Online Adaptation for Myographic Control of Natural Dexterous Hand and Finger Movements
Joseph L. Betthauser, Rebecca Greene, Ananya Dhawan, John T. Krall,, Christopher L. Hunt, Gyorgy Levay, Rahul R. Kaliki, Matthew S. Fifer,, Siddhartha Sikdar, Nitish V. Thakor

TL;DR
This paper presents a novel myographic control system for prosthetic limbs that achieves highly dexterous, natural, and biomimetic finger and wrist movements by combining sequential regression models and reinforcement learning, significantly improving decoding accuracy and responsiveness.
Contribution
It introduces a reinforcement learning-based adaptation method for myographic signals, enabling continuous, natural control of multiple degrees-of-freedom in prosthetic limbs without standard training protocols.
Findings
Significantly lower error rates than traditional methods (p < 0.001)
Nearly zero response time delay (p < 0.001)
Continuous performance improvement through reinforcement learning
Abstract
One of the most elusive goals in myographic prosthesis control is the ability to reliably decode continuous positions simultaneously across multiple degrees-of-freedom. Goal: To demonstrate dexterous, natural, biomimetic finger and wrist control of the highly advanced robotic Modular Prosthetic Limb. Methods: We combine sequential temporal regression models and reinforcement learning using myographic signals to predict continuous simultaneous predictions of 7 finger and wrist degrees-of-freedom for 9 non-amputee human subjects in a minimally-constrained freeform training process. Results: We demonstrate highly dexterous 7 DoF position-based regression for prosthesis control from EMG signals, with significantly lower error rates than traditional approaches (p < 0.001) and nearly zero prediction response time delay (p < 0.001). Their performance can be continuously improved at any time…
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Taxonomy
TopicsStroke Rehabilitation and Recovery · Teleoperation and Haptic Systems · Hand Gesture Recognition Systems
