EMG-Driven Machine Learning Control of a Soft Glove for Grasping Assistance and Rehabilitation

IEEE ROBOTICS AND AUTOMATION LETTERS(2022)

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摘要
In the field of rehabilitation robotics, transparent, precise and intuitive control of hand exoskeletons still represents a substantial challenge. In particular, the use of compliant systems often leads to a trade-off between lightness and material flexibility, and control precision. In this letter, we present a compliant, actuated glove with a control scheme to detect the user's motion intent, which is estimated by a machine learning algorithm based on muscle activity. Six healthy study participants used the glove in three assistance conditions during a force reaching task. The results suggest that active assistance from the glove can aid the user, reducing the muscular activity needed to attain a medium-high grasp force, and that closed-loop control of a compliant assistive glove can successfully he implemented by means of a machine learning algorithm.
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关键词
Soft robotics, machine learning algorithms, electromyography, assistive technology
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