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Convolutional Hough Matching Networks

About

Despite advances in feature representation, leveraging geometric relations is crucial for establishing reliable visual correspondences under large variations of images. In this work we introduce a Hough transform perspective on convolutional matching and propose an effective geometric matching algorithm, dubbed Convolutional Hough Matching (CHM). The method distributes similarities of candidate matches over a geometric transformation space and evaluate them in a convolutional manner. We cast it into a trainable neural layer with a semi-isotropic high-dimensional kernel, which learns non-rigid matching with a small number of interpretable parameters. To validate the effect, we develop the neural network with CHM layers that perform convolutional matching in the space of translation and scaling. Our method sets a new state of the art on standard benchmarks for semantic visual correspondence, proving its strong robustness to challenging intra-class variations.

Juhong Min, Minsu Cho• 2021

Related benchmarks

TaskDatasetResultRank
Semantic CorrespondenceSPair-71k (test)
PCK@0.146.3
122
Semantic CorrespondencePF-WILLOW
PCK@0.1 (bbox)79.4
109
Semantic CorrespondencePF-Pascal (test)
PCK@0.191.6
106
Semantic CorrespondencePF-PASCAL
PCK @ alpha=0.191.6
98
Keypoint TransferSPair-71k (test)
Bicycle29.3
38
Semantic CorrespondencePF-WILLOW (test)--
37
Semantic CorrespondenceSPair-71k
PCK@0.146.3
24
Semantic MatchingSPair-71k (val)
PCK (@alpha_bbox=0.1)46.3
15
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