/usr/include/torch/SpatialSubSampling.h is in libtorch3-dev 3.1-2.2.
This file is owned by root:root, with mode 0o644.
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//
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#ifndef SPATIAL_SUB_SAMPLING_INC
#define SPATIAL_SUB_SAMPLING_INC
#include "GradientMachine.h"
namespace Torch {
/** Class for doing sub-sampling over images.
Suppose you put #n_input_planes# images in each input frame.
The images are in one big vector: each input frame has a size of
#n_input_planes*input_height*input_width#. (image after image).
Thus, #n_inputs = n_input_planes*input_height*input_width#.
Then, for each output planes, it takes its associated input plane
and it computes the convolution of the input image with a kernel
of size #k_w*k_w#, where the weights of the kernel are equals.
The output image size is computed in the constructor and
put in #output_height# and #output_width#.
#n_outputs = n_input_planes*output_height*output_width#.
Note that, depending of the size of your kernel, several (last) input columns
or rows of the image could be lost.
Note also that \emph{no} non-linearity is applied in this layer.
@author Ronan Collobert (collober@idiap.ch)
*/
class SpatialSubSampling : public GradientMachine
{
public:
/// Kernel size (height and width).
int k_w;
/// 'x' translation \emph{in the input image} after each application of the kernel.
int d_x;
/// 'y' translation \emph{in the input image} after each application of the kernel.
int d_y;
/// Number of input images. The number of output images in sub-sampling is the same.
int n_input_planes;
/// Height of each input image.
int input_height;
/// Width of each input image.
int input_width;
/// Height of each output image.
int output_height;
/// Width of each output image.
int output_width;
/** #weights[i]# means kernel-weight for output plane #i#.
#weights[i]# contains only one weight.
*/
real *weights;
/// Derivatives associated to #weights#.
real *der_weights;
/// #biases[i]# is the bias for output plane #i#.
real *biases;
/// Derivatives associated to #biases#.
real *der_biases;
/// Create a sub-sampling layer...
SpatialSubSampling(int n_input_planes_, int width_, int height_, int k_w_=2, int d_x_=2, int d_y_=2);
//-----
void reset_();
virtual void reset();
virtual void frameForward(int t, real *f_inputs, real *f_outputs);
virtual void frameBackward(int t, real *f_inputs, real *beta_, real *f_outputs, real *alpha_);
virtual ~SpatialSubSampling();
};
}
#endif
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