AI RESEARCH
Beyond Binary Contrast: Modeling Continuous Skeleton Action Spaces with Transitional Anchors
arXiv CS.CV
•
ArXi:2604.17914v1 Announce Type: new Self-supervised contrastive learning has emerged as a powerful paradigm for skeleton-based action recognition by enforcing consistency in the embedding space. However, existing methods rely on binary contrastive objectives that overlook the intrinsic continuity of human motion, resulting in fragmented feature clusters and rigid class boundaries. To address these limitations, we propose TranCLR, a Transitional anchor-based Contrastive Learning framework that captures the continuous geometry of the action space.