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go-darknet: Go bindings for Darknet (Yolo V4, Yolo V3)

go-darknet is a Go package, which uses Cgo to enable Go applications to use YOLO V4/V3 in Darknet.

Since this repository https://github.com/gyonluks/go-darknet is no longer maintained I decided to move on and make little different bindings for Darknet.

This bindings aren't for official implementation but for AlexeyAB's fork.

Table of Contents

Requirements

For proper codebase please use fork of darknet. Latest commit I've tested here

In order to use go-darknet, libdarknet.so should be available in one of the following locations:

  • /usr/lib
  • /usr/local/lib

Also, darknet.h should be available in one of the following locations:

  • /usr/include
  • /usr/local/include

To achieve it, after Darknet compilation (via make) execute following command:

# Copy *.so to /usr/lib + /usr/include (or /usr/local/lib + /usr/local/include)
sudo cp libdarknet.so /usr/lib/libdarknet.so && sudo cp include/darknet.h /usr/include/darknet.h
# sudo cp libdarknet.so /usr/local/lib/libdarknet.so && sudo cp include/darknet.h /usr/local/include/darknet.h

Note: do not forget to set LIBSO=1 in Makefile before executing 'make':

LIBSO=1

Installation

go get github.com/LdDl/go-darknet

Usage

Example Go program is provided in the example directory. Please refer to the code on how to use this Go package.

Building and running program:

Navigate to example folder

cd $GOPATH/github.com/LdDl/go-darknet/example

Download dataset (sample of image, coco.names, yolov4.cfg (or v3), yolov4.weights(or v3)).

#for yolo v4
./download_data.sh
#for yolo v3
./download_data_v3.sh

Note: you don't need coco.data file anymore, because sh-script above does insert coco.names into 'names' field in yolov4.cfg file (so AlexeyAB's fork can deal with it properly) So last rows in yolov4.cfg file will look like:

......
[yolo]
.....
iou_loss=ciou
nms_kind=greedynms
beta_nms=0.6

names = coco.names # this is path to coco.names file

Also do not forget change batch and subdivisions sizes from:

batch=64
subdivisions=8

to

batch=1
subdivisions=1

It will reduce amount of VRAM used for detector test.

Build and run program Yolo V4:

go build main.go && ./main --configFile=yolov4.cfg --weightsFile=yolov4.weights --imageFile=sample.jpg

Output should be something like this:

traffic light (9): 73.5039% | start point: (238,73) | end point: (251, 106)
truck (7): 96.6401% | start point: (95,79) | end point: (233, 287)
truck (7): 96.4774% | start point: (662,158) | end point: (800, 321)
truck (7): 96.1841% | start point: (0,77) | end point: (86, 333)
truck (7): 46.8695% | start point: (434,173) | end point: (559, 216)
car (2): 99.7370% | start point: (512,188) | end point: (741, 329)
car (2): 99.2533% | start point: (260,191) | end point: (422, 322)
car (2): 99.0333% | start point: (425,201) | end point: (547, 309)
car (2): 83.3919% | start point: (386,210) | end point: (437, 287)
car (2): 75.8621% | start point: (73,199) | end point: (102, 274)
car (2): 39.1925% | start point: (386,206) | end point: (442, 240)
bicycle (1): 76.3121% | start point: (189,298) | end point: (253, 402)
person (0): 97.7213% | start point: (141,129) | end point: (283, 362)

Yolo V3:

go build main.go && ./main --configFile=yolov3.cfg --weightsFile=yolov3.weights --imageFile=sample.jpg

Output should be something like this:

truck (7): 49.5197% | start point: (0,136) | end point: (85, 311)
car (2): 36.3747% | start point: (95,152) | end point: (186, 283)
truck (7): 48.4384% | start point: (95,152) | end point: (186, 283)
truck (7): 45.6590% | start point: (694,178) | end point: (798, 310)
car (2): 76.8379% | start point: (1,145) | end point: (84, 324)
truck (7): 25.5731% | start point: (107,89) | end point: (215, 263)
car (2): 99.8783% | start point: (511,185) | end point: (748, 328)
car (2): 99.8194% | start point: (261,189) | end point: (427, 322)
car (2): 99.6408% | start point: (426,197) | end point: (539, 311)
car (2): 74.5610% | start point: (692,186) | end point: (796, 316)
car (2): 72.8053% | start point: (388,206) | end point: (437, 276)
bicycle (1): 72.2932% | start point: (178,270) | end point: (268, 406)
person (0): 97.3026% | start point: (143,135) | end point: (268, 343)

Documentation

See go-darknet's API documentation at GoDoc.

License

go-darknet follows Darknet's license.

go-darknet's People

Contributors

lddl avatar lucmski avatar

Watchers

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