Active Contact Sensing for Robust Robot-to-Human Object Handover
Linfeng Li, Lin Shao, David Hsu
TLDR
Robots use active contact sensing and information-gathering motions to robustly hand over objects, achieving 97.5% success.
Key contributions
- Identifies limitations of passive sensing in distinguishing firm grasp from incidental touch.
- Introduces active contact sensing using information-gathering robot motions.
- Models contact state with a Bayesian linear model mapping motions to forces.
- Achieves 97.5% handover success, outperforming baselines by over 30%.
Why it matters
This paper significantly improves robot-to-human handover robustness, crucial for assistants in diverse settings. By using active sensing, robots reliably determine firm human grasp, preventing premature release and enhancing safety. This advancement is key for practical human-robot collaboration.
Original Abstract
Robot-to-human object handover is an essential skill for robot assistants, from serving drinks at home to passing surgical tools in the operating room. We expect robots to perform handover robustly -- to release the object only after a firm human grasp while ignoring incidental touches. Existing passive-sensing methods struggle to generalize across diverse objects and human behaviors, as they lack informative perturbations to disambiguate different contact conditions, such as firm grasp versus incidental touch. We propose an active sensing approach for robust handovers: the robot applies information-gathering motions and senses the resulting human-applied forces to infer the contact state. A firm grasp produces forces in multiple directions, while an accidental touch does not. To capture this distinction, we model the contact state with a Bayesian linear model: a distribution over piecewise-linear mappings from robot motions to human-applied forces. This model enables firm grasp detection and active information gathering. In experiments with 12 participants and 30 diverse rigid objects, our method achieved a 97.5% success rate -- over 30% higher than two common baselines.
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