ROAIHCOct 9, 2021

Learning to Control Complex Robots Using High-Dimensional Interfaces: Preliminary Insights

arXiv:2110.04663v11 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental study exploring human-robot interfaces for assistive technology, with preliminary insights from two uninjured participants.

The paper tackles controlling a 7-DOF assistive robotic arm using high-dimensional motion sensor inputs from limited upper-body motions, finding that robot intelligence can identify inconsistencies and asymmetries in user control to support learning.

Human body motions can be captured as a high-dimensional continuous signal using motion sensor technologies. The resulting data can be surprisingly rich in information, even when captured from persons with limited mobility. In this work, we explore the use of limited upper-body motions, captured via motion sensors, as inputs to control a 7 degree-of-freedom assistive robotic arm. It is possible that even dense sensor signals lack the salient information and independence necessary for reliable high-dimensional robot control. As the human learns over time in the context of this limitation, intelligence on the robot can be leveraged to better identify key learning challenges, provide useful feedback, and support individuals until the challenges are managed. In this short paper, we examine two uninjured participants' data from an ongoing study, to extract preliminary results and share insights. We observe opportunities for robot intelligence to step in, including the identification of inconsistencies in time spent across all control dimensions, asymmetries in individual control dimensions, and user progress in learning. Machine reasoning about these situations may facilitate novel interface learning in the future.

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