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Hierarchically Self-Supervised Transformer for Human Skeleton Representation Learning

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arxiv 2207.09644 v3 pith:IRURR2RV submitted 2022-07-20 cs.CV

Hierarchically Self-Supervised Transformer for Human Skeleton Representation Learning

classification cs.CV
keywords skeletonlearningpre-trainingself-supervisedhierarchicalhumansequenceaction
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Despite the success of fully-supervised human skeleton sequence modeling, utilizing self-supervised pre-training for skeleton sequence representation learning has been an active field because acquiring task-specific skeleton annotations at large scales is difficult. Recent studies focus on learning video-level temporal and discriminative information using contrastive learning, but overlook the hierarchical spatial-temporal nature of human skeletons. Different from such superficial supervision at the video level, we propose a self-supervised hierarchical pre-training scheme incorporated into a hierarchical Transformer-based skeleton sequence encoder (Hi-TRS), to explicitly capture spatial, short-term, and long-term temporal dependencies at frame, clip, and video levels, respectively. To evaluate the proposed self-supervised pre-training scheme with Hi-TRS, we conduct extensive experiments covering three skeleton-based downstream tasks including action recognition, action detection, and motion prediction. Under both supervised and semi-supervised evaluation protocols, our method achieves the state-of-the-art performance. Additionally, we demonstrate that the prior knowledge learned by our model in the pre-training stage has strong transfer capability for different downstream tasks.

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