Paper ID: 2403.07354

BID: Boundary-Interior Decoding for Unsupervised Temporal Action Localization Pre-Trainin

Qihang Fang, Chengcheng Tang, Shugao Ma, Yanchao Yang

Skeleton-based motion representations are robust for action localization and understanding for their invariance to perspective, lighting, and occlusion, compared with images. Yet, they are often ambiguous and incomplete when taken out of context, even for human annotators. As infants discern gestures before associating them with words, actions can be conceptualized before being grounded with labels. Therefore, we propose the first unsupervised pre-training framework, Boundary-Interior Decoding (BID), that partitions a skeleton-based motion sequence into discovered semantically meaningful pre-action segments. By fine-tuning our pre-training network with a small number of annotated data, we show results out-performing SOTA methods by a large margin.

Submitted: Mar 12, 2024