| #include "deconvolutional_layer.h" |
| #include "convolutional_layer.h" |
| #include "batchnorm_layer.h" |
| #include "utils.h" |
| #include "im2col.h" |
| #include "col2im.h" |
| #include "blas.h" |
| #include "gemm.h" |
|
|
| #include <stdio.h> |
| #include <time.h> |
|
|
|
|
| static size_t get_workspace_size(layer l){ |
| return (size_t)l.h*l.w*l.size*l.size*l.n*sizeof(float); |
| } |
|
|
| void bilinear_init(layer l) |
| { |
| int i,j,f; |
| float center = (l.size-1) / 2.; |
| for(f = 0; f < l.n; ++f){ |
| for(j = 0; j < l.size; ++j){ |
| for(i = 0; i < l.size; ++i){ |
| float val = (1 - fabs(i - center)) * (1 - fabs(j - center)); |
| int c = f%l.c; |
| int ind = f*l.size*l.size*l.c + c*l.size*l.size + j*l.size + i; |
| l.weights[ind] = val; |
| } |
| } |
| } |
| } |
|
|
|
|
| layer make_deconvolutional_layer(int batch, int h, int w, int c, int n, int size, int stride, int padding, ACTIVATION activation, int batch_normalize, int adam) |
| { |
| int i; |
| layer l = {0}; |
| l.type = DECONVOLUTIONAL; |
|
|
| l.h = h; |
| l.w = w; |
| l.c = c; |
| l.n = n; |
| l.batch = batch; |
| l.stride = stride; |
| l.size = size; |
|
|
| l.nweights = c*n*size*size; |
| l.nbiases = n; |
|
|
| l.weights = calloc(c*n*size*size, sizeof(float)); |
| l.weight_updates = calloc(c*n*size*size, sizeof(float)); |
|
|
| l.biases = calloc(n, sizeof(float)); |
| l.bias_updates = calloc(n, sizeof(float)); |
| |
| |
| float scale = .02; |
| for(i = 0; i < c*n*size*size; ++i) l.weights[i] = scale*rand_normal(); |
| |
| for(i = 0; i < n; ++i){ |
| l.biases[i] = 0; |
| } |
| l.pad = padding; |
|
|
| l.out_h = (l.h - 1) * l.stride + l.size - 2*l.pad; |
| l.out_w = (l.w - 1) * l.stride + l.size - 2*l.pad; |
| l.out_c = n; |
| l.outputs = l.out_w * l.out_h * l.out_c; |
| l.inputs = l.w * l.h * l.c; |
|
|
| scal_cpu(l.nweights, (float)l.out_w*l.out_h/(l.w*l.h), l.weights, 1); |
|
|
| l.output = calloc(l.batch*l.outputs, sizeof(float)); |
| l.delta = calloc(l.batch*l.outputs, sizeof(float)); |
|
|
| l.forward = forward_deconvolutional_layer; |
| l.backward = backward_deconvolutional_layer; |
| l.update = update_deconvolutional_layer; |
|
|
| l.batch_normalize = batch_normalize; |
|
|
| if(batch_normalize){ |
| l.scales = calloc(n, sizeof(float)); |
| l.scale_updates = calloc(n, sizeof(float)); |
| for(i = 0; i < n; ++i){ |
| l.scales[i] = 1; |
| } |
|
|
| l.mean = calloc(n, sizeof(float)); |
| l.variance = calloc(n, sizeof(float)); |
|
|
| l.mean_delta = calloc(n, sizeof(float)); |
| l.variance_delta = calloc(n, sizeof(float)); |
|
|
| l.rolling_mean = calloc(n, sizeof(float)); |
| l.rolling_variance = calloc(n, sizeof(float)); |
| l.x = calloc(l.batch*l.outputs, sizeof(float)); |
| l.x_norm = calloc(l.batch*l.outputs, sizeof(float)); |
| } |
| if(adam){ |
| l.m = calloc(c*n*size*size, sizeof(float)); |
| l.v = calloc(c*n*size*size, sizeof(float)); |
| l.bias_m = calloc(n, sizeof(float)); |
| l.scale_m = calloc(n, sizeof(float)); |
| l.bias_v = calloc(n, sizeof(float)); |
| l.scale_v = calloc(n, sizeof(float)); |
| } |
|
|
| #ifdef GPU |
| l.forward_gpu = forward_deconvolutional_layer_gpu; |
| l.backward_gpu = backward_deconvolutional_layer_gpu; |
| l.update_gpu = update_deconvolutional_layer_gpu; |
|
|
| if(gpu_index >= 0){ |
|
|
| if (adam) { |
| l.m_gpu = cuda_make_array(l.m, c*n*size*size); |
| l.v_gpu = cuda_make_array(l.v, c*n*size*size); |
| l.bias_m_gpu = cuda_make_array(l.bias_m, n); |
| l.bias_v_gpu = cuda_make_array(l.bias_v, n); |
| l.scale_m_gpu = cuda_make_array(l.scale_m, n); |
| l.scale_v_gpu = cuda_make_array(l.scale_v, n); |
| } |
| l.weights_gpu = cuda_make_array(l.weights, c*n*size*size); |
| l.weight_updates_gpu = cuda_make_array(l.weight_updates, c*n*size*size); |
|
|
| l.biases_gpu = cuda_make_array(l.biases, n); |
| l.bias_updates_gpu = cuda_make_array(l.bias_updates, n); |
|
|
| l.delta_gpu = cuda_make_array(l.delta, l.batch*l.out_h*l.out_w*n); |
| l.output_gpu = cuda_make_array(l.output, l.batch*l.out_h*l.out_w*n); |
|
|
| if(batch_normalize){ |
| l.mean_gpu = cuda_make_array(0, n); |
| l.variance_gpu = cuda_make_array(0, n); |
|
|
| l.rolling_mean_gpu = cuda_make_array(0, n); |
| l.rolling_variance_gpu = cuda_make_array(0, n); |
|
|
| l.mean_delta_gpu = cuda_make_array(0, n); |
| l.variance_delta_gpu = cuda_make_array(0, n); |
|
|
| l.scales_gpu = cuda_make_array(l.scales, n); |
| l.scale_updates_gpu = cuda_make_array(0, n); |
|
|
| l.x_gpu = cuda_make_array(0, l.batch*l.out_h*l.out_w*n); |
| l.x_norm_gpu = cuda_make_array(0, l.batch*l.out_h*l.out_w*n); |
| } |
| } |
| #ifdef CUDNN |
| cudnnCreateTensorDescriptor(&l.dstTensorDesc); |
| cudnnCreateTensorDescriptor(&l.normTensorDesc); |
| cudnnSetTensor4dDescriptor(l.dstTensorDesc, CUDNN_TENSOR_NCHW, CUDNN_DATA_FLOAT, l.batch, l.out_c, l.out_h, l.out_w); |
| cudnnSetTensor4dDescriptor(l.normTensorDesc, CUDNN_TENSOR_NCHW, CUDNN_DATA_FLOAT, 1, l.out_c, 1, 1); |
| #endif |
| #endif |
|
|
| l.activation = activation; |
| l.workspace_size = get_workspace_size(l); |
|
|
| fprintf(stderr, "deconv%5d %2d x%2d /%2d %4d x%4d x%4d -> %4d x%4d x%4d\n", n, size, size, stride, w, h, c, l.out_w, l.out_h, l.out_c); |
|
|
| return l; |
| } |
|
|
| void denormalize_deconvolutional_layer(layer l) |
| { |
| int i, j; |
| for(i = 0; i < l.n; ++i){ |
| float scale = l.scales[i]/sqrt(l.rolling_variance[i] + .00001); |
| for(j = 0; j < l.c*l.size*l.size; ++j){ |
| l.weights[i*l.c*l.size*l.size + j] *= scale; |
| } |
| l.biases[i] -= l.rolling_mean[i] * scale; |
| l.scales[i] = 1; |
| l.rolling_mean[i] = 0; |
| l.rolling_variance[i] = 1; |
| } |
| } |
|
|
| void resize_deconvolutional_layer(layer *l, int h, int w) |
| { |
| l->h = h; |
| l->w = w; |
| l->out_h = (l->h - 1) * l->stride + l->size - 2*l->pad; |
| l->out_w = (l->w - 1) * l->stride + l->size - 2*l->pad; |
|
|
| l->outputs = l->out_h * l->out_w * l->out_c; |
| l->inputs = l->w * l->h * l->c; |
|
|
| l->output = realloc(l->output, l->batch*l->outputs*sizeof(float)); |
| l->delta = realloc(l->delta, l->batch*l->outputs*sizeof(float)); |
| if(l->batch_normalize){ |
| l->x = realloc(l->x, l->batch*l->outputs*sizeof(float)); |
| l->x_norm = realloc(l->x_norm, l->batch*l->outputs*sizeof(float)); |
| } |
|
|
| #ifdef GPU |
| cuda_free(l->delta_gpu); |
| cuda_free(l->output_gpu); |
|
|
| l->delta_gpu = cuda_make_array(l->delta, l->batch*l->outputs); |
| l->output_gpu = cuda_make_array(l->output, l->batch*l->outputs); |
|
|
| if(l->batch_normalize){ |
| cuda_free(l->x_gpu); |
| cuda_free(l->x_norm_gpu); |
|
|
| l->x_gpu = cuda_make_array(l->output, l->batch*l->outputs); |
| l->x_norm_gpu = cuda_make_array(l->output, l->batch*l->outputs); |
| } |
| #ifdef CUDNN |
| cudnnSetTensor4dDescriptor(l->dstTensorDesc, CUDNN_TENSOR_NCHW, CUDNN_DATA_FLOAT, l->batch, l->out_c, l->out_h, l->out_w); |
| cudnnSetTensor4dDescriptor(l->normTensorDesc, CUDNN_TENSOR_NCHW, CUDNN_DATA_FLOAT, 1, l->out_c, 1, 1); |
| #endif |
| #endif |
| l->workspace_size = get_workspace_size(*l); |
| } |
|
|
| void forward_deconvolutional_layer(const layer l, network net) |
| { |
| int i; |
|
|
| int m = l.size*l.size*l.n; |
| int n = l.h*l.w; |
| int k = l.c; |
|
|
| fill_cpu(l.outputs*l.batch, 0, l.output, 1); |
|
|
| for(i = 0; i < l.batch; ++i){ |
| float *a = l.weights; |
| float *b = net.input + i*l.c*l.h*l.w; |
| float *c = net.workspace; |
|
|
| gemm_cpu(1,0,m,n,k,1,a,m,b,n,0,c,n); |
|
|
| col2im_cpu(net.workspace, l.out_c, l.out_h, l.out_w, l.size, l.stride, l.pad, l.output+i*l.outputs); |
| } |
| if (l.batch_normalize) { |
| forward_batchnorm_layer(l, net); |
| } else { |
| add_bias(l.output, l.biases, l.batch, l.n, l.out_w*l.out_h); |
| } |
| activate_array(l.output, l.batch*l.n*l.out_w*l.out_h, l.activation); |
| } |
|
|
| void backward_deconvolutional_layer(layer l, network net) |
| { |
| int i; |
|
|
| gradient_array(l.output, l.outputs*l.batch, l.activation, l.delta); |
|
|
| if(l.batch_normalize){ |
| backward_batchnorm_layer(l, net); |
| } else { |
| backward_bias(l.bias_updates, l.delta, l.batch, l.n, l.out_w*l.out_h); |
| } |
|
|
| |
|
|
| for(i = 0; i < l.batch; ++i){ |
| int m = l.c; |
| int n = l.size*l.size*l.n; |
| int k = l.h*l.w; |
|
|
| float *a = net.input + i*m*k; |
| float *b = net.workspace; |
| float *c = l.weight_updates; |
|
|
| im2col_cpu(l.delta + i*l.outputs, l.out_c, l.out_h, l.out_w, |
| l.size, l.stride, l.pad, b); |
| gemm_cpu(0,1,m,n,k,1,a,k,b,k,1,c,n); |
|
|
| if(net.delta){ |
| int m = l.c; |
| int n = l.h*l.w; |
| int k = l.size*l.size*l.n; |
|
|
| float *a = l.weights; |
| float *b = net.workspace; |
| float *c = net.delta + i*n*m; |
|
|
| gemm_cpu(0,0,m,n,k,1,a,k,b,n,1,c,n); |
| } |
| } |
| } |
|
|
| void update_deconvolutional_layer(layer l, update_args a) |
| { |
| float learning_rate = a.learning_rate*l.learning_rate_scale; |
| float momentum = a.momentum; |
| float decay = a.decay; |
| int batch = a.batch; |
|
|
| int size = l.size*l.size*l.c*l.n; |
| axpy_cpu(l.n, learning_rate/batch, l.bias_updates, 1, l.biases, 1); |
| scal_cpu(l.n, momentum, l.bias_updates, 1); |
|
|
| if(l.scales){ |
| axpy_cpu(l.n, learning_rate/batch, l.scale_updates, 1, l.scales, 1); |
| scal_cpu(l.n, momentum, l.scale_updates, 1); |
| } |
|
|
| axpy_cpu(size, -decay*batch, l.weights, 1, l.weight_updates, 1); |
| axpy_cpu(size, learning_rate/batch, l.weight_updates, 1, l.weights, 1); |
| scal_cpu(size, momentum, l.weight_updates, 1); |
| } |
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