SASI: Leveraging Sub-Action Semantics for Robust Early Action Recognition in Human-Robot Interaction
Yongpeng Cao, Masahiro Hirano, Hyuno Kim, Yuji Yamakawa
TLDR
SASI uses sub-action semantics and graph convolution networks for robust early action recognition, improving human-robot interaction.
Key contributions
- Introduces SASI, a framework fusing spatiotemporal features with sub-action semantics via GCNs.
- Achieves real-time early action recognition (29 Hz) using a segmentation model and skeleton-based GCN.
- Improves accuracy for early recognition of partial action sequences over conventional methods.
Why it matters
Early action recognition is vital for proactive human-robot interaction. This paper introduces SASI, which uniquely leverages sub-action semantics to significantly improve the accuracy and timeliness of action understanding, enabling more seamless and responsive HRI.
Original Abstract
Understanding human actions is critical for advancing behavior analysis in human-robot interaction. Particularly in tasks that demand quick and proactive feedback, robots must recognize human actions as early as possible from incomplete observations. \textit{Sub-actions} offer the semantic and hierarchical cues needed for this, since human actions are inherently structured and can be decomposed into smaller, meaningful units. However, conventional approaches focus primarily on holistic actions and often overlook the rich semantic structure embedded in sub-actions, making them poorly suited for early recognition. To address this gap, we introduce SASI (Sub-Action Semantics Integrated cross-modal fusion), a novel framework that integrates existing graph convolution networks to fuse spatiotemporal features with sub-action semantics. SASI exploits a segmentation model with a traditional skeleton-based graph convolution network, capturing both fine-grained sub-action semantics and overall spatial context, while operating in real-time at 29 Hz. Experiments on BABEL, a skeleton-based dataset with frame-level annotations, demonstrate that our method improves recognition accuracy over conventional approaches, with additional gains expected as the quality of sub-action segmentation improves. Notably, SASI also achieves superior performance in understanding partial action sequences, revealing its capability for early recognition, which is essential for proactive and seamless Human-Robot Interaction (HRI). Code is available at https://anonymous.4open.science/r/SASI .
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