Coherency Sensitive Hashing

@article{Korman2011CoherencySH,
  title={Coherency Sensitive Hashing},
  author={Simon Korman and Shai Avidan},
  journal={2011 International Conference on Computer Vision},
  year={2011},
  pages={1607-1614}
}
Coherency Sensitive Hashing (CSH) extends Locality Sensitivity Hashing (LSH) and PatchMatch to quickly find matching patches between two images. LSH relies on hashing, which maps similar patches to the same bin, in order to find matching patches. PatchMatch, on the other hand, relies on the observation that images are coherent, to propagate good matches to their neighbors in the image plane, using random patch assignment to seed the initial matching. CSH relies on hashing to seed the initial… CONTINUE READING

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