/* Copyright (c) 2016 Baidu, Inc. All Rights Reserve. Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 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. */ #ifndef HL_CNN_H_ #define HL_CNN_H_ #include "hl_base.h" /** * @brief Shrink column to feature. * * @param[in] dataCol expand data. * @param[in] channels number of channel. * @param[in] height image height. * @param[in] width image width. * @param[in] blockH filter height. * @param[in] blockW filter width. * @param[in] strideH stride height. * @param[in] strideW stride width. * @param[in] paddingH padding height. * @param[in] paddingW padding width. * @param[in] outputH output height. * @param[in] outputW output width. * @param[out] dataIm output image data. * @param[in] alpha * @param[in] beta */ extern void hl_shrink_col2feature( const real * dataCol, size_t channels, size_t height, size_t width, size_t blockH, size_t blockW, size_t strideH, size_t strideW, size_t paddingH, size_t paddingW, size_t outputH, size_t outputW, real* dataIm, real alpha = 1.0f, real beta = 0.0f); /** * @brief Expand feature to column. * * @param[in] dataIm input image data. * @param[in] channels number of channel. * @param[in] height image height. * @param[in] width image width. * @param[in] blockH filter height. * @param[in] blockW filter width. * @param[in] strideH stride height. * @param[in] strideW stride width. * @param[in] paddingH padding height. * @param[in] paddingW padding width. * @param[in] outputH output height. * @param[in] outputW output width. * @param[out] dataCol expand data. * */ extern void hl_expand_feature2col( const real* dataIm, size_t channels, size_t height, size_t width, size_t blockH, size_t blockW, size_t strideH, size_t strideW, size_t paddingH, size_t paddingW, size_t outputH, size_t outputW, real* dataCol); /** * @brief Maximum pool forward. * * @param[in] frameCnt batch size of input image. * @param[in] inputData input data. * @param[in] channels number of channel. * @param[in] height image height. * @param[in] width image width. * @param[in] pooledH output image height. * @param[in] pooledW output image width. * @param[in] sizeX width of pooling window. * @param[in] sizeY height of pooling window. * @param[in] strideH pooling stride height. * @param[in] strideW pooling stride width. * @param[in] paddingH padding height. * @param[in] paddingW padding width. * @param[out] tgtData output data. * */ extern void hl_maxpool_forward( const int frameCnt, const real* inputData, const int channels, const int height, const int width, const int pooledH, const int pooledW, const int sizeX, const int sizeY, const int strideH, const int strideW, const int paddingH, const int paddingW, real* tgtData); /** * @brief Maximum pool backward. * * @param[in] frameCnt batch size of input image. * @param[in] inputData input data. * @param[out] outData output data. * @param[out] outGrad output grad data. * @param[in] channels number of channel. * @param[in] height image height. * @param[in] width image width. * @param[in] pooledH output image height. * @param[in] pooledW output image width. * @param[in] sizeX width of pooling window. * @param[in] sizeY height of pooling window. * @param[in] strideH pooling stride height. * @param[in] strideW pooling stride width. * @param[in] scaleA scale. * @param[in] scaleB scale. * @param[in] paddingH padding height. * @param[in] paddingW padding width. * @param[out] targetGrad output grad. * */ extern void hl_maxpool_backward( const int frameCnt, const real* inputData, const real* outData, const real* outGrad, const int channels, const int height, const int width, const int pooledH, const int pooledW, const int sizeX, const int sizeY, const int strideH, const int strideW, const int paddingH, const int paddingW, real scaleA, real scaleB, real* targetGrad); /** * @brief Averge pool forward. * * @param[in] frameCnt batch size of input image. * @param[in] inputData input data. * @param[in] channels number of channel. * @param[in] height image height. * @param[in] width image width. * @param[in] pooledH output image height. * @param[in] pooledW output image width. * @param[in] sizeX width of pooling window. * @param[in] sizeY height of pooling window. * @param[in] strideH pooling stride height. * @param[in] strideW pooling stride width. * @param[in] paddingH padding height. * @param[in] paddingW padding width. * @param[out] tgtData output data. * */ extern void hl_avgpool_forward( const int frameCnt, const real* inputData, const int channels, const int height, const int width, const int pooledH, const int pooledW, const int sizeX, const int sizeY, const int strideH, const int strideW, const int paddingH, const int paddingW, real* tgtData); /** * @brief Maximum pool backward. * * @param[in] frameCnt batch size of input image. * @param[in] outGrad output grad data. * @param[in] channels number of channel. * @param[in] height image height. * @param[in] width image width. * @param[in] pooledH output image height. * @param[in] pooledW output image width. * @param[in] sizeX width of pooling window. * @param[in] sizeY height of pooling window. * @param[in] strideH pooling stride height. * @param[in] strideW pooling stride width. * @param[in] paddingH padding height. * @param[in] paddingW padding width. * @param[in] scaleA scale. * @param[in] scaleB scale. * @param[out] backGrad output grad. * */ extern void hl_avgpool_backward( const int frameCnt, const real* outGrad, const int channels, const int height, const int width, const int pooledH, const int pooledW, const int sizeX, const int sizeY, const int strideH, const int strideW, int paddingH, int paddingW, real scaleA, real scaleB, real* backGrad); /** * @brief Cross-map-respose normalize forward. * * @param[in] frameCnt batch size of input image. * @param[in] in input data. * @param[in] scale buffer. * @param[out] out output data. * @param[in] channels number of channel. * @param[in] height image height. * @param[in] width image width. * @param[in] sizeX size. * @param[in] alpha scale. * @param[in] beta scale. * */ extern void hl_CMRNorm_forward( size_t frameCnt, const real* in, real* scale, real* out, size_t channels, size_t height, size_t width, size_t sizeX, real alpha, real beta); /** * @brief Cross-map-respose normalize backward. * * @param[in] frameCnt batch size of input image. * @param[in] inV input data. * @param[in] scale buffer. * @param[out] outV output value. * @param[out] outDiff output grad. * @param[out] inDiff input grad. * @param[in] channels number of channel. * @param[in] height image height. * @param[in] width image width. * @param[in] sizeX size. * @param[in] alpha scale. * @param[in] beta scale. * */ extern void hl_CMRNorm_backward( size_t frameCnt, const real* inV, const real* scale, const real* outV, const real* outDiff, real *inDiff, size_t channels, size_t height, size_t width, size_t sizeX, real alpha, real beta); /** * @brief Bilinear interpolation forward. * * @param[in] inData input value. * @param[in] inImgH input image height. * @param[in] inImgW input image width. * @param[in] inputH input batchSize. * @param[in] inputW input image data dim. * @param[out] outData output value. * @param[in] outImgH output image height. * @param[in] outImgW output image width. * @param[in] outputH output batchSize. * @param[in] outputW output image data dim. * @param[in] numChannels number of channels. * */ extern void hl_bilinear_forward(const real* inData, const size_t inImgH, const size_t inImgW, const size_t inputH, const size_t inputW, real* outData, const size_t outImgH, const size_t outImgW, const size_t outputH, const size_t outputW, const size_t numChannels); /** * @brief Bilinear interpolation backward. * * @param[out] inGrad input gradient. * @param[in] inImgH input image height. * @param[in] inImgW input image width. * @param[in] inputH input batchSize. * @param[in] inputW input image data dim. * @param[in] outGrad output gradient. * @param[in] outImgH output image height. * @param[in] outImgW output image width. * @param[in] outputH output batchSize. * @param[in] outputW output image data dim. * @param[in] numChannels number of channels. * */ extern void hl_bilinear_backward(real* inGrad, const size_t inImgH, const size_t inImgW, const size_t inputH, const size_t inputW, const real* outGrad, const size_t outImgH, const size_t outImgW, const size_t outputH, const size_t outputW, const size_t numChannels); /** * @brief MaxOut forward. * * @param[in] inData input data. * @param[out] outData output data. * @param[out] idData output maxId. * @param[in] batchSize batchSize. * @param[in] size number of channels * image height * image width. * @param[in] featLen feature length = image height * image width. * @param[in] groups number of groups. */ extern void hl_maxout_forward( const real* inData, real* outData, int* idData, size_t batchSize, size_t size, size_t featLen, size_t groups); /** * @brief MaxOut backward. * * @param[out] inGrad input grad data. * @param[in] outGrad output grad data. * @param[in] idData output maxId. * @param[in] batchSize batchSize. * @param[in] size number of channels * image height * image width. * @param[in] featLen feature length = image height * image width. * @param[in] groups number of groups. */ extern void hl_maxout_backward( real* inGrad, const real* outGrad, const int* idData, size_t batchSize, size_t size, size_t featLen, size_t groups); #endif /* HL_CNN_H_ */