darknet/src/reorg_layer.c

174 lines
4.9 KiB
C

#include "reorg_layer.h"
#include "cuda.h"
#include "blas.h"
#include <stdio.h>
layer make_reorg_layer(int batch, int w, int h, int c, int stride, int reverse, int flatten, int extra)
{
layer l = {0};
l.type = REORG;
l.batch = batch;
l.stride = stride;
l.extra = extra;
l.h = h;
l.w = w;
l.c = c;
l.flatten = flatten;
if(reverse){
l.out_w = w*stride;
l.out_h = h*stride;
l.out_c = c/(stride*stride);
}else{
l.out_w = w/stride;
l.out_h = h/stride;
l.out_c = c*(stride*stride);
}
l.reverse = reverse;
l.outputs = l.out_h * l.out_w * l.out_c;
l.inputs = h*w*c;
if(l.extra){
l.out_w = l.out_h = l.out_c = 0;
l.outputs = l.inputs + l.extra;
}
if(extra){
fprintf(stderr, "reorg %4d -> %4d\n", l.inputs, l.outputs);
} else {
fprintf(stderr, "reorg /%2d %4d x%4d x%4d -> %4d x%4d x%4d\n", stride, w, h, c, l.out_w, l.out_h, l.out_c);
}
int output_size = l.outputs * batch;
l.output = calloc(output_size, sizeof(float));
l.delta = calloc(output_size, sizeof(float));
l.forward = forward_reorg_layer;
l.backward = backward_reorg_layer;
#ifdef GPU
l.forward_gpu = forward_reorg_layer_gpu;
l.backward_gpu = backward_reorg_layer_gpu;
l.output_gpu = cuda_make_array(l.output, output_size);
l.delta_gpu = cuda_make_array(l.delta, output_size);
#endif
return l;
}
void resize_reorg_layer(layer *l, int w, int h)
{
int stride = l->stride;
int c = l->c;
l->h = h;
l->w = w;
if(l->reverse){
l->out_w = w*stride;
l->out_h = h*stride;
l->out_c = c/(stride*stride);
}else{
l->out_w = w/stride;
l->out_h = h/stride;
l->out_c = c*(stride*stride);
}
l->outputs = l->out_h * l->out_w * l->out_c;
l->inputs = l->outputs;
int output_size = l->outputs * l->batch;
l->output = realloc(l->output, output_size * sizeof(float));
l->delta = realloc(l->delta, output_size * sizeof(float));
#ifdef GPU
cuda_free(l->output_gpu);
cuda_free(l->delta_gpu);
l->output_gpu = cuda_make_array(l->output, output_size);
l->delta_gpu = cuda_make_array(l->delta, output_size);
#endif
}
void forward_reorg_layer(const layer l, network net)
{
int i;
if(l.flatten){
memcpy(l.output, net.input, l.outputs*l.batch*sizeof(float));
if(l.reverse){
flatten(l.output, l.w*l.h, l.c, l.batch, 0);
}else{
flatten(l.output, l.w*l.h, l.c, l.batch, 1);
}
} else if (l.extra) {
for(i = 0; i < l.batch; ++i){
copy_cpu(l.inputs, net.input + i*l.inputs, 1, l.output + i*l.outputs, 1);
}
} else if (l.reverse){
reorg_cpu(net.input, l.w, l.h, l.c, l.batch, l.stride, 1, l.output);
} else {
reorg_cpu(net.input, l.w, l.h, l.c, l.batch, l.stride, 0, l.output);
}
}
void backward_reorg_layer(const layer l, network net)
{
int i;
if(l.flatten){
memcpy(net.delta, l.delta, l.outputs*l.batch*sizeof(float));
if(l.reverse){
flatten(net.delta, l.w*l.h, l.c, l.batch, 1);
}else{
flatten(net.delta, l.w*l.h, l.c, l.batch, 0);
}
} else if(l.reverse){
reorg_cpu(l.delta, l.w, l.h, l.c, l.batch, l.stride, 0, net.delta);
} else if (l.extra) {
for(i = 0; i < l.batch; ++i){
copy_cpu(l.inputs, l.delta + i*l.outputs, 1, net.delta + i*l.inputs, 1);
}
}else{
reorg_cpu(l.delta, l.w, l.h, l.c, l.batch, l.stride, 1, net.delta);
}
}
#ifdef GPU
void forward_reorg_layer_gpu(layer l, network net)
{
int i;
if(l.flatten){
if(l.reverse){
flatten_gpu(net.input_gpu, l.w*l.h, l.c, l.batch, 0, l.output_gpu);
}else{
flatten_gpu(net.input_gpu, l.w*l.h, l.c, l.batch, 1, l.output_gpu);
}
} else if (l.extra) {
for(i = 0; i < l.batch; ++i){
copy_gpu(l.inputs, net.input_gpu + i*l.inputs, 1, l.output_gpu + i*l.outputs, 1);
}
} else if (l.reverse) {
reorg_gpu(net.input_gpu, l.w, l.h, l.c, l.batch, l.stride, 1, l.output_gpu);
}else {
reorg_gpu(net.input_gpu, l.w, l.h, l.c, l.batch, l.stride, 0, l.output_gpu);
}
}
void backward_reorg_layer_gpu(layer l, network net)
{
if(l.flatten){
if(l.reverse){
flatten_gpu(l.delta_gpu, l.w*l.h, l.c, l.batch, 1, net.delta_gpu);
}else{
flatten_gpu(l.delta_gpu, l.w*l.h, l.c, l.batch, 0, net.delta_gpu);
}
} else if (l.extra) {
int i;
for(i = 0; i < l.batch; ++i){
copy_gpu(l.inputs, l.delta_gpu + i*l.outputs, 1, net.delta_gpu + i*l.inputs, 1);
}
} else if(l.reverse){
reorg_gpu(l.delta_gpu, l.w, l.h, l.c, l.batch, l.stride, 0, net.delta_gpu);
} else {
reorg_gpu(l.delta_gpu, l.w, l.h, l.c, l.batch, l.stride, 1, net.delta_gpu);
}
}
#endif