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Learning Rotation-Equivariant Features for Visual Correspondence

Jong‐Min Lee, Byungjin Kim, Seungwook Kim, Minsu Cho

202334 citationsDOI

Abstract

Extracting discriminative local features that are invariant to imaging variations is an integral part of establishing correspondences between images. In this work, we introduce a self-supervised learning framework to extract discriminative rotation-invariant descriptors using group-equivariant CNNs. Thanks to employing group-equivariant CNNs, our method effectively learns to obtain rotation-equivariant features and their orientations explicitly, without having to perform sophisticated data augmentations. The resultant features and their orientations are further processed by group aligning, a novel invariant mapping technique that shifts the group-equivariant features by their orientations along the group dimension. Our group aligning technique achieves rotation-invariance without any collapse of the group dimension and thus eschews loss of discriminability. The proposed method is trained end-to-end in a self-supervised manner, where we use an orientation alignment loss for the orientation estimation and a contrastive descriptor loss for robust local descriptors to geometric/photometric variations. Our method demonstrates state-of-the-art matching accuracy among existing rotation-invariant descriptors under varying rotation and also shows competitive results when transferred to the task of keypoint matching and camera pose estimation.

Topics & Concepts

Equivariant mapDiscriminative modelArtificial intelligenceInvariant (physics)Pattern recognition (psychology)Rotation (mathematics)Computer visionComputer scienceOrientation (vector space)Matching (statistics)MathematicsDimension (graph theory)GeometryPure mathematicsStatisticsMathematical physicsRobotics and Sensor-Based LocalizationAdvanced Image and Video Retrieval Techniques3D Surveying and Cultural Heritage