Skip to content

happytaoxiaoli/caffe-yolo

 
 

Repository files navigation

Python27

Caffe-YOLO

Introduction

This is a set of tools to convert models from Darknet to Caffe, and in particular to convert the YOLO networks for object detection. For more details, see the paper:

"You Only Look Once: Unified, Real-Time Object Detection" [Redmon2015]

Usage

The repository includes a tool to convert the Darknet configuration file .cfg to the .prototxt definition in Caffe, a tool to convert the weight file .weights to .caffemodel in Caffe and a detection demo to test the converted networks.

Convert the configuration file with:

python create_yolo_prototxt.py tiny-yolo.cfg yolo_tiny

By default, only the deploy prototxt is generate. If the --train option is passed, the train_val version of the prototxt file is generated; however, the file lacks the information about input annotations, training loss and it's meant as a form of partial automation of a manually defined training.

The YOLO weights are available on the YOLO and YOLO v1 websites. See the instructions there on how to download the weight files. To convert them to Caffe, use:

python create_yolo_caffemodel.py yolo_tiny_deploy.prototxt tiny-yolo.weights \
       yolo_tiny.caffemodel

If the number of weights is not compatible with the given prototxt, an error is returned.

Test the results on one of the images in the repository with:

python yolo_detect.py yolo_tiny_deploy.prototxt yolo_tiny.caffemodel images/dog.jpg

By default, the presets for the CoCo networks are used. To use the Pascal VOC preset pass --mode voc option in order to use the correct set of class labels. Classification is also supported for the Darknet networks: use --mode darknet to enable it.

Limitations

The process only supports a limited number of layers and options. The detection layer in YOLO is not implemented and parsing of the network output is left to the caller application.

The most recent yolo and yolo-coco models in Darknet v1 use the Local Convolution layer (convolutions without weight sharing) which is not supported by the official Caffe repository. There is partial support to the version in caffe-mt by passing --loclayer to create_yolo_prototxt.py but the implementation is still buggy.

The shortcut connections introduced in the Darknet v2 YOLO models are also not supported.

Model files

Two models converted from YOLO v2 are available in the prototxt directory:

  • YOLO tiny (CoCo): converted from tiny-yolo.cfg, caffemodel.
  • YOLO tiny VOC: converted from tiny-yolo-voc.cfg, caffemodel.
  • Darknet (Imagenet 1k): converted from darknet.cfg, caffemodel.
  • Tiny Darknet (Imagenet 1k): converted from tiny.cfg, caffemodel

Legacy models

Three converted models from YOLO v1 are available in the prototxt/v1 directory:

  • YOLO tiny: converted from yolov1/tiny-yolo.cfg, caffemodel.
  • YOLO small: converted from yolov1/yolo-small.cfg, caffemodel.
  • YOLO CoCo tiny: converted from yolov1/tiny-coco.cfg, caffemodel.

The models originally converted by xingwangsfu (https://github.com/xingwangsfu/caffe-yolo) are available in the directory prototxt/legacy. The converted weights can be downloaded here:

Requirements

  • Caffe with pycaffe support
  • OpenCV 2 with python interfaces (python-opencv in Ubuntu)

License

The code is released under the YOLO license.

About

YOLO (Real-Time Object Detection) in caffe

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%