Learning Human-Robot Collaboration Insights through the Integration of Muscle Activity in Interaction Motion Models
Longxin Chen, Juan Rojas, Shuangda Duan, and Yisheng Guan

TL;DR
This paper enhances human-robot collaboration by integrating electromyography signals into motion models, significantly improving task recognition and enabling more nuanced physical interactions.
Contribution
It introduces a novel integration of EMG signals into Interaction ProMPs, improving task discernment in similar motion scenarios with different objects.
Findings
Task recognition accuracy increased up to 74.6% with EMG integration.
EMG signals enabled complete differentiation of similar motions handling different objects.
The approach facilitates more nuanced and effective human-robot physical interactions.
Abstract
Recent progress in human-robot collaboration makes fast and fluid interactions possible, even when human observations are partial and occluded. Methods like Interaction Probabilistic Movement Primitives (ProMP) model human trajectories through motion capture systems. However, such representation does not properly model tasks where similar motions handle different objects. Under current approaches, a robot would not adapt its pose and dynamics for proper handling. We integrate the use of Electromyography (EMG) into the Interaction ProMP framework and utilize muscular signals to augment the human observation representation. The contribution of our paper is increased task discernment when trajectories are similar but tools are different and require the robot to adjust its pose for proper handling. Interaction ProMPs are used with an augmented vector that integrates muscle activity.…
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