Learning to Invert Local Binary Patterns

@inproceedings{JuefeiXu2016LearningTI,
  title={Learning to Invert Local Binary Patterns},
  author={Felix Juefei-Xu and Marios Savvides},
  booktitle={BMVC},
  year={2016}
}
We have proposed to invert the local binary patterns (LBP) descriptor. The success of the inversion gives rise to two applications: face deappearance and re-appearance. The flowchart of the algorithm is shown in Figure 1. The de-appearance, based on image-LBP forward mapping, is thorough in the sense that not only the identity information but also the soft-biometric information of the subject is removed. The intuition behind using LBP for deappearance is straightforward because LBP is a local… CONTINUE READING

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