Stable Single-Pixel Contrastive Learning for Semantic and Geometric Tasks
2025年12月4日
5 authors
概要
We pilot a family of stable contrastive losses for learning pixel-level representations that jointly capture semantic and geometric information. Our approach maps each pixel of an image to an overcomplete descriptor that is both view-invariant and semantically meaningful. It enables precise point-correspondence across images without requiring momentum-based teacher-student training. Two experiments in synthetic 2D and 3D environments demonstrate the properties of our loss and the resulting overcomplete representations.
カテゴリ
著者
Leonid PogorelyukNiels BracherAaron VerkleerenLars KühmichelStefan T. Radev