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Convolutional neural network architecture for geometric matching

About

We address the problem of determining correspondences between two images in agreement with a geometric model such as an affine or thin-plate spline transformation, and estimating its parameters. The contributions of this work are three-fold. First, we propose a convolutional neural network architecture for geometric matching. The architecture is based on three main components that mimic the standard steps of feature extraction, matching and simultaneous inlier detection and model parameter estimation, while being trainable end-to-end. Second, we demonstrate that the network parameters can be trained from synthetically generated imagery without the need for manual annotation and that our matching layer significantly increases generalization capabilities to never seen before images. Finally, we show that the same model can perform both instance-level and category-level matching giving state-of-the-art results on the challenging Proposal Flow dataset.

Ignacio Rocco, Relja Arandjelovi\'c, Josef Sivic• 2017

Related benchmarks

TaskDatasetResultRank
Semantic CorrespondenceSPair-71k (test)
PCK@0.120.6
122
Semantic CorrespondencePF-WILLOW
PCK@0.1 (bbox)69.2
109
Semantic CorrespondencePF-Pascal (test)
PCK@0.169.5
106
Semantic CorrespondencePF-PASCAL
PCK @ alpha=0.169.5
98
Keypoint TransferSPair-71k (test)
Bicycle16.7
38
Semantic CorrespondencePF-WILLOW (test)--
37
Semantic keypoint transferPF-Pascal (test)
PCK @ 0.0541
35
Geometric MatchingHPatches 240 x 240
AEE (I)9.29
33
Semantic CorrespondenceCaltech-101
LT-ACC79
31
Semantic CorrespondencePF-PASCAL
PCK@0.169.5
29
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