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SCNet: Learning Semantic Correspondence

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This paper addresses the problem of establishing semantic correspondences between images depicting different instances of the same object or scene category. Previous approaches focus on either combining a spatial regularizer with hand-crafted features, or learning a correspondence model for appearance only. We propose instead a convolutional neural network architecture, called SCNet, for learning a geometrically plausible model for semantic correspondence. SCNet uses region proposals as matching primitives, and explicitly incorporates geometric consistency in its loss function. It is trained on image pairs obtained from the PASCAL VOC 2007 keypoint dataset, and a comparative evaluation on several standard benchmarks demonstrates that the proposed approach substantially outperforms both recent deep learning architectures and previous methods based on hand-crafted features.

Kai Han, Rafael S. Rezende, Bumsub Ham, Kwan-Yee K. Wong, Minsu Cho, Cordelia Schmid, Jean Ponce• 2017

Related benchmarks

TaskDatasetResultRank
Semantic CorrespondencePF-WILLOW
PCK@0.1 (bbox)70.4
109
Semantic CorrespondencePF-Pascal (test)
PCK@0.172.2
106
Semantic CorrespondencePF-WILLOW (test)--
37
Semantic keypoint transferPF-Pascal (test)
PCK @ 0.0536.2
35
Semantic CorrespondenceCaltech-101
LT-ACC79
31
Semantic CorrespondencePF-PASCAL
PCK@0.172.2
29
Semantic CorrespondencePF-PASCAL (val)
PCK @ 0.0531.4
8
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