| | |
| | | #include <string.h> |
| | | #include <stdlib.h> |
| | | |
| | | #include "blas.h" |
| | | #include "parser.h" |
| | | #include "assert.h" |
| | | #include "activations.h" |
| | | #include "crop_layer.h" |
| | | #include "cost_layer.h" |
| | |
| | | #include "gru_layer.h" |
| | | #include "crnn_layer.h" |
| | | #include "maxpool_layer.h" |
| | | #include "reorg_layer.h" |
| | | #include "softmax_layer.h" |
| | | #include "dropout_layer.h" |
| | | #include "detection_layer.h" |
| | | #include "region_layer.h" |
| | | #include "avgpool_layer.h" |
| | | #include "local_layer.h" |
| | | #include "route_layer.h" |
| | |
| | | int is_gru(section *s); |
| | | int is_crnn(section *s); |
| | | int is_maxpool(section *s); |
| | | int is_reorg(section *s); |
| | | int is_avgpool(section *s); |
| | | int is_dropout(section *s); |
| | | int is_softmax(section *s); |
| | |
| | | int is_shortcut(section *s); |
| | | int is_cost(section *s); |
| | | int is_detection(section *s); |
| | | int is_region(section *s); |
| | | int is_route(section *s); |
| | | list *read_cfg(char *filename); |
| | | |
| | |
| | | |
| | | deconvolutional_layer layer = make_deconvolutional_layer(batch,h,w,c,n,size,stride,activation); |
| | | |
| | | char *weights = option_find_str(options, "weights", 0); |
| | | char *biases = option_find_str(options, "biases", 0); |
| | | parse_data(weights, layer.filters, c*n*size*size); |
| | | parse_data(biases, layer.biases, n); |
| | | #ifdef GPU |
| | | if(weights || biases) push_deconvolutional_layer(layer); |
| | | #endif |
| | | return layer; |
| | | } |
| | | |
| | |
| | | int n = option_find_int(options, "filters",1); |
| | | int size = option_find_int(options, "size",1); |
| | | int stride = option_find_int(options, "stride",1); |
| | | int pad = option_find_int(options, "pad",0); |
| | | int pad = option_find_int_quiet(options, "pad",0); |
| | | int padding = option_find_int_quiet(options, "padding",0); |
| | | if(pad) padding = size/2; |
| | | |
| | | char *activation_s = option_find_str(options, "activation", "logistic"); |
| | | ACTIVATION activation = get_activation(activation_s); |
| | | |
| | |
| | | int binary = option_find_int_quiet(options, "binary", 0); |
| | | int xnor = option_find_int_quiet(options, "xnor", 0); |
| | | |
| | | convolutional_layer layer = make_convolutional_layer(batch,h,w,c,n,size,stride,pad,activation, batch_normalize, binary, xnor); |
| | | convolutional_layer layer = make_convolutional_layer(batch,h,w,c,n,size,stride,padding,activation, batch_normalize, binary, xnor); |
| | | layer.flipped = option_find_int_quiet(options, "flipped", 0); |
| | | layer.dot = option_find_float_quiet(options, "dot", 0); |
| | | |
| | | char *weights = option_find_str(options, "weights", 0); |
| | | char *biases = option_find_str(options, "biases", 0); |
| | | parse_data(weights, layer.filters, c*n*size*size); |
| | | parse_data(biases, layer.biases, n); |
| | | #ifdef GPU |
| | | if(weights || biases) push_convolutional_layer(layer); |
| | | #endif |
| | | return layer; |
| | | } |
| | | |
| | |
| | | |
| | | connected_layer layer = make_connected_layer(params.batch, params.inputs, output, activation, batch_normalize); |
| | | |
| | | char *weights = option_find_str(options, "weights", 0); |
| | | char *biases = option_find_str(options, "biases", 0); |
| | | parse_data(biases, layer.biases, output); |
| | | parse_data(weights, layer.weights, params.inputs*output); |
| | | #ifdef GPU |
| | | if(weights || biases) push_connected_layer(layer); |
| | | #endif |
| | | return layer; |
| | | } |
| | | |
| | |
| | | return layer; |
| | | } |
| | | |
| | | layer parse_region(list *options, size_params params) |
| | | { |
| | | int coords = option_find_int(options, "coords", 4); |
| | | int classes = option_find_int(options, "classes", 20); |
| | | int num = option_find_int(options, "num", 1); |
| | | |
| | | params.w = option_find_int(options, "side", params.w); |
| | | params.h = option_find_int(options, "side", params.h); |
| | | |
| | | layer l = make_region_layer(params.batch, params.w, params.h, num, classes, coords); |
| | | assert(l.outputs == params.inputs); |
| | | |
| | | l.log = option_find_int_quiet(options, "log", 0); |
| | | l.sqrt = option_find_int_quiet(options, "sqrt", 0); |
| | | |
| | | l.softmax = option_find_int(options, "softmax", 0); |
| | | l.max_boxes = option_find_int_quiet(options, "max",30); |
| | | l.jitter = option_find_float(options, "jitter", .2); |
| | | l.rescore = option_find_int_quiet(options, "rescore",0); |
| | | |
| | | l.coord_scale = option_find_float(options, "coord_scale", 1); |
| | | l.object_scale = option_find_float(options, "object_scale", 1); |
| | | l.noobject_scale = option_find_float(options, "noobject_scale", 1); |
| | | l.class_scale = option_find_float(options, "class_scale", 1); |
| | | return l; |
| | | } |
| | | detection_layer parse_detection(list *options, size_params params) |
| | | { |
| | | int coords = option_find_int(options, "coords", 1); |
| | |
| | | layer.class_scale = option_find_float(options, "class_scale", 1); |
| | | layer.jitter = option_find_float(options, "jitter", .2); |
| | | layer.random = option_find_int_quiet(options, "random", 0); |
| | | layer.reorg = option_find_int_quiet(options, "reorg", 0); |
| | | return layer; |
| | | } |
| | | |
| | |
| | | COST_TYPE type = get_cost_type(type_s); |
| | | float scale = option_find_float_quiet(options, "scale",1); |
| | | cost_layer layer = make_cost_layer(params.batch, params.inputs, type, scale); |
| | | layer.ratio = option_find_float_quiet(options, "ratio",0); |
| | | return layer; |
| | | } |
| | | |
| | |
| | | return l; |
| | | } |
| | | |
| | | layer parse_reorg(list *options, size_params params) |
| | | { |
| | | int stride = option_find_int(options, "stride",1); |
| | | |
| | | int batch,h,w,c; |
| | | h = params.h; |
| | | w = params.w; |
| | | c = params.c; |
| | | batch=params.batch; |
| | | if(!(h && w && c)) error("Layer before reorg layer must output image."); |
| | | |
| | | layer layer = make_reorg_layer(batch,w,h,c,stride); |
| | | return layer; |
| | | } |
| | | |
| | | maxpool_layer parse_maxpool(list *options, size_params params) |
| | | { |
| | | int stride = option_find_int(options, "stride",1); |
| | | int size = option_find_int(options, "size",stride); |
| | | int padding = option_find_int_quiet(options, "padding", (size-1)/2); |
| | | |
| | | int batch,h,w,c; |
| | | h = params.h; |
| | |
| | | batch=params.batch; |
| | | if(!(h && w && c)) error("Layer before maxpool layer must output image."); |
| | | |
| | | maxpool_layer layer = make_maxpool_layer(batch,h,w,c,size,stride); |
| | | maxpool_layer layer = make_maxpool_layer(batch,h,w,c,size,stride,padding); |
| | | return layer; |
| | | } |
| | | |
| | |
| | | net->max_crop = option_find_int_quiet(options, "max_crop",net->w*2); |
| | | net->min_crop = option_find_int_quiet(options, "min_crop",net->w); |
| | | |
| | | net->angle = option_find_float_quiet(options, "angle", 0); |
| | | net->aspect = option_find_float_quiet(options, "aspect", 1); |
| | | net->saturation = option_find_float_quiet(options, "saturation", 1); |
| | | net->exposure = option_find_float_quiet(options, "exposure", 1); |
| | | net->hue = option_find_float_quiet(options, "hue", 0); |
| | | |
| | | if(!net->inputs && !(net->h && net->w && net->c)) error("No input parameters supplied"); |
| | | |
| | | char *policy_s = option_find_str(options, "policy", "constant"); |
| | |
| | | l = parse_crop(options, params); |
| | | }else if(is_cost(s)){ |
| | | l = parse_cost(options, params); |
| | | }else if(is_region(s)){ |
| | | l = parse_region(options, params); |
| | | }else if(is_detection(s)){ |
| | | l = parse_detection(options, params); |
| | | }else if(is_softmax(s)){ |
| | |
| | | l = parse_batchnorm(options, params); |
| | | }else if(is_maxpool(s)){ |
| | | l = parse_maxpool(options, params); |
| | | }else if(is_reorg(s)){ |
| | | l = parse_reorg(options, params); |
| | | }else if(is_avgpool(s)){ |
| | | l = parse_avgpool(options, params); |
| | | }else if(is_route(s)){ |
| | |
| | | net.outputs = get_network_output_size(net); |
| | | net.output = get_network_output(net); |
| | | if(workspace_size){ |
| | | //printf("%ld\n", workspace_size); |
| | | //printf("%ld\n", workspace_size); |
| | | #ifdef GPU |
| | | net.workspace = cuda_make_array(0, (workspace_size-1)/sizeof(float)+1); |
| | | if(gpu_index >= 0){ |
| | | net.workspace = cuda_make_array(0, (workspace_size-1)/sizeof(float)+1); |
| | | }else { |
| | | net.workspace = calloc(1, workspace_size); |
| | | } |
| | | #else |
| | | net.workspace = calloc(1, workspace_size); |
| | | #endif |
| | |
| | | if (strcmp(type, "[crop]")==0) return CROP; |
| | | if (strcmp(type, "[cost]")==0) return COST; |
| | | if (strcmp(type, "[detection]")==0) return DETECTION; |
| | | if (strcmp(type, "[region]")==0) return REGION; |
| | | if (strcmp(type, "[local]")==0) return LOCAL; |
| | | if (strcmp(type, "[deconv]")==0 |
| | | || strcmp(type, "[deconvolutional]")==0) return DECONVOLUTIONAL; |
| | |
| | | || strcmp(type, "[connected]")==0) return CONNECTED; |
| | | if (strcmp(type, "[max]")==0 |
| | | || strcmp(type, "[maxpool]")==0) return MAXPOOL; |
| | | if (strcmp(type, "[reorg]")==0) return REORG; |
| | | if (strcmp(type, "[avg]")==0 |
| | | || strcmp(type, "[avgpool]")==0) return AVGPOOL; |
| | | if (strcmp(type, "[dropout]")==0) return DROPOUT; |
| | |
| | | { |
| | | return (strcmp(s->type, "[cost]")==0); |
| | | } |
| | | int is_region(section *s) |
| | | { |
| | | return (strcmp(s->type, "[region]")==0); |
| | | } |
| | | int is_detection(section *s) |
| | | { |
| | | return (strcmp(s->type, "[detection]")==0); |
| | |
| | | return (strcmp(s->type, "[conn]")==0 |
| | | || strcmp(s->type, "[connected]")==0); |
| | | } |
| | | int is_reorg(section *s) |
| | | { |
| | | return (strcmp(s->type, "[reorg]")==0); |
| | | } |
| | | int is_maxpool(section *s) |
| | | { |
| | | return (strcmp(s->type, "[max]")==0 |
| | |
| | | fread(l.rolling_variance, sizeof(float), l.n, fp); |
| | | } |
| | | fread(l.filters, sizeof(float), num, fp); |
| | | //if(l.c == 3) scal_cpu(num, 1./256, l.filters, 1); |
| | | if (l.flipped) { |
| | | transpose_matrix(l.filters, l.c*l.size*l.size, l.n); |
| | | } |