Code for TIP 2017 paper --- Illumination Decomposition for Photograph with Multiple Light Sources.

Overview

Illumination_Decomposition

Code for TIP 2017 paper --- Illumination Decomposition for Photograph with Multiple Light Sources.

This code implements the core part of illumination decomposition in our paper via Visual Studio. Please add it to your project. The only dependency is OpenCV. We adopted an old OpenCV (1.X) naming style. You can rewrite it to adapt more recent ones.

If you use it for your research, please cite the following paper in your work:

Ling Zhang, Qingan Yan, Zheng Liu, Hua Zou, Chunxia Xiao. Illumination Decomposition for Photograph with Multiple Light Sources. IEEE Transactions on Image Processing (TIP), 2017.

@article{zhang2017illumination,
  title={Illumination Decomposition for Photograph With Multiple Light Sources},
  author={Zhang, Ling and Yan, Qingan and Liu, Zheng and Zou, Hua and Xiao, Chunxia},
  journal={IEEE Transactions on Image Processing},
  volume={26},
  number={9},
  pages={4114--4127},
  year={2017},
  publisher={IEEE}
}
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