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DilatedMaxPool3d.cpp
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DilatedMaxPool3d.cpp
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#include <ATen/ATen.h>
#include <ATen/Parallel.h>
#include <ATen/NamedTensorUtils.h>
#include <ATen/NativeFunctions.h>
#include <ATen/native/Pool.h>
#include <tuple>
namespace at {
namespace native {
namespace {
template <typename scalar_t>
static void max_pool3d_with_indices_single_out_frame(
scalar_t *input_p,
scalar_t *output_p,
int64_t *indz_p,
int64_t nslices,
int64_t itime,
int64_t iwidth,
int64_t iheight,
int64_t otime,
int64_t owidth,
int64_t oheight,
int kT,
int kW,
int kH,
int dT,
int dW,
int dH,
int pT,
int pW,
int pH,
int dilationT,
int dilationW,
int dilationH)
{
at::parallel_for(0, nslices, 0, [&](int64_t start, int64_t end) {
for (auto k = start; k < end; k++)
{
/* loop over output */
int64_t i, j, ti;
scalar_t *ip = input_p + k * itime * iwidth * iheight;
for (ti = 0; ti < otime; ti++)
{
for (i = 0; i < oheight; i++)
{
for (j = 0; j < owidth; j++)
{
/* local pointers */
int64_t start_t = ti * dT - pT;
int64_t start_h = i * dH - pH;
int64_t start_w = j * dW - pW;
int64_t end_t = std::min(start_t + (kT - 1) * dilationT + 1, itime);
int64_t end_h = std::min(start_h + (kH - 1) * dilationH + 1, iheight);
int64_t end_w = std::min(start_w + (kW - 1) * dilationW + 1, iwidth);
while(start_t < 0)
start_t += dilationT;
while(start_h < 0)
start_h += dilationH;
while(start_w < 0)
start_w += dilationW;
scalar_t *op = output_p + k * otime * owidth * oheight
+ ti * owidth * oheight + i * owidth + j;
int64_t *indzp = indz_p + k * otime * owidth * oheight
+ ti * owidth * oheight + i * owidth + j;
/* compute local max: */
int64_t maxindex = start_t * iwidth * iheight + start_h * iwidth + start_w;
scalar_t maxval = -std::numeric_limits<scalar_t>::infinity();
for (int64_t z = start_t; z < end_t; z += dilationT)
{
for (int64_t y = start_h; y < end_h; y += dilationH)
{
for (int64_t x = start_w; x < end_w; x += dilationW)
{
int64_t index = z * iwidth * iheight + y * iwidth + x;
scalar_t val = ip[index];
if ((val > maxval) || std::isnan(val))
{
maxval = val;
maxindex = index;
}
}
}
}
// store location of max
*indzp = maxindex;
/* set output to local max */
*op = maxval;
}
}
}
}
});
}
template <typename scalar_t>
static void max_pool3d_with_indices_out_frame(
scalar_t *input_data,
scalar_t *output_data,
int64_t *indices_data,
int64_t nbatch,
int64_t nslices,
int64_t istride, int64_t ostride,
int64_t itime, int64_t iwidth, int64_t iheight,
int64_t otime, int64_t owidth, int64_t oheight,
int kT, int kW, int kH,
int dT, int dW, int dH,
int pT, int pW, int pH,
int dilationT, int dilationW, int dilationH)
{
at::parallel_for(0, nbatch, 0, [&](int64_t start, int64_t end) {
for (auto p = start; p < end; p++)
{
max_pool3d_with_indices_single_out_frame(
input_data + p * istride,
output_data + p * ostride,
indices_data + p * ostride,
nslices,
itime, iwidth, iheight,
otime, owidth, oheight,
kT, kW, kH,
dT, dW, dH,
pT, pW, pH,
dilationT, dilationW, dilationH
);
}
});
}
void max_pool3d_with_indices_out_cpu_template(
Tensor& output,
Tensor& indices,
const Tensor& input_,
IntArrayRef kernel_size,
IntArrayRef stride,
IntArrayRef padding,
IntArrayRef dilation,
bool ceil_mode)
{
// #20866, #22032: Guarantee this for the official C++ API?
TORCH_CHECK(kernel_size.size() == 1 || kernel_size.size() == 3,
"max_pool3d: kernel_size must either be a single int, or a tuple of three ints")
const int kT = safe_downcast<int, int64_t>(kernel_size[0]);
const int kH = kernel_size.size() == 1 ? kT : safe_downcast<int, int64_t>(kernel_size[1]);
const int kW = kernel_size.size() == 1 ? kT : safe_downcast<int, int64_t>(kernel_size[2]);
TORCH_CHECK(stride.size() == 0 || stride.size() == 1 || stride.size() == 3,
"max_pool3d: stride must either be omitted, a single int, or a tuple of three ints")
const int dT = stride.empty() ? kT : safe_downcast<int, int64_t>(stride[0]);
const int dH = stride.empty() ? kH :
stride.size() == 1 ? dT : safe_downcast<int, int64_t>(stride[1]);
const int dW = stride.empty() ? kW :
stride.size() == 1 ? dT : safe_downcast<int, int64_t>(stride[2]);
TORCH_CHECK(padding.size() == 1 || padding.size() == 3,
"max_pool3d: padding must be either be a single int, or a tuple of three ints");
const int pT = safe_downcast<int, int64_t>(padding[0]);
const int pH = padding.size() == 1 ? pT : safe_downcast<int, int64_t>(padding[1]);
const int pW = padding.size() == 1 ? pT : safe_downcast<int, int64_t>(padding[2]);
TORCH_CHECK(dilation.size() == 1 || dilation.size() == 3,
"max_pool3d: dilation must be either a single int, or a tuple of three ints");
const int dilationT = safe_downcast<int, int64_t>(dilation[0]);
const int dilationH = dilation.size() == 1 ? dilationT : safe_downcast<int, int64_t>(dilation[1]);
const int dilationW = dilation.size() == 1 ? dilationT : safe_downcast<int, int64_t>(dilation[2]);
TORCH_CHECK((input_.ndimension() == 4 || input_.ndimension() == 5),
"non-empty 4D or 5D (batch mode) tensor expected for input");
const int64_t nslices = input_.size(-4);
const int64_t itime = input_.size(-3);
const int64_t iheight = input_.size(-2);
const int64_t iwidth = input_.size(-1);
const int64_t otime = pooling_output_shape<int64_t>(itime, kT, pT, dT, dilationT, ceil_mode);
const int64_t oheight = pooling_output_shape<int64_t>(iheight, kH, pH, dH, dilationH, ceil_mode);
const int64_t owidth = pooling_output_shape<int64_t>(iwidth, kW, pW, dW, dilationW, ceil_mode);
pool3d_shape_check(
input_,
nslices,
kT, kH, kW,
dT, dH, dW,
pT, pH, pW,
dilationT, dilationH, dilationW,
itime, iheight, iwidth,
otime, oheight, owidth);
/* get contiguous input */
Tensor input = input_.contiguous();
if (input.dim() == 4) { /* non-batch mode */
/* resize output */
output.resize_({nslices, otime, oheight, owidth});
/* indices will contain ti,i,j locations for each output point */
indices.resize_({nslices, otime, oheight, owidth});
AT_DISPATCH_FLOATING_TYPES(input.scalar_type(),
"max_pool3d_with_indices_cpu",
[&] {
scalar_t *input_data = input.data_ptr<scalar_t>();
scalar_t *output_data = output.data_ptr<scalar_t>();
int64_t *indices_data = indices.data_ptr<int64_t>();
max_pool3d_with_indices_single_out_frame(
input_data, output_data,
indices_data,
nslices,
itime, iwidth, iheight,
otime, owidth, oheight,
kT, kW, kH,
dT, dW, dH,
pT, pW, pH,
dilationT, dilationW, dilationH);
}
);
}
else { /* batch mode */
const int64_t nbatch = input.size(0);
const int64_t istride = nslices * itime * iwidth * iheight;
const int64_t ostride = nslices * otime * owidth * oheight;
/* resize output */
output.resize_({nbatch, nslices, otime, oheight, owidth});
/* indices will contain ti,i,j locations for each output point */
indices.resize_({nbatch, nslices, otime, oheight, owidth});
AT_DISPATCH_FLOATING_TYPES(input.scalar_type(),
"max_pool3d_with_indices_cpu",
[&] {
scalar_t *input_data = input.data_ptr<scalar_t>();
scalar_t *output_data = output.data_ptr<scalar_t>();
int64_t *indices_data = indices.data_ptr<int64_t>();
max_pool3d_with_indices_out_frame(
input_data,
output_data,
indices_data,
nbatch,
nslices,
istride, ostride,
itime, iwidth, iheight,
otime, owidth, oheight,
kT, kW, kH,
dT, dW, dH,
pT, pW, pH,
dilationT, dilationW, dilationH);
}
);
}
}
template <typename scalar_t>
static void max_pool3d_with_indices_backward_single_out_frame(
scalar_t *gradInput_p,
scalar_t *gradOutput_p,
int64_t *indz_p,
int64_t nslices,
int64_t itime,
int64_t iwidth,
int64_t iheight,
int64_t otime,
int64_t owidth,
int64_t oheight,
int dT,
int dW,
int dH,
int pT,
int pW,
int pH,
int dilationT,
int dilationW,
int dilationH)
{
at::parallel_for(0, nslices, 0, [&](int64_t start, int64_t end) {
for (auto k = start; k < end; k++)
{
scalar_t *gradInput_p_k = gradInput_p + k * itime * iwidth * iheight;
scalar_t *gradOutput_p_k = gradOutput_p + k * otime * owidth * oheight;
int64_t *indz_p_k = indz_p + k * otime * owidth * oheight;
/* calculate max points */
int64_t ti, i, j;
for (ti = 0; ti < otime; ti++)
{
for (i = 0; i < oheight; i++)
{
for (j = 0; j < owidth; j++)
{
/* retrieve position of max */
int64_t index = ti * oheight * owidth + i * owidth + j;
int64_t maxp = indz_p_k[index];
if (maxp != -1) {
/* update gradient */
gradInput_p_k[maxp] += gradOutput_p_k[index];
}
}
}
}
}
});
}
template <typename scalar_t>
static void max_pool3d_with_indices_backward_out_frame(
scalar_t *gradInput_data,
scalar_t *gradOutput_data,
int64_t *indices_data,
int64_t nbatch,
int64_t nslices,
int64_t istride, int64_t ostride,
int64_t itime, int64_t iwidth, int64_t iheight,
int64_t otime, int64_t owidth, int64_t oheight,
int dT, int dW, int dH,
int pT, int pW, int pH,
int dilationT, int dilationW, int dilationH)
{
at::parallel_for(0, nbatch, 0, [&](int64_t start, int64_t end) {
for (auto p = start; p < end; p++)
{
max_pool3d_with_indices_backward_single_out_frame<scalar_t>(
gradInput_data + p * istride,
gradOutput_data + p * ostride,
indices_data + p * ostride,
nslices,
itime, iwidth, iheight,
otime, owidth, oheight,
dT, dW, dH,
pT, pW, pH,
dilationT, dilationW, dilationH
);
}
});
}
Tensor& max_pool3d_with_indices_backward_out_cpu_template(
Tensor& gradInput,
const Tensor& gradOutput_,
const Tensor& input,
const Tensor& indices,
IntArrayRef kernel_size,
IntArrayRef stride,
IntArrayRef padding,
IntArrayRef dilation,
bool ceil_mode)
{
// #20866, #22032: Guarantee this for the official C++ API?
TORCH_CHECK(kernel_size.size() == 1 || kernel_size.size() == 3,
"max_pool3d: kernel_size must either be a single int, or a tuple of three ints")
const int kT = safe_downcast<int, int64_t>(kernel_size[0]);
const int kH = kernel_size.size() == 1 ? kT : safe_downcast<int, int64_t>(kernel_size[1]);
const int kW = kernel_size.size() == 1 ? kT : safe_downcast<int, int64_t>(kernel_size[2]);
TORCH_CHECK(stride.size() == 0 || stride.size() == 1 || stride.size() == 3,
"max_pool3d: stride must either be omitted, a single int, or a tuple of three ints")
const int dT = stride.empty() ? kT : safe_downcast<int, int64_t>(stride[0]);
const int dH = stride.empty() ? kH :
stride.size() == 1 ? dT : safe_downcast<int, int64_t>(stride[1]);
const int dW = stride.empty() ? kW :
stride.size() == 1 ? dT : safe_downcast<int, int64_t>(stride[2]);
TORCH_CHECK(padding.size() == 1 || padding.size() == 3,
"max_pool3d: padding must be either be a single int, or a tuple of three ints");
const int pT = safe_downcast<int, int64_t>(padding[0]);
const int pH = padding.size() == 1 ? pT : safe_downcast<int, int64_t>(padding[1]);
const int pW = padding.size() == 1 ? pT : safe_downcast<int, int64_t>(padding[2]);
TORCH_CHECK(dilation.size() == 1 || dilation.size() == 3,
"max_pool3d: dilation must be either a single int, or a tuple of three ints");
const int dilationT = safe_downcast<int, int64_t>(dilation[0]);
const int dilationH = dilation.size() == 1 ? dilationT : safe_downcast<int, int64_t>(dilation[1]);
const int dilationW = dilation.size() == 1 ? dilationT : safe_downcast<int, int64_t>(dilation[2]);
TORCH_CHECK((input.ndimension() == 4 || input.ndimension() == 5),
"non-empty 4D or 5D (batch mode) tensor expected for input");
const int64_t nslices = input.size(-4);
const int64_t itime = input.size(-3);
const int64_t iheight = input.size(-2);
const int64_t iwidth = input.size(-1);
/* get contiguous gradOutput */
Tensor gradOutput = gradOutput_.contiguous();
/* resize */
gradInput.resize_as_(input);
gradInput.zero_();
const int64_t otime = gradOutput.size(-3);
const int64_t oheight = gradOutput.size(-2);
const int64_t owidth = gradOutput.size(-1);
max_pool3d_backward_shape_check(
input,
gradOutput,
indices,
nslices,
kT, kH, kW,
dT, dH, dW,
pT, pH, pW,
dilationT, dilationH, dilationW,
itime, iheight, iwidth,
otime, oheight, owidth);
/* backprop */
if (input.ndimension() == 4) /* non-batch mode*/
{
AT_DISPATCH_FLOATING_TYPES(input.scalar_type(),
"max_pool3d_with_indices_backward",
[&] {
/* get raw pointers */
scalar_t *gradInput_data = gradInput.data_ptr<scalar_t>();
scalar_t *gradOutput_data = gradOutput.data_ptr<scalar_t>();
int64_t *indices_data = indices.data_ptr<int64_t>();
max_pool3d_with_indices_backward_single_out_frame(
gradInput_data, gradOutput_data,
indices_data,
nslices,
itime, iwidth, iheight,
otime, owidth, oheight,
dT, dW, dH,
pT, pW, pH,
dilationT, dilationW, dilationH);
}
);
}
else /* batch mode */
{
const int64_t nbatch = input.size(0);
const int64_t istride = nslices * itime * iwidth * iheight;
const int64_t ostride = nslices * otime * owidth * oheight;
AT_DISPATCH_FLOATING_TYPES(input.scalar_type(),
"max_pool3d_with_indices_backward",
[&] {
scalar_t *gradInput_data = gradInput.data_ptr<scalar_t>();
scalar_t *gradOutput_data = gradOutput.data_ptr<scalar_t>();
int64_t *indices_data = indices.data_ptr<int64_t>();
max_pool3d_with_indices_backward_out_frame<scalar_t>(
gradInput_data,
gradOutput_data,
indices_data,
nbatch,
nslices,
istride, ostride,
itime, iwidth, iheight,
otime, owidth, oheight,
dT, dW, dH,
pT, pW, pH,
dilationT, dilationW, dilationH);
}
);
}
return gradInput;
}
} // namespace
std::tuple<Tensor&, Tensor&> max_pool3d_with_indices_out_cpu(
Tensor& output,
Tensor& indices,
const Tensor& input,
IntArrayRef kernel_size,
IntArrayRef stride,
IntArrayRef padding,
IntArrayRef dilation,
bool ceil_mode)
{
max_pool3d_with_indices_out_cpu_template(
output,
indices,
input,
kernel_size,
stride,
padding,
dilation,
ceil_mode);
return std::tuple<Tensor&, Tensor&>(output, indices);
}
std::tuple<Tensor, Tensor> max_pool3d_with_indices_cpu(
const Tensor& input,
IntArrayRef kernel_size,
IntArrayRef stride,
IntArrayRef padding,
IntArrayRef dilation,
bool ceil_mode)
{
NoNamesGuard guard;
Tensor output = at::empty({0}, input.options());
Tensor indices = at::empty({0}, input.options().dtype(kLong));
max_pool3d_with_indices_out_cpu_template(
output,
indices,
input,
kernel_size,
stride,
padding,
dilation,
ceil_mode);
guard.reset();
namedinference::propagate_names(output, input);
namedinference::propagate_names(indices, input);
return std::tuple<Tensor, Tensor>(output, indices);
}
Tensor& max_pool3d_with_indices_backward_out_cpu(
Tensor& gradInput,
const Tensor& gradOutput_,
const Tensor& input,
IntArrayRef kernel_size,
IntArrayRef stride,
IntArrayRef padding,
IntArrayRef dilation,
bool ceil_mode,
const Tensor& indices)
{
max_pool3d_with_indices_backward_out_cpu_template(
gradInput,
gradOutput_,
input,
indices,
kernel_size,
stride,
padding,
dilation,
ceil_mode);
return gradInput;
}
Tensor max_pool3d_with_indices_backward_cpu(
const Tensor& gradOutput_,
const Tensor& input,
IntArrayRef kernel_size,
IntArrayRef stride,
IntArrayRef padding,
IntArrayRef dilation,
bool ceil_mode,
const Tensor& indices)
{
auto gradInput = at::zeros_like(input, LEGACY_CONTIGUOUS_MEMORY_FORMAT);
max_pool3d_with_indices_backward_out_cpu_template(
gradInput,
gradOutput_,
input,
indices,
kernel_size,
stride,
padding,
dilation,
ceil_mode);
return gradInput;
}
} // at::native
} // at