基于高密度表面肌电图的无监督增量和比例肌控制。

Alisa Schulz, Fabio Egle, Marius Osswald, Alessandro Del Vecchio, Claudio Castellini
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引用次数: 0

摘要

上肢的差异给日常生活中的自主性带来了巨大的挑战,目前的假肢由于复杂性和缺乏功能而经常面临很高的遗弃率。本研究使用高密度表面肌电图研究完全无监督的渐进式肌肉控制。利用增量稀疏非负矩阵分解(ISNMF),我们使用了两个32通道表面肌电信号手环,从肌电信号中实时增量提取肌肉协同效应。8名身体健全的参与者接受了这种无监督的训练模式,目标协同效应数量不断增加,并通过虚拟目标实现控制(TAC)测试进行评估。参与者在全强度任务中展示了多达6个独立可控的协同效应,超过了目前的水平。然而,比例控制仍然具有挑战性,反映在一半强度目标的中位数成功率为10%。主观反馈表明,尽管复杂性增加,但协同效应的数量在认知和身体工作量方面只有很小的变化。这种方法有望实现完全无监督的肌肉控制,但需要进一步改进训练协议和超参数,以及对肢体差异用户的测试,以验证和改进这种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Unsupervised Incremental and Proportional Myocontrol Based on Higher-Density Surface Electromyography.

Upper limb differences present tremendous challenges for autonomy in daily living, and current prostheses often face high abandonment rates due to complexity and lack of functionality. This study investigates fully unsupervised incremental myocontrol using higher-density surface EMG. Utilizing incremental sparse non-negative matrix factorization (ISNMF), we employed two 32-channel sEMG bracelets to incrementally extract muscle synergies from EMG signals in real-time. Eight able-bodied participants underwent this unsupervised training paradigm with an increasing number of target synergies and were evaluated with a virtual target achievement control (TAC) test. Participants demonstrated up to six independently controllable synergies in full-intensity tasks, exceeding the current state of the art. However, proportional control remained challenging, reflected in a median success rate of 10% for half-intensity targets. Subjective feedback across the number of synergies showed only small variations in cognitive and physical workload despite increased complexity. This approach shows promise for enabling fully unsupervised myocontrol, but further refinement of training protocol and hyperparameters, as well as testing on users with limb differences, are necessary to validate and improve this approach.

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