INPUT(argmax);
  CHECK_INPUT(grad_out);
  CHECK_INPUT(grad_in);

  int boxes_num = pts_idx_of_voxels.size(0);
  int out_x = pts_idx_of_voxels.size(1);
  int out_y = pts_idx_of_voxels.size(2);
  int out_z = pts_idx_of_voxels.size(3);
  int max_pts_each_voxel = pts_idx_of_voxels.size(4);  // index 0 is the counter
  int channels = grad_out.size(4);

  const int *pts_idx_of_voxels_data = pts_idx_of_voxels.data_ptr<int>();
  const int *argmax_data = argmax.data_ptr<int>();
  const float *grad_out_data = grad_out.data_ptr<float>();
  float *grad_in_data = grad_in.data_ptr<float>();

  roiaware_pool3d_backward_launcher(boxes_num, out_x, out_y, out_z, channels,
                                    max_pts_each_voxel, pts_idx_of_voxels_data,
                                    argmax_data, grad_out_data, grad_in_data,
                                    pool_method);

  return 1;
wuyuefeng's avatar
wuyuefeng committed
124
125
126
}

PYBIND11_MODULE(TORCH_EXTENSION_NAME, m) {
127
128
129
  m.def("forward", &roiaware_pool3d_gpu, "roiaware pool3d forward (CUDA)");
  m.def("backward", &roiaware_pool3d_gpu_backward,
        "roiaware pool3d backward (CUDA)");
130
131
132
133
  m.def("points_in_boxes_part", &points_in_boxes_part,
        "points_in_boxes_part forward (CUDA)");
  m.def("points_in_boxes_all", &points_in_boxes_all,
        "points_in_boxes_all forward (CUDA)");
134
135
  m.def("points_in_boxes_cpu", &points_in_boxes_cpu,
        "points_in_boxes_cpu forward (CPU)");
wuyuefeng's avatar
wuyuefeng committed
136
}