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const int CUDA_NUM_THREADS = 1024; | |
inline int GET_BLOCKS(const int N) | |
{ | |
return (N + CUDA_NUM_THREADS - 1) / CUDA_NUM_THREADS; | |
} | |
__device__ float dmcn_im2col_bilinear(const float *bottom_data, const int data_width, | |
const int height, const int width, float h, float w) | |
{ | |
int h_low = floor(h); | |
int w_low = floor(w); | |
int h_high = h_low + 1; | |
int w_high = w_low + 1; | |
float lh = h - h_low; | |
float lw = w - w_low; | |
float hh = 1 - lh, hw = 1 - lw; | |
float v1 = 0; | |
if (h_low >= 0 && w_low >= 0) | |
v1 = bottom_data[h_low * data_width + w_low]; | |
float v2 = 0; | |
if (h_low >= 0 && w_high <= width - 1) | |
v2 = bottom_data[h_low * data_width + w_high]; | |
float v3 = 0; | |
if (h_high <= height - 1 && w_low >= 0) | |
v3 = bottom_data[h_high * data_width + w_low]; | |
float v4 = 0; | |
if (h_high <= height - 1 && w_high <= width - 1) | |
v4 = bottom_data[h_high * data_width + w_high]; | |
float w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; | |
float val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); | |
return val; | |
} | |
__device__ float dmcn_get_gradient_weight(float argmax_h, float argmax_w, | |
const int h, const int w, const int height, const int width) | |
{ | |
if (argmax_h <= -1 || argmax_h >= height || argmax_w <= -1 || argmax_w >= width) | |
{ | |
//empty | |
return 0; | |
} | |
int argmax_h_low = floor(argmax_h); | |
int argmax_w_low = floor(argmax_w); | |
int argmax_h_high = argmax_h_low + 1; | |
int argmax_w_high = argmax_w_low + 1; | |
float weight = 0; | |
if (h == argmax_h_low && w == argmax_w_low) | |
weight = (h + 1 - argmax_h) * (w + 1 - argmax_w); | |
if (h == argmax_h_low && w == argmax_w_high) | |
weight = (h + 1 - argmax_h) * (argmax_w + 1 - w); | |
if (h == argmax_h_high && w == argmax_w_low) | |
weight = (argmax_h + 1 - h) * (w + 1 - argmax_w); | |
if (h == argmax_h_high && w == argmax_w_high) | |
weight = (argmax_h + 1 - h) * (argmax_w + 1 - w); | |
return weight; | |
} | |
__device__ float dmcn_get_coordinate_weight(float argmax_h, float argmax_w, | |
const int height, const int width, const float *im_data, | |
const int data_width, const int bp_dir) | |
{ | |
if (argmax_h <= -1 || argmax_h >= height || argmax_w <= -1 || argmax_w >= width) | |
{ | |
//empty | |
return 0; | |
} | |
int argmax_h_low = floor(argmax_h); | |
int argmax_w_low = floor(argmax_w); | |
int argmax_h_high = argmax_h_low + 1; | |
int argmax_w_high = argmax_w_low + 1; | |
float weight = 0; | |
if (bp_dir == 0) | |
{ | |
if (argmax_h_low >= 0 && argmax_w_low >= 0) | |
weight += -1 * (argmax_w_low + 1 - argmax_w) * im_data[argmax_h_low * data_width + argmax_w_low]; | |
if (argmax_h_low >= 0 && argmax_w_high <= width - 1) | |
weight += -1 * (argmax_w - argmax_w_low) * im_data[argmax_h_low * data_width + argmax_w_high]; | |
if (argmax_h_high <= height - 1 && argmax_w_low >= 0) | |
weight += (argmax_w_low + 1 - argmax_w) * im_data[argmax_h_high * data_width + argmax_w_low]; | |
if (argmax_h_high <= height - 1 && argmax_w_high <= width - 1) | |
weight += (argmax_w - argmax_w_low) * im_data[argmax_h_high * data_width + argmax_w_high]; | |
} | |
else if (bp_dir == 1) | |
{ | |
if (argmax_h_low >= 0 && argmax_w_low >= 0) | |
weight += -1 * (argmax_h_low + 1 - argmax_h) * im_data[argmax_h_low * data_width + argmax_w_low]; | |
if (argmax_h_low >= 0 && argmax_w_high <= width - 1) | |
weight += (argmax_h_low + 1 - argmax_h) * im_data[argmax_h_low * data_width + argmax_w_high]; | |
if (argmax_h_high <= height - 1 && argmax_w_low >= 0) | |
weight += -1 * (argmax_h - argmax_h_low) * im_data[argmax_h_high * data_width + argmax_w_low]; | |
if (argmax_h_high <= height - 1 && argmax_w_high <= width - 1) | |
weight += (argmax_h - argmax_h_low) * im_data[argmax_h_high * data_width + argmax_w_high]; | |
} | |
return weight; | |
} | |
__global__ void modulated_deformable_im2col_gpu_kernel(const int n, | |
const float *data_im, const float *data_offset, const float *data_mask, | |
const int height, const int width, const int kernel_h, const int kernel_w, | |
const int pad_h, const int pad_w, | |
const int stride_h, const int stride_w, | |
const int dilation_h, const int dilation_w, | |
const int channel_per_deformable_group, | |
const int batch_size, const int num_channels, const int deformable_group, | |
const int height_col, const int width_col, | |
float *data_col) | |
{ | |
// launch channels * batch_size * height_col * width_col cores | |
CUDA_KERNEL_LOOP(index, n) | |
{ | |
// NOTE(CharlesShang): different from Dai Jifeng's MXNet implementation, col_buffer is of shape (c*kw*kh, N, oh, ow) | |
// here columns is of shape (N, c*kw*kh, oh * ow), need to adapt axis | |
// index index of output matrix | |
const int w_col = index % width_col; | |
const int h_col = (index / width_col) % height_col; | |
// const int b_col = (index / width_col / height_col) % batch_size; | |
const int b_col = (index / width_col / height_col / num_channels) % batch_size; | |
// const int c_im = (index / width_col / height_col) / batch_size; | |
const int c_im = (index / width_col / height_col) % num_channels; | |
// const int c_col = c_im * kernel_h * kernel_w; | |
const int c_col = c_im * kernel_h * kernel_w; | |
// compute deformable group index | |
const int deformable_group_index = c_im / channel_per_deformable_group; | |
const int h_in = h_col * stride_h - pad_h; | |
const int w_in = w_col * stride_w - pad_w; | |
// float *data_col_ptr = data_col + ((c_col * batch_size + b_col) * height_col + h_col) * width_col + w_col; | |
float *data_col_ptr = data_col + ((b_col * num_channels * kernel_w * kernel_h + c_col) * height_col + h_col) * width_col + w_col; | |
//const float* data_im_ptr = data_im + ((b_col * num_channels + c_im) * height + h_in) * width + w_in; | |
const float *data_im_ptr = data_im + (b_col * num_channels + c_im) * height * width; | |
const float *data_offset_ptr = data_offset + (b_col * deformable_group + deformable_group_index) * 2 * kernel_h * kernel_w * height_col * width_col; | |
const float *data_mask_ptr = data_mask + (b_col * deformable_group + deformable_group_index) * kernel_h * kernel_w * height_col * width_col; | |
for (int i = 0; i < kernel_h; ++i) | |
{ | |
for (int j = 0; j < kernel_w; ++j) | |
{ | |
const int data_offset_h_ptr = ((2 * (i * kernel_w + j)) * height_col + h_col) * width_col + w_col; | |
const int data_offset_w_ptr = ((2 * (i * kernel_w + j) + 1) * height_col + h_col) * width_col + w_col; | |
const int data_mask_hw_ptr = ((i * kernel_w + j) * height_col + h_col) * width_col + w_col; | |
const float offset_h = data_offset_ptr[data_offset_h_ptr]; | |
const float offset_w = data_offset_ptr[data_offset_w_ptr]; | |
const float mask = data_mask_ptr[data_mask_hw_ptr]; | |
float val = static_cast<float>(0); | |
const float h_im = h_in + i * dilation_h + offset_h; | |
const float w_im = w_in + j * dilation_w + offset_w; | |
//if (h_im >= 0 && w_im >= 0 && h_im < height && w_im < width) { | |
if (h_im > -1 && w_im > -1 && h_im < height && w_im < width) | |
{ | |
//const float map_h = i * dilation_h + offset_h; | |
//const float map_w = j * dilation_w + offset_w; | |
//const int cur_height = height - h_in; | |
//const int cur_width = width - w_in; | |
//val = dmcn_im2col_bilinear(data_im_ptr, width, cur_height, cur_width, map_h, map_w); | |
val = dmcn_im2col_bilinear(data_im_ptr, width, height, width, h_im, w_im); | |
} | |
*data_col_ptr = val * mask; | |
// data_col_ptr += batch_size * height_col * width_col; | |
data_col_ptr += height_col * width_col; | |
} | |
} | |
} | |
} | |
__global__ void modulated_deformable_col2im_gpu_kernel(const int n, | |
const float *data_col, const float *data_offset, const float *data_mask, | |
const int channels, const int height, const int width, | |
const int kernel_h, const int kernel_w, | |
const int pad_h, const int pad_w, | |
const int stride_h, const int stride_w, | |
const int dilation_h, const int dilation_w, | |
const int channel_per_deformable_group, | |
const int batch_size, const int deformable_group, | |
const int height_col, const int width_col, | |
float *grad_im) | |
{ | |
CUDA_KERNEL_LOOP(index, n) | |
{ | |
const int j = (index / width_col / height_col / batch_size) % kernel_w; | |
const int i = (index / width_col / height_col / batch_size / kernel_w) % kernel_h; | |
const int c = index / width_col / height_col / batch_size / kernel_w / kernel_h; | |
// compute the start and end of the output | |
const int deformable_group_index = c / channel_per_deformable_group; | |
int w_out = index % width_col; | |
int h_out = (index / width_col) % height_col; | |
int b = (index / width_col / height_col) % batch_size; | |
int w_in = w_out * stride_w - pad_w; | |
int h_in = h_out * stride_h - pad_h; | |
const float *data_offset_ptr = data_offset + (b * deformable_group + deformable_group_index) * 2 * kernel_h * kernel_w * height_col * width_col; | |
const float *data_mask_ptr = data_mask + (b * deformable_group + deformable_group_index) * kernel_h * kernel_w * height_col * width_col; | |
const int data_offset_h_ptr = ((2 * (i * kernel_w + j)) * height_col + h_out) * width_col + w_out; | |
const int data_offset_w_ptr = ((2 * (i * kernel_w + j) + 1) * height_col + h_out) * width_col + w_out; | |
const int data_mask_hw_ptr = ((i * kernel_w + j) * height_col + h_out) * width_col + w_out; | |
const float offset_h = data_offset_ptr[data_offset_h_ptr]; | |
const float offset_w = data_offset_ptr[data_offset_w_ptr]; | |
const float mask = data_mask_ptr[data_mask_hw_ptr]; | |
const float cur_inv_h_data = h_in + i * dilation_h + offset_h; | |
const float cur_inv_w_data = w_in + j * dilation_w + offset_w; | |
const float cur_top_grad = data_col[index] * mask; | |
const int cur_h = (int)cur_inv_h_data; | |
const int cur_w = (int)cur_inv_w_data; | |
for (int dy = -2; dy <= 2; dy++) | |
{ | |
for (int dx = -2; dx <= 2; dx++) | |
{ | |
if (cur_h + dy >= 0 && cur_h + dy < height && | |
cur_w + dx >= 0 && cur_w + dx < width && | |
abs(cur_inv_h_data - (cur_h + dy)) < 1 && | |
abs(cur_inv_w_data - (cur_w + dx)) < 1) | |
{ | |
int cur_bottom_grad_pos = ((b * channels + c) * height + cur_h + dy) * width + cur_w + dx; | |
float weight = dmcn_get_gradient_weight(cur_inv_h_data, cur_inv_w_data, cur_h + dy, cur_w + dx, height, width); | |
atomicAdd(grad_im + cur_bottom_grad_pos, weight * cur_top_grad); | |
} | |
} | |
} | |
} | |
} | |
__global__ void modulated_deformable_col2im_coord_gpu_kernel(const int n, | |
const float *data_col, const float *data_im, | |
const float *data_offset, const float *data_mask, | |
const int channels, const int height, const int width, | |
const int kernel_h, const int kernel_w, | |
const int pad_h, const int pad_w, | |
const int stride_h, const int stride_w, | |
const int dilation_h, const int dilation_w, | |
const int channel_per_deformable_group, | |
const int batch_size, const int offset_channels, const int deformable_group, | |
const int height_col, const int width_col, | |
float *grad_offset, float *grad_mask) | |
{ | |
CUDA_KERNEL_LOOP(index, n) | |
{ | |
float val = 0, mval = 0; | |
int w = index % width_col; | |
int h = (index / width_col) % height_col; | |
int c = (index / width_col / height_col) % offset_channels; | |
int b = (index / width_col / height_col) / offset_channels; | |
// compute the start and end of the output | |
const int deformable_group_index = c / (2 * kernel_h * kernel_w); | |
const int col_step = kernel_h * kernel_w; | |
int cnt = 0; | |
const float *data_col_ptr = data_col + deformable_group_index * channel_per_deformable_group * batch_size * width_col * height_col; | |
const float *data_im_ptr = data_im + (b * deformable_group + deformable_group_index) * channel_per_deformable_group / kernel_h / kernel_w * height * width; | |
const float *data_offset_ptr = data_offset + (b * deformable_group + deformable_group_index) * 2 * kernel_h * kernel_w * height_col * width_col; | |
const float *data_mask_ptr = data_mask + (b * deformable_group + deformable_group_index) * kernel_h * kernel_w * height_col * width_col; | |
const int offset_c = c - deformable_group_index * 2 * kernel_h * kernel_w; | |
for (int col_c = (offset_c / 2); col_c < channel_per_deformable_group; col_c += col_step) | |
{ | |
const int col_pos = (((col_c * batch_size + b) * height_col) + h) * width_col + w; | |
const int bp_dir = offset_c % 2; | |
int j = (col_pos / width_col / height_col / batch_size) % kernel_w; | |
int i = (col_pos / width_col / height_col / batch_size / kernel_w) % kernel_h; | |
int w_out = col_pos % width_col; | |
int h_out = (col_pos / width_col) % height_col; | |
int w_in = w_out * stride_w - pad_w; | |
int h_in = h_out * stride_h - pad_h; | |
const int data_offset_h_ptr = (((2 * (i * kernel_w + j)) * height_col + h_out) * width_col + w_out); | |
const int data_offset_w_ptr = (((2 * (i * kernel_w + j) + 1) * height_col + h_out) * width_col + w_out); | |
const int data_mask_hw_ptr = (((i * kernel_w + j) * height_col + h_out) * width_col + w_out); | |
const float offset_h = data_offset_ptr[data_offset_h_ptr]; | |
const float offset_w = data_offset_ptr[data_offset_w_ptr]; | |
const float mask = data_mask_ptr[data_mask_hw_ptr]; | |
float inv_h = h_in + i * dilation_h + offset_h; | |
float inv_w = w_in + j * dilation_w + offset_w; | |
if (inv_h <= -1 || inv_w <= -1 || inv_h >= height || inv_w >= width) | |
{ | |
inv_h = inv_w = -2; | |
} | |
else | |
{ | |
mval += data_col_ptr[col_pos] * dmcn_im2col_bilinear(data_im_ptr + cnt * height * width, width, height, width, inv_h, inv_w); | |
} | |
const float weight = dmcn_get_coordinate_weight( | |
inv_h, inv_w, | |
height, width, data_im_ptr + cnt * height * width, width, bp_dir); | |
val += weight * data_col_ptr[col_pos] * mask; | |
cnt += 1; | |
} | |
// KERNEL_ASSIGN(grad_offset[index], offset_req, val); | |
grad_offset[index] = val; | |
if (offset_c % 2 == 0) | |
// KERNEL_ASSIGN(grad_mask[(((b * deformable_group + deformable_group_index) * kernel_h * kernel_w + offset_c / 2) * height_col + h) * width_col + w], mask_req, mval); | |
grad_mask[(((b * deformable_group + deformable_group_index) * kernel_h * kernel_w + offset_c / 2) * height_col + h) * width_col + w] = mval; | |
} | |
} | |
void modulated_deformable_im2col_cuda(cudaStream_t stream, | |
const float* data_im, const float* data_offset, const float* data_mask, | |
const int batch_size, const int channels, const int height_im, const int width_im, | |
const int height_col, const int width_col, const int kernel_h, const int kernel_w, | |
const int pad_h, const int pad_w, const int stride_h, const int stride_w, | |
const int dilation_h, const int dilation_w, | |
const int deformable_group, float* data_col) { | |
// num_axes should be smaller than block size | |
const int channel_per_deformable_group = channels / deformable_group; | |
const int num_kernels = channels * batch_size * height_col * width_col; | |
modulated_deformable_im2col_gpu_kernel | |
<<<GET_BLOCKS(num_kernels), CUDA_NUM_THREADS, | |
0, stream>>>( | |
num_kernels, data_im, data_offset, data_mask, height_im, width_im, kernel_h, kernel_w, | |
pad_h, pad_w, stride_h, stride_w, dilation_h, dilation_w, channel_per_deformable_group, | |
batch_size, channels, deformable_group, height_col, width_col, data_col); | |
cudaError_t err = cudaGetLastError(); | |
if (err != cudaSuccess) | |
{ | |
printf("error in modulated_deformable_im2col_cuda: %s\n", cudaGetErrorString(err)); | |
} | |
} | |
void modulated_deformable_col2im_cuda(cudaStream_t stream, | |
const float* data_col, const float* data_offset, const float* data_mask, | |
const int batch_size, const int channels, const int height_im, const int width_im, | |
const int height_col, const int width_col, const int kernel_h, const int kernel_w, | |
const int pad_h, const int pad_w, const int stride_h, const int stride_w, | |
const int dilation_h, const int dilation_w, | |
const int deformable_group, float* grad_im){ | |
const int channel_per_deformable_group = channels / deformable_group; | |
const int num_kernels = channels * kernel_h * kernel_w * batch_size * height_col * width_col; | |
modulated_deformable_col2im_gpu_kernel | |
<<<GET_BLOCKS(num_kernels), CUDA_NUM_THREADS, | |
0, stream>>>( | |
num_kernels, data_col, data_offset, data_mask, channels, height_im, width_im, | |
kernel_h, kernel_w, pad_h, pad_h, stride_h, stride_w, | |
dilation_h, dilation_w, channel_per_deformable_group, | |
batch_size, deformable_group, height_col, width_col, grad_im); | |
cudaError_t err = cudaGetLastError(); | |
if (err != cudaSuccess) | |
{ | |
printf("error in modulated_deformable_col2im_cuda: %s\n", cudaGetErrorString(err)); | |
} | |
} | |
void modulated_deformable_col2im_coord_cuda(cudaStream_t stream, | |
const float* data_col, const float* data_im, const float* data_offset, const float* data_mask, | |
const int batch_size, const int channels, const int height_im, const int width_im, | |
const int height_col, const int width_col, const int kernel_h, const int kernel_w, | |
const int pad_h, const int pad_w, const int stride_h, const int stride_w, | |
const int dilation_h, const int dilation_w, | |
const int deformable_group, | |
float* grad_offset, float* grad_mask) { | |
const int num_kernels = batch_size * height_col * width_col * 2 * kernel_h * kernel_w * deformable_group; | |
const int channel_per_deformable_group = channels * kernel_h * kernel_w / deformable_group; | |
modulated_deformable_col2im_coord_gpu_kernel | |
<<<GET_BLOCKS(num_kernels), CUDA_NUM_THREADS, | |
0, stream>>>( | |
num_kernels, data_col, data_im, data_offset, data_mask, channels, height_im, width_im, | |
kernel_h, kernel_w, pad_h, pad_w, stride_h, stride_w, | |
dilation_h, dilation_w, channel_per_deformable_group, | |
batch_size, 2 * kernel_h * kernel_w * deformable_group, deformable_group, height_col, width_col, | |
grad_offset, grad_mask); | |
cudaError_t err = cudaGetLastError(); | |
if (err != cudaSuccess) | |
{ | |
printf("error in modulated_deformable_col2im_coord_cuda: %s\n", cudaGetErrorString(err)); | |
} | |
} |