mirror of
https://github.com/pjreddie/darknet.git
synced 2023-08-10 21:13:14 +03:00
571 lines
10 KiB
C
571 lines
10 KiB
C
#ifndef DARKNET_API
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#define DARKNET_API
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#include <stdlib.h>
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#include <pthread.h>
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extern int gpu_index;
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#ifdef GPU
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#define BLOCK 512
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#include "cuda_runtime.h"
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#include "curand.h"
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#include "cublas_v2.h"
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#ifdef CUDNN
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#include "cudnn.h"
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#endif
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#endif
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#ifndef __cplusplus
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#ifdef OPENCV
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#include "opencv2/highgui/highgui_c.h"
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#include "opencv2/imgproc/imgproc_c.h"
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#include "opencv2/core/version.hpp"
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#if CV_MAJOR_VERSION == 3
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#include "opencv2/videoio/videoio_c.h"
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#endif
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#endif
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#endif
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typedef struct{
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int *leaf;
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int n;
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int *parent;
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int *child;
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int *group;
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char **name;
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int groups;
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int *group_size;
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int *group_offset;
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} tree;
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typedef enum{
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LOGISTIC, RELU, RELIE, LINEAR, RAMP, TANH, PLSE, LEAKY, ELU, LOGGY, STAIR, HARDTAN, LHTAN
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}ACTIVATION;
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typedef enum {
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CONVOLUTIONAL,
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DECONVOLUTIONAL,
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CONNECTED,
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MAXPOOL,
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SOFTMAX,
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DETECTION,
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DROPOUT,
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CROP,
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ROUTE,
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COST,
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NORMALIZATION,
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AVGPOOL,
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LOCAL,
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SHORTCUT,
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ACTIVE,
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RNN,
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GRU,
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LSTM,
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CRNN,
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BATCHNORM,
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NETWORK,
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XNOR,
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REGION,
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REORG,
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BLANK
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} LAYER_TYPE;
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typedef enum{
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SSE, MASKED, L1, SMOOTH
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} COST_TYPE;
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struct network;
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typedef struct network network;
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struct layer;
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typedef struct layer layer;
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struct layer{
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LAYER_TYPE type;
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ACTIVATION activation;
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COST_TYPE cost_type;
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void (*forward) (struct layer, struct network);
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void (*backward) (struct layer, struct network);
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void (*update) (struct layer, int, float, float, float);
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void (*forward_gpu) (struct layer, struct network);
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void (*backward_gpu) (struct layer, struct network);
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void (*update_gpu) (struct layer, int, float, float, float);
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int batch_normalize;
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int shortcut;
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int batch;
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int forced;
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int flipped;
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int inputs;
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int outputs;
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int nweights;
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int nbiases;
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int extra;
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int truths;
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int h,w,c;
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int out_h, out_w, out_c;
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int n;
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int max_boxes;
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int groups;
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int size;
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int side;
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int stride;
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int reverse;
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int flatten;
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int spatial;
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int pad;
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int sqrt;
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int flip;
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int index;
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int binary;
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int xnor;
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int steps;
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int hidden;
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int truth;
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float smooth;
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float dot;
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float angle;
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float jitter;
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float saturation;
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float exposure;
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float shift;
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float ratio;
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float learning_rate_scale;
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int softmax;
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int classes;
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int coords;
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int background;
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int rescore;
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int objectness;
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int does_cost;
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int joint;
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int noadjust;
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int reorg;
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int log;
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int adam;
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float B1;
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float B2;
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float eps;
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int t;
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float alpha;
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float beta;
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float kappa;
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float coord_scale;
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float object_scale;
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float noobject_scale;
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float class_scale;
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int bias_match;
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int random;
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float thresh;
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int classfix;
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int absolute;
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int onlyforward;
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int stopbackward;
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int dontload;
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int dontloadscales;
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float temperature;
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float probability;
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float scale;
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char * cweights;
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int * indexes;
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int * input_layers;
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int * input_sizes;
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int * map;
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float * rand;
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float * cost;
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float * state;
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float * prev_state;
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float * forgot_state;
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float * forgot_delta;
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float * state_delta;
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float * concat;
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float * concat_delta;
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float * binary_weights;
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float * biases;
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float * bias_updates;
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float * scales;
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float * scale_updates;
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float * weights;
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float * weight_updates;
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float * delta;
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float * output;
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float * squared;
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float * norms;
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float * spatial_mean;
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float * mean;
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float * variance;
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float * mean_delta;
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float * variance_delta;
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float * rolling_mean;
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float * rolling_variance;
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float * x;
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float * x_norm;
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float * m;
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float * v;
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float * bias_m;
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float * bias_v;
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float * scale_m;
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float * scale_v;
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float * z_cpu;
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float * r_cpu;
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float * h_cpu;
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float * binary_input;
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struct layer *input_layer;
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struct layer *self_layer;
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struct layer *output_layer;
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struct layer *input_gate_layer;
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struct layer *state_gate_layer;
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struct layer *input_save_layer;
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struct layer *state_save_layer;
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struct layer *input_state_layer;
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struct layer *state_state_layer;
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struct layer *input_z_layer;
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struct layer *state_z_layer;
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struct layer *input_r_layer;
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struct layer *state_r_layer;
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struct layer *input_h_layer;
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struct layer *state_h_layer;
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struct layer *wz;
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struct layer *uz;
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struct layer *wr;
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struct layer *ur;
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struct layer *wh;
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struct layer *uh;
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struct layer *uo;
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struct layer *wo;
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struct layer *uf;
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struct layer *wf;
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struct layer *ui;
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struct layer *wi;
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struct layer *ug;
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struct layer *wg;
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tree *softmax_tree;
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size_t workspace_size;
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#ifdef GPU
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int *indexes_gpu;
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float *z_gpu;
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float *r_gpu;
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float *h_gpu;
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float *temp_gpu;
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float *temp2_gpu;
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float *temp3_gpu;
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float *dh_gpu;
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float *hh_gpu;
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float *prev_cell_gpu;
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float *cell_gpu;
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float *f_gpu;
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float *i_gpu;
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float *g_gpu;
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float *o_gpu;
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float *c_gpu;
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float *dc_gpu;
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float *m_gpu;
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float *v_gpu;
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float *bias_m_gpu;
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float *scale_m_gpu;
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float *bias_v_gpu;
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float *scale_v_gpu;
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float * prev_state_gpu;
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float * forgot_state_gpu;
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float * forgot_delta_gpu;
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float * state_gpu;
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float * state_delta_gpu;
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float * gate_gpu;
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float * gate_delta_gpu;
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float * save_gpu;
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float * save_delta_gpu;
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float * concat_gpu;
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float * concat_delta_gpu;
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float *binary_input_gpu;
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float *binary_weights_gpu;
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float * mean_gpu;
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float * variance_gpu;
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float * rolling_mean_gpu;
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float * rolling_variance_gpu;
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float * variance_delta_gpu;
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float * mean_delta_gpu;
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float * x_gpu;
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float * x_norm_gpu;
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float * weights_gpu;
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float * weight_updates_gpu;
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float * biases_gpu;
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float * bias_updates_gpu;
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float * scales_gpu;
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float * scale_updates_gpu;
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float * output_gpu;
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float * delta_gpu;
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float * rand_gpu;
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float * squared_gpu;
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float * norms_gpu;
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#ifdef CUDNN
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cudnnTensorDescriptor_t srcTensorDesc, dstTensorDesc;
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cudnnTensorDescriptor_t dsrcTensorDesc, ddstTensorDesc;
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cudnnTensorDescriptor_t normTensorDesc;
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cudnnFilterDescriptor_t weightDesc;
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cudnnFilterDescriptor_t dweightDesc;
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cudnnConvolutionDescriptor_t convDesc;
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cudnnConvolutionFwdAlgo_t fw_algo;
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cudnnConvolutionBwdDataAlgo_t bd_algo;
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cudnnConvolutionBwdFilterAlgo_t bf_algo;
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#endif
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#endif
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};
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void free_layer(layer);
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typedef enum {
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CONSTANT, STEP, EXP, POLY, STEPS, SIG, RANDOM
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} learning_rate_policy;
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typedef struct network{
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int n;
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int batch;
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int *seen;
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float epoch;
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int subdivisions;
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float momentum;
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float decay;
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layer *layers;
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float *output;
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learning_rate_policy policy;
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float learning_rate;
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float gamma;
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float scale;
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float power;
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int time_steps;
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int step;
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int max_batches;
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float *scales;
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int *steps;
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int num_steps;
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int burn_in;
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int adam;
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float B1;
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float B2;
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float eps;
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int inputs;
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int outputs;
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int truths;
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int notruth;
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int h, w, c;
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int max_crop;
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int min_crop;
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int center;
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float angle;
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float aspect;
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float exposure;
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float saturation;
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float hue;
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int gpu_index;
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tree *hierarchy;
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float *input;
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float *truth;
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float *delta;
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float *workspace;
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int train;
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int index;
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float *cost;
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#ifdef GPU
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float *input_gpu;
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float *truth_gpu;
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float *delta_gpu;
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float *output_gpu;
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#endif
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} network;
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typedef struct {
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int w;
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int h;
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float scale;
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float rad;
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float dx;
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float dy;
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float aspect;
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} augment_args;
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typedef struct {
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int h;
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int w;
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int c;
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float *data;
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} image;
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typedef struct{
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float x, y, w, h;
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} box;
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typedef struct matrix{
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int rows, cols;
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float **vals;
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} matrix;
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typedef struct{
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int w, h;
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matrix X;
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matrix y;
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int shallow;
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int *num_boxes;
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box **boxes;
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} data;
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typedef enum {
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CLASSIFICATION_DATA, DETECTION_DATA, CAPTCHA_DATA, REGION_DATA, IMAGE_DATA, COMPARE_DATA, WRITING_DATA, SWAG_DATA, TAG_DATA, OLD_CLASSIFICATION_DATA, STUDY_DATA, DET_DATA, SUPER_DATA, LETTERBOX_DATA, REGRESSION_DATA, SEGMENTATION_DATA
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} data_type;
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typedef struct load_args{
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int threads;
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char **paths;
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char *path;
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int n;
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int m;
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char **labels;
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int h;
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int w;
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int out_w;
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int out_h;
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int nh;
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int nw;
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int num_boxes;
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int min, max, size;
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int classes;
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int background;
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int scale;
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int center;
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float jitter;
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float angle;
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float aspect;
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float saturation;
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float exposure;
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float hue;
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data *d;
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image *im;
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image *resized;
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data_type type;
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tree *hierarchy;
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} load_args;
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typedef struct{
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int id;
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float x,y,w,h;
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float left, right, top, bottom;
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} box_label;
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network load_network(char *cfg, char *weights, int clear);
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load_args get_base_args(network net);
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void free_data(data d);
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typedef struct node{
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void *val;
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struct node *next;
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struct node *prev;
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} node;
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typedef struct list{
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int size;
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node *front;
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node *back;
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} list;
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pthread_t load_data(load_args args);
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list *read_data_cfg(char *filename);
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list *read_cfg(char *filename);
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#include "activation_layer.h"
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#include "activations.h"
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#include "avgpool_layer.h"
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#include "batchnorm_layer.h"
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#include "blas.h"
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#include "box.h"
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#include "classifier.h"
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#include "col2im.h"
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#include "connected_layer.h"
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#include "convolutional_layer.h"
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#include "cost_layer.h"
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#include "crnn_layer.h"
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#include "crop_layer.h"
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#include "cuda.h"
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#include "data.h"
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#include "deconvolutional_layer.h"
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#include "demo.h"
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#include "detection_layer.h"
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#include "dropout_layer.h"
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#include "gemm.h"
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#include "gru_layer.h"
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#include "im2col.h"
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#include "image.h"
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#include "layer.h"
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#include "list.h"
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#include "local_layer.h"
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#include "matrix.h"
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#include "maxpool_layer.h"
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#include "network.h"
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#include "normalization_layer.h"
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#include "option_list.h"
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#include "parser.h"
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#include "region_layer.h"
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#include "reorg_layer.h"
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#include "rnn_layer.h"
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#include "route_layer.h"
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#include "shortcut_layer.h"
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#include "softmax_layer.h"
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#include "stb_image.h"
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#include "stb_image_write.h"
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#include "tree.h"
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#include "utils.h"
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#endif
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