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deeplearning4j--deeplearning4j/libnd4j/include/ops/declarable/generic/nn/pooling/avgpool2d.cpp
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/* ******************************************************************************
*
*
* This program and the accompanying materials are made available under the
* terms of the Apache License, Version 2.0 which is available at
* https://www.apache.org/licenses/LICENSE-2.0.
*
* See the NOTICE file distributed with this work for additional
* information regarding copyright ownership.
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS, WITHOUT
* WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the
* License for the specific language governing permissions and limitations
* under the License.
*
* SPDX-License-Identifier: Apache-2.0
******************************************************************************/
//
// @author raver119@gmail.com, created on 29/10/17.
// @author Yurii Shyrma (iuriish@yahoo.com), changed on 14.05.2018
//
#include <system/op_boilerplate.h>
#if NOT_EXCLUDED(OP_avgpool2d)
#include <ops/declarable/CustomOperations.h>
#include <ops/declarable/helpers/convolutions.h>
namespace sd {
namespace ops {
CUSTOM_OP_IMPL(avgpool2d, 1, 1, false, 0, 10) {
auto input = INPUT_VARIABLE(0);
auto output = OUTPUT_NULLIFIED(0);
// 0,1 - kernel Height/Width; 2,3 - stride Height/Width; 4,5 - pad Height/Width; 6,7 - dilation Height/Width; 8 - same
// mode;
const LongType kH = INT_ARG(0);
const LongType kW = INT_ARG(1);
const LongType sH = INT_ARG(2);
const LongType sW = INT_ARG(3);
LongType pH = INT_ARG(4);
LongType pW = INT_ARG(5);
const LongType dH = INT_ARG(6);
const LongType dW = INT_ARG(7);
const auto isSameMode = static_cast<bool>(INT_ARG(8));
const auto extraParam0 = INT_ARG(9);
const int isNCHW = block.getIArguments()->size() > 10 ? !INT_ARG(10) : 1; // INT_ARG(10): 0-NCHW, 1-NHWC
REQUIRE_TRUE(input->rankOf() == 4, 0, "AVGPOOL2D op: input should have rank of 4, but got %i instead",
input->rankOf());
REQUIRE_TRUE(dH != 0 && dW != 0, 0, "AVGPOOL2D op: dilation must not be zero, but got instead {%i, %i}", dH, dW);
LongType oH = 0;
LongType oW = 0;
const LongType iH = static_cast<LongType>(isNCHW ? input->sizeAt(2) : input->sizeAt(1));
const LongType iW = static_cast<LongType>(isNCHW ? input->sizeAt(3) : input->sizeAt(2));
if (!isNCHW) {
std::vector<sd::LongType> perm = {0,3,1,2};
input = input->permute(perm, false, false); // [bS, iH, iW, iC] -> [bS, iC, iH, iW] - permute() already returns NDArray*
output = output->permute(perm, false, false); // [bS, oH, oW, iC] -> [bS, iC, oH, oW] - permute() already returns NDArray*
}
ConvolutionUtils::calcOutSizePool2D(oH, oW, kH, kW, sH, sW, pH, pW, dH, dW, iH, iW, isSameMode);
if (isSameMode) ConvolutionUtils::calcPadding2D(pH, pW, oH, oW, iH, iW, kH, kW, sH, sW, dH, dW);
// 0,1 - kernel Height/Width; 2,3 - stride Height/Width; 4,5 - pad Height/Width; 6,7 - dilation Height/Width; 8 -
// poolingMode; 9 - divisor;
ConvolutionUtils::pooling2d(block, *input, *output, kH, kW, sH, sW, pH, pW, dH, dW, AVG_POOL,
extraParam0);
if (!isNCHW) {
delete input;
delete output;
}
return Status::OK;
}
DECLARE_SYN(AvgPool2D, avgpool2d);
DECLARE_SYN(AvgPool, avgpool2d);
DECLARE_SYN(avgpool, avgpool2d);
DECLARE_TYPES(avgpool2d) {
getOpDescriptor()->setAllowedInputTypes(ANY)->setAllowedOutputTypes({ALL_FLOATS});
}
DECLARE_SHAPE_FN(avgpool2d) {
auto inShape = inputShape->at(0);
auto shapeOf = shape::shapeOf(inShape);
// 0,1 - kernel Height/Width; 2,3 - stride Height/Width; 4,5 - pad Height/Width; 6,7 - dilation Height/Width; 8 - same
// mode;
const LongType kH = INT_ARG(0);
const LongType kW = INT_ARG(1);
const LongType sH = INT_ARG(2);
const LongType sW = INT_ARG(3);
const LongType pH = INT_ARG(4);
const LongType pW = INT_ARG(5);
const LongType dH = INT_ARG(6);
const LongType dW = INT_ARG(7);
const int isSameMode = INT_ARG(8);
const int isNCHW = block.getIArguments()->size() > 10 ? !INT_ARG(10) : 1; // INT_ARG(10): 0-NCHW, 1-NHWC
REQUIRE_TRUE(dH != 0 && dW != 0, 0, "AVGPOOL2D op: dilation must not be zero, but got instead {%i, %i}", dH, dW);
const LongType bS = shapeOf[0];
const LongType iD = isNCHW ? shapeOf[1] : shapeOf[3];
const LongType iH = isNCHW ? shapeOf[2] : shapeOf[1];
const LongType iW = isNCHW ? shapeOf[3] : shapeOf[2];
const char order = shape::order(inShape); // output order must be equal to input order
// calculate output Height/Width
LongType oH, oW;
ConvolutionUtils::calcOutSizePool2D(oH, oW, kH, kW, sH, sW, pH, pW, dH, dW, iH, iW, isSameMode);
// allocate memory for new shape
LongType *newShape = new LongType[4];
if (isNCHW) {
newShape[0] = bS;
newShape[1] = iD;
newShape[2] = oH;
newShape[3] = oW;
} else {
newShape[0] = bS;
newShape[1] = oH;
newShape[2] = oW;
newShape[3] = iD;
}
auto ret = SHAPELIST(ConstantShapeHelper::getInstance().bufferForShapeInfo(ArrayOptions::dataType(inShape),
shape::order(inShape),
4,
newShape)->primary());
delete[] newShape;
return ret;
}
DECLARE_TYPES(avgpool2d_bp) {
getOpDescriptor()->setAllowedInputTypes(ANY)->setAllowedOutputTypes({ALL_FLOATS});
}
//////////////////////////////////////////////////////////////////////////
CUSTOM_OP_IMPL(avgpool2d_bp, 2, 1, false, 0, 10) {
auto input = INPUT_VARIABLE(0); // [bS, iH, iW, iC] (NHWC) or [bS, iC, iH, iW] (NCHW)
auto gradO = INPUT_VARIABLE(1); // [bS, oH, oW, oC] (NHWC) or [bS, oC, oH, oW] (NCHW), epsilon_next
auto gradI = OUTPUT_NULLIFIED(0); // [bS, iH, iW, iC] (NHWC) or [bS, iC, iH, iW] (NCHW), epsilon
LongType kH = INT_ARG(0); // filter(kernel) height
LongType kW = INT_ARG(1); // filter(kernel) width
LongType sH = INT_ARG(2); // strides height
LongType sW = INT_ARG(3); // strides width
LongType pH = INT_ARG(4); // paddings height
LongType pW = INT_ARG(5); // paddings width
LongType dH = INT_ARG(6); // dilations height
LongType dW = INT_ARG(7); // dilations width
int isSameMode = INT_ARG(8); // 0-VALID, 1-SAME
int extraParam0 = INT_ARG(9);
int isNCHW = block.getIArguments()->size() > 10 ? !INT_ARG(10) : 1; // INT_ARG(10): 0-NCHW, 1-NHWC
REQUIRE_TRUE(input->rankOf() == 4, 0, "AVGPOOL2D_BP op: input should have rank of 4, but got %i instead",
input->rankOf());
REQUIRE_TRUE(dH != 0 && dW != 0, 0, "AVGPOOL2D_BP op: dilation must not be zero, but got instead {%i, %i}", dH, dW);
LongType bS, iC, iH, iW, oC, oH,
oW; // batch size, input channels, input height/width, output channels, output height/width;
LongType indIOioC, indIiH, indWoC, indWiC, indWkH, indOoH; // corresponding indexes
ConvolutionUtils::getSizesAndIndexesConv2d(isNCHW, 0, *input, *gradO, bS, iC, iH, iW, oC, oH, oW, indIOioC, indIiH,
indWiC, indWoC, indWkH, indOoH);
std::vector<LongType> expectedGradOShape =
ShapeUtils::composeShapeUsingDimsAndIdx({bS, iC, oH, oW, 0, indIOioC, indIiH, indIiH + 1});
std::vector<LongType> expectedGradIShape =
ShapeUtils::composeShapeUsingDimsAndIdx({bS, iC, iH, iW, 0, indIOioC, indIiH, indIiH + 1});
REQUIRE_TRUE(
gradO->isSameShape(expectedGradOShape), 0,
"AVGPOOL2D_BP op: wrong shape of output's gradients array (next epsilon), expected is %s, but got %s instead !",
ShapeUtils::shapeAsString(expectedGradOShape).c_str(), ShapeUtils::shapeAsString(gradO).c_str());
REQUIRE_TRUE(
gradI->isSameShape(expectedGradIShape), 0,
"AVGPOOL2D_BP op: wrong shape of input's gradients array (epsilon), expected is %s, but got %s instead !",
ShapeUtils::shapeAsString(expectedGradIShape).c_str(), ShapeUtils::shapeAsString(gradI).c_str());
if (!isNCHW) {
std::vector<sd::LongType> perm = {0,3,1,2};
input = input->permute(perm, false, false); // [bS, iH, iW, iC] -> [bS, iC, iH, iW] - permute() already returns NDArray*
gradI = gradI->permute(perm, false, false); // [bS, iH, iW, iC] -> [bS, iC, iH, iW] - permute() already returns NDArray*
gradO = gradO->permute(perm, false, false); // [bS, oH, oW, iC] -> [bS, iC, oH, oW] - permute() already returns NDArray*
}
if (isSameMode) // SAME
ConvolutionUtils::calcPadding2D(pH, pW, oH, oW, iH, iW, kH, kW, sH, sW, dH, dW);
// 0,1 - kernel Height/Width; 2,3 - stride Height/Width; 4,5 - pad Height/Width; 6,7 - dilation Height/Width; 8 -
// poolingMode; 9 - divisor;
ConvolutionUtils::pooling2dBP(block, *input, *gradO, *gradI, kH, kW, sH, sW, pH, pW, dH, dW, 1, extraParam0);
if (!isNCHW) {
delete input;
delete gradI;
delete gradO;
}
return Status::OK;
}
DECLARE_SHAPE_FN(avgpool2d_bp) {
REQUIRE_TRUE(inputShape->at(0)[0] == 4, 0, "AVGPOOL2D_BP op: input array must be 4D, but got %i instead!",
inputShape->at(0)[0]);
REQUIRE_TRUE(inputShape->at(1)[0] == 4, 0,
"AVGPOOL2D_BP op: output's gradient array (next epsilon) must be 4D, but got %i instead!",
inputShape->at(1)[0]);
auto desc = new ShapeDescriptor(inputShape->at(0), ArrayOptions::dataType(inputShape->at(1)), false);
return SHAPELIST(ConstantShapeHelper::getInstance().createShapeInfo(desc));
}
} // namespace ops
} // namespace sd
#endif