2022
DOI: 10.48550/arxiv.2203.11335
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Global Matching with Overlapping Attention for Optical Flow Estimation

Abstract: Optical flow estimation is a fundamental task in computer vision. Recent direct-regression methods using deep neural networks achieve remarkable performance improvement. However, they do not explicitly capture long-term motion correspondences and thus cannot handle large motions effectively. In this paper, inspired by the traditional matching-optimization methods where matching is introduced to handle large displacements before energy-based optimizations, we introduce a simple but effective global matching ste… Show more

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