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📄 Abstract
Abstract: The increasing labor shortage and aging population underline the need for
assistive robots to support human care recipients. To enable safe and
responsive assistance, robots require accurate human motion prediction in
physical interaction scenarios. However, this remains a challenging task due to
the variability of assistive settings and the complexity of coupled dynamics in
physical interactions. In this work, we address these challenges through two
key contributions: (1) HHI-Assist, a dataset comprising motion capture clips of
human-human interactions in assistive tasks; and (2) a conditional
Transformer-based denoising diffusion model for predicting the poses of
interacting agents. Our model effectively captures the coupled dynamics between
caregivers and care receivers, demonstrating improvements over baselines and
strong generalization to unseen scenarios. By advancing interaction-aware
motion prediction and introducing a new dataset, our work has the potential to
significantly enhance robotic assistance policies. The dataset and code are
available at: https://sites.google.com/view/hhi-assist/home