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The project aims to deliver a robust real-time object detection system using YOLOv3, which can be applied to various domains such as surveillance, autonomous vehicles, and industrial automation, enhancing object recognition and operational efficiency.

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YOLOv3-image detection

Keras(TF backend) implementation of yolo v3 objects detection.

According to the paper YOLOv3: An Incremental Improvement.

Requirement

  • OpenCV 3.4
  • Python 3.6
  • Tensorflow-gpu 1.5.0
  • Keras 2.1.3

Quick start

  • Download official yolov3.weights and put it on top floder of project.

  • Run the follow command to convert darknet weight file to keras h5 file. The yad2k.py was modified from allanzelener/YAD2K.

python yad2k.py cfg\yolo.cfg yolov3.weights data\yolo.h5
  • run follow command to show the demo. The result can be found in images\res\ floder.
python demo.py

Demo result

It can be seen that yolo v3 has a better classification ability than yolo v2.

TODO

  • Train the model.

Reference

@article{YOLOv3,  
  title={YOLOv3: An Incremental Improvement},  
  author={J Redmon, A Farhadi },
  year={2018}

Copyright

See LICENSE for details.

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The project aims to deliver a robust real-time object detection system using YOLOv3, which can be applied to various domains such as surveillance, autonomous vehicles, and industrial automation, enhancing object recognition and operational efficiency.

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