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Context-Aware Collaborative Pushing of Heavy Objects Using Skeleton-Based Intention Prediction

Gökhan Solak, Gustavo J. G. Lahr, İdil Özdamar, Arash Ajoudani

发表年份
2025
引用次数
3

摘要

In physical human-robot interaction, force feedback has been the most common sensing modality to convey the human intention to the robot. It is widely used in admittance control to allow the human to direct the robot. However, it cannot be used in scenarios where direct force feedback is not available since manipulated objects are not always equipped with a force sensor. In this work, we study one such scenario: the collaborative pushing and pulling of heavy objects on frictional surfaces, a prevalent task in industrial settings. When humans do it, they communicate through verbal and non-verbal cues, where body poses, and movements often convey more than words. We propose a novel context-aware approach using Directed Graph Neural Networks to analyze spatiotemporal human posture data to predict human motion intention for non-verbal collaborative physical manipulation. Our experiments demonstrate that robot assistance significantly reduces human effort and improves task efficiency. The results indicate that incorporating posture-based context recognition, either together with or as an alternative to force sensing, enhances robot decision-making and control efficiency.

关键词

Context (archaeology)Computer scienceSkeleton (computer programming)Human–computer interactionArtificial intelligenceProgramming languageGeographyArchaeology

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