DCTM: Discrete-Continuous Transformation Matching for Semantic Flow

@article{Kim2017DCTMDT,
  title={DCTM: Discrete-Continuous Transformation Matching for Semantic Flow},
  author={Seungryong Kim and Dongbo Min and Stephen Lin and Kwanghoon Sohn},
  journal={2017 IEEE International Conference on Computer Vision (ICCV)},
  year={2017},
  pages={4539-4548}
}
Techniques for dense semantic correspondence have provided limited ability to deal with the geometric variations that commonly exist between semantically similar images. While variations due to scale and rotation have been examined, there is a lack of practical solutions for more complex deformations such as affine transformations because of the tremendous size of the associated solution space. To address this problem, we present a discrete-continuous transformation matching (DCTM) framework… CONTINUE READING

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