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Do It Yourself: Learning Semantic Correspondence from Pseudo-Labels

About

Finding correspondences between semantically similar points across images and object instances is one of the everlasting challenges in computer vision. While large pre-trained vision models have recently been demonstrated as effective priors for semantic matching, they still suffer from ambiguities for symmetric objects or repeated object parts. We propose improving semantic correspondence estimation through 3D-aware pseudo-labeling. Specifically, we train an adapter to refine off-the-shelf features using pseudo-labels obtained via 3D-aware chaining, filtering wrong labels through relaxed cyclic consistency, and 3D spherical prototype mapping constraints. While reducing the need for dataset-specific annotations compared to prior work, we establish a new state-of-the-art on SPair-71k, achieving an absolute gain of over 4% and of over 7% compared to methods with similar supervision requirements. The generality of our proposed approach simplifies the extension of training to other data sources, which we demonstrate in our experiments.

Olaf D\"unkel, Thomas Wimmer, Christian Theobalt, Christian Rupprecht, Adam Kortylewski• 2025

Related benchmarks

TaskDatasetResultRank
Semantic CorrespondenceSPair-71k (test)
PCK@0.171.6
146
Semantic CorrespondenceSPair-71k
PCK @ 0.0110.1
22
Semantic CorrespondenceAP-10K Intra-species (test)
PCK@0.1070.6
22
Semantic CorrespondenceAP-10K
PCK@0.1 (I.S.)70.6
15
Semantic CorrespondenceAP-10K cross-family
PCK@0.1057.8
14
Semantic CorrespondenceSpairU
PCK@0.1067.9
11
Semantic CorrespondenceAP-10K C.S.
PCK@0.1069.8
10
Semantic CorrespondenceSPair-71k Geo-Aware
PCK@0.017.7
9
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