Match me if you can: Semi-Supervised Semantic Correspondence Learning with Unpaired Images
Semantic correspondence methods have advanced to obtaining high-quality correspondences employing complicated networks, aiming to maximize the model capacity. However, despite the performance improvements, they may remain constrained by the scarcity of training keypoint pairs, a consequence of the l...
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Zusammenfassung: | Semantic correspondence methods have advanced to obtaining high-quality
correspondences employing complicated networks, aiming to maximize the model
capacity. However, despite the performance improvements, they may remain
constrained by the scarcity of training keypoint pairs, a consequence of the
limited training images and the sparsity of keypoints. This paper builds on the
hypothesis that there is an inherent data-hungry matter in learning semantic
correspondences and uncovers the models can be more trained by employing
densified training pairs. We demonstrate a simple machine annotator reliably
enriches paired key points via machine supervision, requiring neither extra
labeled key points nor trainable modules from unlabeled images. Consequently,
our models surpass current state-of-the-art models on semantic correspondence
learning benchmarks like SPair-71k, PF-PASCAL, and PF-WILLOW and enjoy further
robustness on corruption benchmarks. Our code is available at
https://github.com/naver-ai/matchme. |
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DOI: | 10.48550/arxiv.2311.18540 |