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656 lines
23 KiB
656 lines
23 KiB
/*M/////////////////////////////////////////////////////////////////////////////////////// |
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// |
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// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING. |
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// By downloading, copying, installing or using the software you agree to this license. |
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// copy or use the software. |
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// License Agreement |
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// For Open Source Computer Vision Library |
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// Copyright (C) 2013, OpenCV Foundation, all rights reserved. |
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// Third party copyrights are property of their respective owners. |
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// Redistribution and use in source and binary forms, with or without modification, |
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// * Redistribution's in binary form must reproduce the above copyright notice, |
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// this list of conditions and the following disclaimer in the documentation |
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// * The name of the copyright holders may not be used to endorse or promote products |
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// derived from this software without specific prior written permission. |
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// This software is provided by the copyright holders and contributors "as is" and |
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//M*/ |
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#ifndef OPENCV_DNN_DNN_ALL_LAYERS_HPP |
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#define OPENCV_DNN_DNN_ALL_LAYERS_HPP |
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#include <opencv2/dnn.hpp> |
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namespace cv { |
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namespace dnn { |
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CV__DNN_EXPERIMENTAL_NS_BEGIN |
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//! @addtogroup dnn |
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//! @{ |
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/** @defgroup dnnLayerList Partial List of Implemented Layers |
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@{ |
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This subsection of dnn module contains information about built-in layers and their descriptions. |
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Classes listed here, in fact, provides C++ API for creating instances of built-in layers. |
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In addition to this way of layers instantiation, there is a more common factory API (see @ref dnnLayerFactory), it allows to create layers dynamically (by name) and register new ones. |
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You can use both API, but factory API is less convenient for native C++ programming and basically designed for use inside importers (see @ref readNetFromCaffe(), @ref readNetFromTorch(), @ref readNetFromTensorflow()). |
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Built-in layers partially reproduce functionality of corresponding Caffe and Torch7 layers. |
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In particular, the following layers and Caffe importer were tested to reproduce <a href="http://caffe.berkeleyvision.org/tutorial/layers.html">Caffe</a> functionality: |
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- Convolution |
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- Deconvolution |
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- Pooling |
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- InnerProduct |
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- TanH, ReLU, Sigmoid, BNLL, Power, AbsVal |
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- Softmax |
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- Reshape, Flatten, Slice, Split |
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- LRN |
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- MVN |
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- Dropout (since it does nothing on forward pass -)) |
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*/ |
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class CV_EXPORTS BlankLayer : public Layer |
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{ |
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public: |
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static Ptr<Layer> create(const LayerParams ¶ms); |
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}; |
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/** |
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* Constant layer produces the same data blob at an every forward pass. |
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*/ |
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class CV_EXPORTS ConstLayer : public Layer |
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{ |
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public: |
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static Ptr<Layer> create(const LayerParams ¶ms); |
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}; |
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//! LSTM recurrent layer |
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class CV_EXPORTS LSTMLayer : public Layer |
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{ |
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public: |
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/** Creates instance of LSTM layer */ |
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static Ptr<LSTMLayer> create(const LayerParams& params); |
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/** @deprecated Use LayerParams::blobs instead. |
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@brief Set trained weights for LSTM layer. |
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LSTM behavior on each step is defined by current input, previous output, previous cell state and learned weights. |
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Let @f$x_t@f$ be current input, @f$h_t@f$ be current output, @f$c_t@f$ be current state. |
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Than current output and current cell state is computed as follows: |
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@f{eqnarray*}{ |
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h_t &= o_t \odot tanh(c_t), \\ |
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c_t &= f_t \odot c_{t-1} + i_t \odot g_t, \\ |
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@f} |
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where @f$\odot@f$ is per-element multiply operation and @f$i_t, f_t, o_t, g_t@f$ is internal gates that are computed using learned weights. |
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Gates are computed as follows: |
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@f{eqnarray*}{ |
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i_t &= sigmoid&(W_{xi} x_t + W_{hi} h_{t-1} + b_i), \\ |
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f_t &= sigmoid&(W_{xf} x_t + W_{hf} h_{t-1} + b_f), \\ |
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o_t &= sigmoid&(W_{xo} x_t + W_{ho} h_{t-1} + b_o), \\ |
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g_t &= tanh &(W_{xg} x_t + W_{hg} h_{t-1} + b_g), \\ |
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@f} |
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where @f$W_{x?}@f$, @f$W_{h?}@f$ and @f$b_{?}@f$ are learned weights represented as matrices: |
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@f$W_{x?} \in R^{N_h \times N_x}@f$, @f$W_{h?} \in R^{N_h \times N_h}@f$, @f$b_? \in R^{N_h}@f$. |
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For simplicity and performance purposes we use @f$ W_x = [W_{xi}; W_{xf}; W_{xo}, W_{xg}] @f$ |
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(i.e. @f$W_x@f$ is vertical concatenation of @f$ W_{x?} @f$), @f$ W_x \in R^{4N_h \times N_x} @f$. |
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The same for @f$ W_h = [W_{hi}; W_{hf}; W_{ho}, W_{hg}], W_h \in R^{4N_h \times N_h} @f$ |
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and for @f$ b = [b_i; b_f, b_o, b_g]@f$, @f$b \in R^{4N_h} @f$. |
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@param Wh is matrix defining how previous output is transformed to internal gates (i.e. according to above mentioned notation is @f$ W_h @f$) |
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@param Wx is matrix defining how current input is transformed to internal gates (i.e. according to above mentioned notation is @f$ W_x @f$) |
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@param b is bias vector (i.e. according to above mentioned notation is @f$ b @f$) |
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*/ |
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CV_DEPRECATED virtual void setWeights(const Mat &Wh, const Mat &Wx, const Mat &b) = 0; |
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/** @brief Specifies shape of output blob which will be [[`T`], `N`] + @p outTailShape. |
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* @details If this parameter is empty or unset then @p outTailShape = [`Wh`.size(0)] will be used, |
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* where `Wh` is parameter from setWeights(). |
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*/ |
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virtual void setOutShape(const MatShape &outTailShape = MatShape()) = 0; |
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/** @deprecated Use flag `produce_cell_output` in LayerParams. |
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* @brief Specifies either interpret first dimension of input blob as timestamp dimension either as sample. |
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* |
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* If flag is set to true then shape of input blob will be interpreted as [`T`, `N`, `[data dims]`] where `T` specifies number of timestamps, `N` is number of independent streams. |
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* In this case each forward() call will iterate through `T` timestamps and update layer's state `T` times. |
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* |
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* If flag is set to false then shape of input blob will be interpreted as [`N`, `[data dims]`]. |
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* In this case each forward() call will make one iteration and produce one timestamp with shape [`N`, `[out dims]`]. |
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*/ |
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CV_DEPRECATED virtual void setUseTimstampsDim(bool use = true) = 0; |
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/** @deprecated Use flag `use_timestamp_dim` in LayerParams. |
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* @brief If this flag is set to true then layer will produce @f$ c_t @f$ as second output. |
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* @details Shape of the second output is the same as first output. |
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*/ |
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CV_DEPRECATED virtual void setProduceCellOutput(bool produce = false) = 0; |
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/* In common case it use single input with @f$x_t@f$ values to compute output(s) @f$h_t@f$ (and @f$c_t@f$). |
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* @param input should contain packed values @f$x_t@f$ |
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* @param output contains computed outputs: @f$h_t@f$ (and @f$c_t@f$ if setProduceCellOutput() flag was set to true). |
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* |
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* If setUseTimstampsDim() is set to true then @p input[0] should has at least two dimensions with the following shape: [`T`, `N`, `[data dims]`], |
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* where `T` specifies number of timestamps, `N` is number of independent streams (i.e. @f$ x_{t_0 + t}^{stream} @f$ is stored inside @p input[0][t, stream, ...]). |
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* |
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* If setUseTimstampsDim() is set to false then @p input[0] should contain single timestamp, its shape should has form [`N`, `[data dims]`] with at least one dimension. |
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* (i.e. @f$ x_{t}^{stream} @f$ is stored inside @p input[0][stream, ...]). |
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*/ |
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int inputNameToIndex(String inputName) CV_OVERRIDE; |
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int outputNameToIndex(const String& outputName) CV_OVERRIDE; |
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}; |
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/** @brief Classical recurrent layer |
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Accepts two inputs @f$x_t@f$ and @f$h_{t-1}@f$ and compute two outputs @f$o_t@f$ and @f$h_t@f$. |
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- input: should contain packed input @f$x_t@f$. |
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- output: should contain output @f$o_t@f$ (and @f$h_t@f$ if setProduceHiddenOutput() is set to true). |
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input[0] should have shape [`T`, `N`, `data_dims`] where `T` and `N` is number of timestamps and number of independent samples of @f$x_t@f$ respectively. |
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output[0] will have shape [`T`, `N`, @f$N_o@f$], where @f$N_o@f$ is number of rows in @f$ W_{xo} @f$ matrix. |
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If setProduceHiddenOutput() is set to true then @p output[1] will contain a Mat with shape [`T`, `N`, @f$N_h@f$], where @f$N_h@f$ is number of rows in @f$ W_{hh} @f$ matrix. |
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*/ |
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class CV_EXPORTS RNNLayer : public Layer |
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{ |
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public: |
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/** Creates instance of RNNLayer */ |
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static Ptr<RNNLayer> create(const LayerParams& params); |
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/** Setups learned weights. |
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Recurrent-layer behavior on each step is defined by current input @f$ x_t @f$, previous state @f$ h_t @f$ and learned weights as follows: |
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@f{eqnarray*}{ |
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h_t &= tanh&(W_{hh} h_{t-1} + W_{xh} x_t + b_h), \\ |
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o_t &= tanh&(W_{ho} h_t + b_o), |
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@f} |
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@param Wxh is @f$ W_{xh} @f$ matrix |
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@param bh is @f$ b_{h} @f$ vector |
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@param Whh is @f$ W_{hh} @f$ matrix |
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@param Who is @f$ W_{xo} @f$ matrix |
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@param bo is @f$ b_{o} @f$ vector |
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*/ |
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virtual void setWeights(const Mat &Wxh, const Mat &bh, const Mat &Whh, const Mat &Who, const Mat &bo) = 0; |
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/** @brief If this flag is set to true then layer will produce @f$ h_t @f$ as second output. |
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* @details Shape of the second output is the same as first output. |
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*/ |
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virtual void setProduceHiddenOutput(bool produce = false) = 0; |
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}; |
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class CV_EXPORTS BaseConvolutionLayer : public Layer |
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{ |
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public: |
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CV_DEPRECATED_EXTERNAL Size kernel, stride, pad, dilation, adjustPad; |
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std::vector<size_t> adjust_pads; |
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std::vector<size_t> kernel_size, strides, dilations; |
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std::vector<size_t> pads_begin, pads_end; |
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String padMode; |
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int numOutput; |
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}; |
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class CV_EXPORTS ConvolutionLayer : public BaseConvolutionLayer |
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{ |
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public: |
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static Ptr<BaseConvolutionLayer> create(const LayerParams& params); |
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}; |
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class CV_EXPORTS DeconvolutionLayer : public BaseConvolutionLayer |
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{ |
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public: |
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static Ptr<BaseConvolutionLayer> create(const LayerParams& params); |
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}; |
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class CV_EXPORTS LRNLayer : public Layer |
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{ |
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public: |
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int type; |
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int size; |
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float alpha, beta, bias; |
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bool normBySize; |
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static Ptr<LRNLayer> create(const LayerParams& params); |
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}; |
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class CV_EXPORTS PoolingLayer : public Layer |
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{ |
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public: |
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int type; |
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std::vector<size_t> kernel_size, strides; |
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std::vector<size_t> pads_begin, pads_end; |
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CV_DEPRECATED_EXTERNAL Size kernel, stride, pad; |
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CV_DEPRECATED_EXTERNAL int pad_l, pad_t, pad_r, pad_b; |
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bool globalPooling; //!< Flag is true if at least one of the axes is global pooled. |
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std::vector<bool> isGlobalPooling; |
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bool computeMaxIdx; |
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String padMode; |
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bool ceilMode; |
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// If true for average pooling with padding, divide an every output region |
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// by a whole kernel area. Otherwise exclude zero padded values and divide |
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// by number of real values. |
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bool avePoolPaddedArea; |
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// ROIPooling parameters. |
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Size pooledSize; |
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float spatialScale; |
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// PSROIPooling parameters. |
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int psRoiOutChannels; |
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static Ptr<PoolingLayer> create(const LayerParams& params); |
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}; |
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class CV_EXPORTS SoftmaxLayer : public Layer |
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{ |
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public: |
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bool logSoftMax; |
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static Ptr<SoftmaxLayer> create(const LayerParams& params); |
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}; |
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class CV_EXPORTS InnerProductLayer : public Layer |
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{ |
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public: |
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int axis; |
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static Ptr<InnerProductLayer> create(const LayerParams& params); |
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}; |
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class CV_EXPORTS MVNLayer : public Layer |
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{ |
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public: |
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float eps; |
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bool normVariance, acrossChannels; |
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static Ptr<MVNLayer> create(const LayerParams& params); |
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}; |
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/* Reshaping */ |
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class CV_EXPORTS ReshapeLayer : public Layer |
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{ |
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public: |
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MatShape newShapeDesc; |
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Range newShapeRange; |
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static Ptr<ReshapeLayer> create(const LayerParams& params); |
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}; |
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class CV_EXPORTS FlattenLayer : public Layer |
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{ |
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public: |
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static Ptr<FlattenLayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS ConcatLayer : public Layer |
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{ |
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public: |
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int axis; |
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/** |
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* @brief Add zero padding in case of concatenation of blobs with different |
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* spatial sizes. |
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* |
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* Details: https://github.com/torch/nn/blob/master/doc/containers.md#depthconcat |
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*/ |
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bool padding; |
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static Ptr<ConcatLayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS SplitLayer : public Layer |
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{ |
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public: |
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int outputsCount; //!< Number of copies that will be produced (is ignored when negative). |
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static Ptr<SplitLayer> create(const LayerParams ¶ms); |
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}; |
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/** |
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* Slice layer has several modes: |
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* 1. Caffe mode |
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* @param[in] axis Axis of split operation |
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* @param[in] slice_point Array of split points |
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* |
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* Number of output blobs equals to number of split points plus one. The |
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* first blob is a slice on input from 0 to @p slice_point[0] - 1 by @p axis, |
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* the second output blob is a slice of input from @p slice_point[0] to |
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* @p slice_point[1] - 1 by @p axis and the last output blob is a slice of |
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* input from @p slice_point[-1] up to the end of @p axis size. |
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* |
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* 2. TensorFlow mode |
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* @param begin Vector of start indices |
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* @param size Vector of sizes |
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* |
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* More convenient numpy-like slice. One and only output blob |
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* is a slice `input[begin[0]:begin[0]+size[0], begin[1]:begin[1]+size[1], ...]` |
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* |
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* 3. Torch mode |
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* @param axis Axis of split operation |
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* |
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* Split input blob on the equal parts by @p axis. |
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*/ |
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class CV_EXPORTS SliceLayer : public Layer |
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{ |
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public: |
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/** |
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* @brief Vector of slice ranges. |
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* |
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* The first dimension equals number of output blobs. |
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* Inner vector has slice ranges for the first number of input dimensions. |
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*/ |
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std::vector<std::vector<Range> > sliceRanges; |
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int axis; |
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int num_split; |
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static Ptr<SliceLayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS PermuteLayer : public Layer |
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{ |
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public: |
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static Ptr<PermuteLayer> create(const LayerParams& params); |
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}; |
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/** |
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* Permute channels of 4-dimensional input blob. |
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* @param group Number of groups to split input channels and pick in turns |
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* into output blob. |
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* |
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* \f[ groupSize = \frac{number\ of\ channels}{group} \f] |
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* \f[ output(n, c, h, w) = input(n, groupSize \times (c \% group) + \lfloor \frac{c}{group} \rfloor, h, w) \f] |
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* Read more at https://arxiv.org/pdf/1707.01083.pdf |
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*/ |
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class CV_EXPORTS ShuffleChannelLayer : public Layer |
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{ |
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public: |
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static Ptr<Layer> create(const LayerParams& params); |
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int group; |
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}; |
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/** |
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* @brief Adds extra values for specific axes. |
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* @param paddings Vector of paddings in format |
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* @code |
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* [ pad_before, pad_after, // [0]th dimension |
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* pad_before, pad_after, // [1]st dimension |
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* ... |
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* pad_before, pad_after ] // [n]th dimension |
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* @endcode |
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* that represents number of padded values at every dimension |
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* starting from the first one. The rest of dimensions won't |
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* be padded. |
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* @param value Value to be padded. Defaults to zero. |
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* @param type Padding type: 'constant', 'reflect' |
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* @param input_dims Torch's parameter. If @p input_dims is not equal to the |
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* actual input dimensionality then the `[0]th` dimension |
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* is considered as a batch dimension and @p paddings are shifted |
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* to a one dimension. Defaults to `-1` that means padding |
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* corresponding to @p paddings. |
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*/ |
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class CV_EXPORTS PaddingLayer : public Layer |
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{ |
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public: |
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static Ptr<PaddingLayer> create(const LayerParams& params); |
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}; |
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/* Activations */ |
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class CV_EXPORTS ActivationLayer : public Layer |
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{ |
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public: |
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virtual void forwardSlice(const float* src, float* dst, int len, |
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size_t outPlaneSize, int cn0, int cn1) const = 0; |
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}; |
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class CV_EXPORTS ReLULayer : public ActivationLayer |
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{ |
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public: |
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float negativeSlope; |
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static Ptr<ReLULayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS ReLU6Layer : public ActivationLayer |
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{ |
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public: |
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float minValue, maxValue; |
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static Ptr<ReLU6Layer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS ChannelsPReLULayer : public ActivationLayer |
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{ |
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public: |
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static Ptr<Layer> create(const LayerParams& params); |
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}; |
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class CV_EXPORTS ELULayer : public ActivationLayer |
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{ |
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public: |
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static Ptr<ELULayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS TanHLayer : public ActivationLayer |
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{ |
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public: |
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static Ptr<TanHLayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS SwishLayer : public ActivationLayer |
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{ |
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public: |
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static Ptr<SwishLayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS MishLayer : public ActivationLayer |
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{ |
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public: |
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static Ptr<MishLayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS SigmoidLayer : public ActivationLayer |
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{ |
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public: |
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static Ptr<SigmoidLayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS BNLLLayer : public ActivationLayer |
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{ |
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public: |
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static Ptr<BNLLLayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS AbsLayer : public ActivationLayer |
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{ |
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public: |
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static Ptr<AbsLayer> create(const LayerParams ¶ms); |
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}; |
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class CV_EXPORTS PowerLayer : public ActivationLayer |
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{ |
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public: |
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float power, scale, shift; |
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static Ptr<PowerLayer> create(const LayerParams ¶ms); |
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}; |
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/* Layers used in semantic segmentation */ |
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class CV_EXPORTS CropLayer : public Layer |
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{ |
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public: |
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static Ptr<Layer> create(const LayerParams ¶ms); |
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}; |
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/** @brief Element wise operation on inputs |
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Extra optional parameters: |
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- "operation" as string. Values are "sum" (default), "prod", "max", "div" |
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- "coeff" as float array. Specify weights of inputs for SUM operation |
|
- "output_channels_mode" as string. Values are "same" (default, all input must have the same layout), "input_0", "input_0_truncate", "max_input_channels" |
|
*/ |
|
class CV_EXPORTS EltwiseLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<EltwiseLayer> create(const LayerParams ¶ms); |
|
}; |
|
|
|
class CV_EXPORTS BatchNormLayer : public ActivationLayer |
|
{ |
|
public: |
|
bool hasWeights, hasBias; |
|
float epsilon; |
|
|
|
static Ptr<BatchNormLayer> create(const LayerParams ¶ms); |
|
}; |
|
|
|
class CV_EXPORTS MaxUnpoolLayer : public Layer |
|
{ |
|
public: |
|
Size poolKernel; |
|
Size poolPad; |
|
Size poolStride; |
|
|
|
static Ptr<MaxUnpoolLayer> create(const LayerParams ¶ms); |
|
}; |
|
|
|
class CV_EXPORTS ScaleLayer : public Layer |
|
{ |
|
public: |
|
bool hasBias; |
|
int axis; |
|
|
|
static Ptr<ScaleLayer> create(const LayerParams& params); |
|
}; |
|
|
|
class CV_EXPORTS ShiftLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<Layer> create(const LayerParams& params); |
|
}; |
|
|
|
class CV_EXPORTS PriorBoxLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<PriorBoxLayer> create(const LayerParams& params); |
|
}; |
|
|
|
class CV_EXPORTS ReorgLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<ReorgLayer> create(const LayerParams& params); |
|
}; |
|
|
|
class CV_EXPORTS RegionLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<RegionLayer> create(const LayerParams& params); |
|
}; |
|
|
|
class CV_EXPORTS DetectionOutputLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<DetectionOutputLayer> create(const LayerParams& params); |
|
}; |
|
|
|
/** |
|
* @brief \f$ L_p \f$ - normalization layer. |
|
* @param p Normalization factor. The most common `p = 1` for \f$ L_1 \f$ - |
|
* normalization or `p = 2` for \f$ L_2 \f$ - normalization or a custom one. |
|
* @param eps Parameter \f$ \epsilon \f$ to prevent a division by zero. |
|
* @param across_spatial If true, normalize an input across all non-batch dimensions. |
|
* Otherwise normalize an every channel separately. |
|
* |
|
* Across spatial: |
|
* @f[ |
|
* norm = \sqrt[p]{\epsilon + \sum_{x, y, c} |src(x, y, c)|^p } \\ |
|
* dst(x, y, c) = \frac{ src(x, y, c) }{norm} |
|
* @f] |
|
* |
|
* Channel wise normalization: |
|
* @f[ |
|
* norm(c) = \sqrt[p]{\epsilon + \sum_{x, y} |src(x, y, c)|^p } \\ |
|
* dst(x, y, c) = \frac{ src(x, y, c) }{norm(c)} |
|
* @f] |
|
* |
|
* Where `x, y` - spatial coordinates, `c` - channel. |
|
* |
|
* An every sample in the batch is normalized separately. Optionally, |
|
* output is scaled by the trained parameters. |
|
*/ |
|
class CV_EXPORTS NormalizeBBoxLayer : public Layer |
|
{ |
|
public: |
|
float pnorm, epsilon; |
|
CV_DEPRECATED_EXTERNAL bool acrossSpatial; |
|
|
|
static Ptr<NormalizeBBoxLayer> create(const LayerParams& params); |
|
}; |
|
|
|
/** |
|
* @brief Resize input 4-dimensional blob by nearest neighbor or bilinear strategy. |
|
* |
|
* Layer is used to support TensorFlow's resize_nearest_neighbor and resize_bilinear ops. |
|
*/ |
|
class CV_EXPORTS ResizeLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<ResizeLayer> create(const LayerParams& params); |
|
}; |
|
|
|
/** |
|
* @brief Bilinear resize layer from https://github.com/cdmh/deeplab-public-ver2 |
|
* |
|
* It differs from @ref ResizeLayer in output shape and resize scales computations. |
|
*/ |
|
class CV_EXPORTS InterpLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<Layer> create(const LayerParams& params); |
|
}; |
|
|
|
class CV_EXPORTS ProposalLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<ProposalLayer> create(const LayerParams& params); |
|
}; |
|
|
|
class CV_EXPORTS CropAndResizeLayer : public Layer |
|
{ |
|
public: |
|
static Ptr<Layer> create(const LayerParams& params); |
|
}; |
|
|
|
//! @} |
|
//! @} |
|
CV__DNN_EXPERIMENTAL_NS_END |
|
} |
|
} |
|
#endif
|
|
|