| | |
| | | |
| | | #include "crop_layer.h" |
| | | #include "connected_layer.h" |
| | | #include "gru_layer.h" |
| | | #include "rnn_layer.h" |
| | | #include "crnn_layer.h" |
| | | #include "local_layer.h" |
| | | #include "convolutional_layer.h" |
| | | #include "activation_layer.h" |
| | | #include "deconvolutional_layer.h" |
| | | #include "detection_layer.h" |
| | | #include "region_layer.h" |
| | | #include "normalization_layer.h" |
| | | #include "batchnorm_layer.h" |
| | | #include "maxpool_layer.h" |
| | | #include "reorg_layer.h" |
| | | #include "avgpool_layer.h" |
| | | #include "cost_layer.h" |
| | | #include "softmax_layer.h" |
| | | #include "dropout_layer.h" |
| | | #include "route_layer.h" |
| | | #include "shortcut_layer.h" |
| | | |
| | | int get_current_batch(network net) |
| | | { |
| | |
| | | case EXP: |
| | | return net.learning_rate * pow(net.gamma, batch_num); |
| | | case POLY: |
| | | if (batch_num < net.burn_in) return net.learning_rate * pow((float)batch_num / net.burn_in, net.power); |
| | | return net.learning_rate * pow(1 - (float)batch_num / net.max_batches, net.power); |
| | | case RANDOM: |
| | | return net.learning_rate * pow(rand_uniform(0,1), net.power); |
| | | case SIG: |
| | | return net.learning_rate * (1./(1.+exp(net.gamma*(batch_num - net.step)))); |
| | | default: |
| | |
| | | switch(a){ |
| | | case CONVOLUTIONAL: |
| | | return "convolutional"; |
| | | case ACTIVE: |
| | | return "activation"; |
| | | case LOCAL: |
| | | return "local"; |
| | | case DECONVOLUTIONAL: |
| | | return "deconvolutional"; |
| | | case CONNECTED: |
| | | return "connected"; |
| | | case RNN: |
| | | return "rnn"; |
| | | case GRU: |
| | | return "gru"; |
| | | case CRNN: |
| | | return "crnn"; |
| | | case MAXPOOL: |
| | | return "maxpool"; |
| | | case REORG: |
| | | return "reorg"; |
| | | case AVGPOOL: |
| | | return "avgpool"; |
| | | case SOFTMAX: |
| | | return "softmax"; |
| | | case DETECTION: |
| | | return "detection"; |
| | | case REGION: |
| | | return "region"; |
| | | case DROPOUT: |
| | | return "dropout"; |
| | | case CROP: |
| | |
| | | return "cost"; |
| | | case ROUTE: |
| | | return "route"; |
| | | case SHORTCUT: |
| | | return "shortcut"; |
| | | case NORMALIZATION: |
| | | return "normalization"; |
| | | case BATCHNORM: |
| | | return "batchnorm"; |
| | | default: |
| | | break; |
| | | } |
| | |
| | | |
| | | void forward_network(network net, network_state state) |
| | | { |
| | | state.workspace = net.workspace; |
| | | int i; |
| | | for(i = 0; i < net.n; ++i){ |
| | | state.index = i; |
| | | layer l = net.layers[i]; |
| | | if(l.delta){ |
| | | scal_cpu(l.outputs * l.batch, 0, l.delta, 1); |
| | |
| | | forward_convolutional_layer(l, state); |
| | | } else if(l.type == DECONVOLUTIONAL){ |
| | | forward_deconvolutional_layer(l, state); |
| | | } else if(l.type == ACTIVE){ |
| | | forward_activation_layer(l, state); |
| | | } else if(l.type == LOCAL){ |
| | | forward_local_layer(l, state); |
| | | } else if(l.type == NORMALIZATION){ |
| | | forward_normalization_layer(l, state); |
| | | } else if(l.type == BATCHNORM){ |
| | | forward_batchnorm_layer(l, state); |
| | | } else if(l.type == DETECTION){ |
| | | forward_detection_layer(l, state); |
| | | } else if(l.type == REGION){ |
| | | forward_region_layer(l, state); |
| | | } else if(l.type == CONNECTED){ |
| | | forward_connected_layer(l, state); |
| | | } else if(l.type == RNN){ |
| | | forward_rnn_layer(l, state); |
| | | } else if(l.type == GRU){ |
| | | forward_gru_layer(l, state); |
| | | } else if(l.type == CRNN){ |
| | | forward_crnn_layer(l, state); |
| | | } else if(l.type == CROP){ |
| | | forward_crop_layer(l, state); |
| | | } else if(l.type == COST){ |
| | |
| | | forward_softmax_layer(l, state); |
| | | } else if(l.type == MAXPOOL){ |
| | | forward_maxpool_layer(l, state); |
| | | } else if(l.type == REORG){ |
| | | forward_reorg_layer(l, state); |
| | | } else if(l.type == AVGPOOL){ |
| | | forward_avgpool_layer(l, state); |
| | | } else if(l.type == DROPOUT){ |
| | | forward_dropout_layer(l, state); |
| | | } else if(l.type == ROUTE){ |
| | | forward_route_layer(l, net); |
| | | } else if(l.type == SHORTCUT){ |
| | | forward_shortcut_layer(l, state); |
| | | } |
| | | state.input = l.output; |
| | | } |
| | |
| | | update_deconvolutional_layer(l, rate, net.momentum, net.decay); |
| | | } else if(l.type == CONNECTED){ |
| | | update_connected_layer(l, update_batch, rate, net.momentum, net.decay); |
| | | } else if(l.type == RNN){ |
| | | update_rnn_layer(l, update_batch, rate, net.momentum, net.decay); |
| | | } else if(l.type == GRU){ |
| | | update_gru_layer(l, update_batch, rate, net.momentum, net.decay); |
| | | } else if(l.type == CRNN){ |
| | | update_crnn_layer(l, update_batch, rate, net.momentum, net.decay); |
| | | } else if(l.type == LOCAL){ |
| | | update_local_layer(l, update_batch, rate, net.momentum, net.decay); |
| | | } |
| | |
| | | |
| | | float *get_network_output(network net) |
| | | { |
| | | #ifdef GPU |
| | | if (gpu_index >= 0) return get_network_output_gpu(net); |
| | | #endif |
| | | int i; |
| | | for(i = net.n-1; i > 0; --i) if(net.layers[i].type != COST) break; |
| | | return net.layers[i].output; |
| | |
| | | float sum = 0; |
| | | int count = 0; |
| | | for(i = 0; i < net.n; ++i){ |
| | | if(net.layers[i].type == COST){ |
| | | sum += net.layers[i].output[0]; |
| | | ++count; |
| | | } |
| | | if(net.layers[i].type == DETECTION){ |
| | | if(net.layers[i].cost){ |
| | | sum += net.layers[i].cost[0]; |
| | | ++count; |
| | | } |
| | |
| | | int i; |
| | | float *original_input = state.input; |
| | | float *original_delta = state.delta; |
| | | state.workspace = net.workspace; |
| | | for(i = net.n-1; i >= 0; --i){ |
| | | state.index = i; |
| | | if(i == 0){ |
| | | state.input = original_input; |
| | | state.delta = original_delta; |
| | |
| | | backward_convolutional_layer(l, state); |
| | | } else if(l.type == DECONVOLUTIONAL){ |
| | | backward_deconvolutional_layer(l, state); |
| | | } else if(l.type == ACTIVE){ |
| | | backward_activation_layer(l, state); |
| | | } else if(l.type == NORMALIZATION){ |
| | | backward_normalization_layer(l, state); |
| | | } else if(l.type == BATCHNORM){ |
| | | backward_batchnorm_layer(l, state); |
| | | } else if(l.type == MAXPOOL){ |
| | | if(i != 0) backward_maxpool_layer(l, state); |
| | | } else if(l.type == REORG){ |
| | | backward_reorg_layer(l, state); |
| | | } else if(l.type == AVGPOOL){ |
| | | backward_avgpool_layer(l, state); |
| | | } else if(l.type == DROPOUT){ |
| | | backward_dropout_layer(l, state); |
| | | } else if(l.type == DETECTION){ |
| | | backward_detection_layer(l, state); |
| | | } else if(l.type == REGION){ |
| | | backward_region_layer(l, state); |
| | | } else if(l.type == SOFTMAX){ |
| | | if(i != 0) backward_softmax_layer(l, state); |
| | | } else if(l.type == CONNECTED){ |
| | | backward_connected_layer(l, state); |
| | | } else if(l.type == RNN){ |
| | | backward_rnn_layer(l, state); |
| | | } else if(l.type == GRU){ |
| | | backward_gru_layer(l, state); |
| | | } else if(l.type == CRNN){ |
| | | backward_crnn_layer(l, state); |
| | | } else if(l.type == LOCAL){ |
| | | backward_local_layer(l, state); |
| | | } else if(l.type == COST){ |
| | | backward_cost_layer(l, state); |
| | | } else if(l.type == ROUTE){ |
| | | backward_route_layer(l, net); |
| | | } else if(l.type == SHORTCUT){ |
| | | backward_shortcut_layer(l, state); |
| | | } |
| | | } |
| | | } |
| | |
| | | if(gpu_index >= 0) return train_network_datum_gpu(net, x, y); |
| | | #endif |
| | | network_state state; |
| | | state.index = 0; |
| | | state.net = net; |
| | | state.input = x; |
| | | state.delta = 0; |
| | | state.truth = y; |
| | |
| | | return (float)sum/(n*batch); |
| | | } |
| | | |
| | | |
| | | float train_network_batch(network net, data d, int n) |
| | | { |
| | | int i,j; |
| | | network_state state; |
| | | state.index = 0; |
| | | state.net = net; |
| | | state.train = 1; |
| | | state.delta = 0; |
| | | float sum = 0; |
| | |
| | | int i; |
| | | for(i = 0; i < net->n; ++i){ |
| | | net->layers[i].batch = b; |
| | | #ifdef CUDNN |
| | | if(net->layers[i].type == CONVOLUTIONAL){ |
| | | cudnn_convolutional_setup(net->layers + i); |
| | | } |
| | | #endif |
| | | } |
| | | } |
| | | |
| | |
| | | net->w = w; |
| | | net->h = h; |
| | | int inputs = 0; |
| | | //fprintf(stderr, "Resizing to %d x %d...", w, h); |
| | | size_t workspace_size = 0; |
| | | //fprintf(stderr, "Resizing to %d x %d...\n", w, h); |
| | | //fflush(stderr); |
| | | for (i = 0; i < net->n; ++i){ |
| | | layer l = net->layers[i]; |
| | | if(l.type == CONVOLUTIONAL){ |
| | | resize_convolutional_layer(&l, w, h); |
| | | }else if(l.type == CROP){ |
| | | resize_crop_layer(&l, w, h); |
| | | }else if(l.type == MAXPOOL){ |
| | | resize_maxpool_layer(&l, w, h); |
| | | }else if(l.type == REORG){ |
| | | resize_reorg_layer(&l, w, h); |
| | | }else if(l.type == AVGPOOL){ |
| | | resize_avgpool_layer(&l, w, h); |
| | | break; |
| | | }else if(l.type == NORMALIZATION){ |
| | | resize_normalization_layer(&l, w, h); |
| | | }else if(l.type == COST){ |
| | |
| | | }else{ |
| | | error("Cannot resize this type of layer"); |
| | | } |
| | | if(l.workspace_size > workspace_size) workspace_size = l.workspace_size; |
| | | inputs = l.outputs; |
| | | net->layers[i] = l; |
| | | w = l.out_w; |
| | | h = l.out_h; |
| | | if(l.type == AVGPOOL) break; |
| | | } |
| | | #ifdef GPU |
| | | if(gpu_index >= 0){ |
| | | cuda_free(net->workspace); |
| | | net->workspace = cuda_make_array(0, (workspace_size-1)/sizeof(float)+1); |
| | | }else { |
| | | free(net->workspace); |
| | | net->workspace = calloc(1, workspace_size); |
| | | } |
| | | #else |
| | | free(net->workspace); |
| | | net->workspace = calloc(1, workspace_size); |
| | | #endif |
| | | //fprintf(stderr, " Done!\n"); |
| | | return 0; |
| | | } |
| | |
| | | #endif |
| | | |
| | | network_state state; |
| | | state.net = net; |
| | | state.index = 0; |
| | | state.input = input; |
| | | state.truth = 0; |
| | | state.train = 0; |
| | |
| | | free_layer(net.layers[i]); |
| | | } |
| | | free(net.layers); |
| | | #ifdef GPU |
| | | #ifdef GPU |
| | | if(*net.input_gpu) cuda_free(*net.input_gpu); |
| | | if(*net.truth_gpu) cuda_free(*net.truth_gpu); |
| | | if(net.input_gpu) free(net.input_gpu); |
| | | if(net.truth_gpu) free(net.truth_gpu); |
| | | #endif |
| | | #endif |
| | | } |