289 lines
11 KiB
C++
289 lines
11 KiB
C++
// Copyright (c) 2022 PaddlePaddle Authors. All Rights Reserved.
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//
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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#include "paddle/phi/kernels/box_coder_kernel.h"
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#include <array>
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#include "paddle/phi/backends/cpu/cpu_context.h"
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#include "paddle/phi/core/kernel_registry.h"
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#include "paddle/phi/kernels/full_kernel.h"
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#include "paddle/phi/kernels/funcs/math_function.h"
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#include "paddle/phi/kernels/impl/box_coder.h"
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namespace phi {
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template <typename T>
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void EncodeCenterSize(const DenseTensor *target_box,
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const DenseTensor *prior_box,
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const DenseTensor *prior_box_var,
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const bool normalized,
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const std::vector<float> variance,
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T *output) {
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int64_t row = target_box->dims()[0];
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int64_t col = prior_box->dims()[0];
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int64_t len = prior_box->dims()[1];
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#ifdef PADDLE_WITH_MKLML
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#pragma omp parallel for collapse(2)
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#endif
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for (int64_t i = 0; i < row; ++i) {
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for (int64_t j = 0; j < col; ++j) {
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auto *target_box_data = target_box->data<T>();
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auto *prior_box_data = prior_box->data<T>();
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size_t offset = i * col * len + j * len;
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T prior_box_width = prior_box_data[j * len + 2] -
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prior_box_data[j * len] + (normalized == false);
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T prior_box_height = prior_box_data[j * len + 3] -
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prior_box_data[j * len + 1] + (normalized == false);
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T prior_box_center_x = prior_box_data[j * len] + prior_box_width / 2;
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T prior_box_center_y = prior_box_data[j * len + 1] + prior_box_height / 2;
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T target_box_center_x =
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(target_box_data[i * len + 2] + target_box_data[i * len]) / 2;
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T target_box_center_y =
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(target_box_data[i * len + 3] + target_box_data[i * len + 1]) / 2;
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T target_box_width = target_box_data[i * len + 2] -
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target_box_data[i * len] + (normalized == false);
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T target_box_height = target_box_data[i * len + 3] -
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target_box_data[i * len + 1] +
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(normalized == false);
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output[offset] =
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(target_box_center_x - prior_box_center_x) / prior_box_width;
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output[offset + 1] =
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(target_box_center_y - prior_box_center_y) / prior_box_height;
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output[offset + 2] =
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std::log(std::fabs(target_box_width / prior_box_width));
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output[offset + 3] =
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std::log(std::fabs(target_box_height / prior_box_height));
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}
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}
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if (prior_box_var) {
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const T *prior_box_var_data = prior_box_var->data<T>();
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#ifdef PADDLE_WITH_MKLML
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#pragma omp parallel for collapse(3)
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#endif
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for (int64_t i = 0; i < row; ++i) {
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for (int64_t j = 0; j < col; ++j) {
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for (int k = 0; k < 4; ++k) {
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size_t offset = i * col * len + j * len;
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int prior_var_offset = static_cast<int>(j * len);
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output[offset + k] /= prior_box_var_data[prior_var_offset + k];
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}
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}
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}
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} else if (!(variance.empty())) {
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#ifdef PADDLE_WITH_MKLML
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#pragma omp parallel for collapse(3)
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#endif
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for (int64_t i = 0; i < row; ++i) {
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for (int64_t j = 0; j < col; ++j) {
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for (int k = 0; k < 4; ++k) {
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size_t offset = i * col * len + j * len;
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output[offset + k] /= static_cast<T>(variance[k]);
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}
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}
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}
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}
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}
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template <typename T, int axis, int var_size>
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void DecodeCenterSize(const DenseTensor *target_box,
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const DenseTensor *prior_box,
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const DenseTensor *prior_box_var,
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const bool normalized,
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std::vector<float> variance,
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T *output) {
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int64_t row = target_box->dims()[0];
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int64_t col = target_box->dims()[1];
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int64_t len = target_box->dims()[2];
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#ifdef PADDLE_WITH_MKLML
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#pragma omp parallel for collapse(2)
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#endif
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for (int64_t i = 0; i < row; ++i) {
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for (int64_t j = 0; j < col; ++j) {
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auto *target_box_data = target_box->data<T>();
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auto *prior_box_data = prior_box->data<T>();
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std::array<T, 4> var_data{1., 1., 1., 1.};
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T *var_ptr = var_data.data();
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size_t offset = i * col * len + j * len;
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int prior_box_offset = axis == 0 ? j * len : i * len;
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T prior_box_width = prior_box_data[prior_box_offset + 2] -
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prior_box_data[prior_box_offset] +
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(normalized == false);
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T prior_box_height = prior_box_data[prior_box_offset + 3] -
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prior_box_data[prior_box_offset + 1] +
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(normalized == false);
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T prior_box_center_x =
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prior_box_data[prior_box_offset] + prior_box_width / 2;
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T prior_box_center_y =
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prior_box_data[prior_box_offset + 1] + prior_box_height / 2;
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T target_box_center_x = 0, target_box_center_y = 0;
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T target_box_width = 0, target_box_height = 0;
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int prior_var_offset = axis == 0 ? j * len : i * len;
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if (var_size == 2) {
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std::memcpy(var_ptr,
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prior_box_var->data<T>() + prior_var_offset,
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4 * sizeof(T));
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} else if (var_size == 1) {
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var_ptr = reinterpret_cast<T *>(variance.data());
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}
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T box_var_x = *var_ptr;
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T box_var_y = *(var_ptr + 1);
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T box_var_w = *(var_ptr + 2);
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T box_var_h = *(var_ptr + 3);
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target_box_center_x =
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box_var_x * target_box_data[offset] * prior_box_width +
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prior_box_center_x;
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target_box_center_y =
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box_var_y * target_box_data[offset + 1] * prior_box_height +
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prior_box_center_y;
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target_box_width =
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std::exp(box_var_w * target_box_data[offset + 2]) * prior_box_width;
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target_box_height =
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std::exp(box_var_h * target_box_data[offset + 3]) * prior_box_height;
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output[offset] = target_box_center_x - target_box_width / 2;
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output[offset + 1] = target_box_center_y - target_box_height / 2;
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output[offset + 2] =
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target_box_center_x + target_box_width / 2 - (normalized == false);
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output[offset + 3] =
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target_box_center_y + target_box_height / 2 - (normalized == false);
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}
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}
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}
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template <typename T, typename Context>
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void BoxCoderKernel(const Context &dev_ctx,
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const DenseTensor &prior_box,
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const optional<DenseTensor> &prior_box_var,
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const DenseTensor &target_box,
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const std::string &code_type_str,
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bool normalized,
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int axis,
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const std::vector<float> &variance,
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DenseTensor *output_box) {
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// prior_box and prior_box_var have the same shape, so do not judge
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// prior_box_var
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if (prior_box.numel() == 0 || target_box.numel() == 0) {
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Full<T, Context>(dev_ctx, output_box->dims(), 0, output_box);
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return;
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}
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if (!target_box.lod().empty()) {
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PADDLE_ENFORCE_EQ(target_box.lod().size(),
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1UL,
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common::errors::InvalidArgument(
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"Input(TargetBox) of BoxCoder operator "
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"supports LoD with only one level. But received "
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"level = %d",
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target_box.lod().size()));
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}
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if (prior_box_var) {
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PADDLE_ENFORCE_EQ(variance.empty(),
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true,
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common::errors::InvalidArgument(
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"Input 'PriorBoxVar' and attribute 'variance' "
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"of BoxCoder operator should not be used at the "
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"same time."));
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}
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if (!(variance.empty())) {
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PADDLE_ENFORCE_EQ(static_cast<int>(variance.size()),
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4,
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common::errors::InvalidArgument(
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"Size of attribute 'variance' of BoxCoder "
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"operator should be 4. But received "
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"size = %d",
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variance.size()));
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}
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auto code_type = funcs::GetBoxCodeType(code_type_str);
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auto row = target_box.dims()[0];
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auto col = prior_box.dims()[0];
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if (code_type == funcs::BoxCodeType::kDecodeCenterSize) {
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col = target_box.dims()[1];
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}
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auto len = prior_box.dims()[1];
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output_box->Resize({row, col, len});
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dev_ctx.template Alloc<T>(output_box);
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T *output = output_box->data<T>();
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if (code_type == funcs::BoxCodeType::kEncodeCenterSize) {
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EncodeCenterSize<T>(&target_box,
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&prior_box,
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prior_box_var.get_ptr(),
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normalized,
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variance,
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output);
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} else if (code_type == funcs::BoxCodeType::kDecodeCenterSize) {
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if (prior_box_var) {
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if (axis == 0) {
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DecodeCenterSize<T, 0, 2>(&target_box,
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&prior_box,
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prior_box_var.get_ptr(),
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normalized,
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variance,
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output);
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} else {
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DecodeCenterSize<T, 1, 2>(&target_box,
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&prior_box,
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prior_box_var.get_ptr(),
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normalized,
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variance,
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output);
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}
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} else if (!(variance.empty())) {
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if (axis == 0) {
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DecodeCenterSize<T, 0, 1>(&target_box,
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&prior_box,
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prior_box_var.get_ptr(),
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normalized,
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variance,
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output);
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} else {
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DecodeCenterSize<T, 1, 1>(&target_box,
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&prior_box,
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prior_box_var.get_ptr(),
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normalized,
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variance,
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output);
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}
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} else {
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if (axis == 0) {
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DecodeCenterSize<T, 0, 0>(&target_box,
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&prior_box,
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prior_box_var.get_ptr(),
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normalized,
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variance,
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output);
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} else {
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DecodeCenterSize<T, 1, 0>(&target_box,
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&prior_box,
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prior_box_var.get_ptr(),
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normalized,
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variance,
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output);
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}
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}
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}
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}
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} // namespace phi
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PD_REGISTER_KERNEL(
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box_coder, CPU, ALL_LAYOUT, phi::BoxCoderKernel, float, double) {}
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