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Muscle Synergy-based Grasp Classification for Robotic Hand Prosthetics

机译:基于肌肉协同作用的机械手假肢抓取分类

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摘要

The main goal of this study is analyzing whether muscle synergies based on surface electromyography (EMG) measurements could be used for hand posture classification in the context of robotic prosthetic control. Target grasps were selected according to usefulness in daily activities. Additionally, due to the feasibility constraints of robotic prosthetics, only 14 gestures (13 feasible grasps and 1 resting state) were analyzed. EMG signals of intact-limb subjects were decomposed into base and activation components for muscle activity evaluation. The results demonstrate that features based on muscle synergies derived from non-negative matrix factorization (NMF) outperform the ones derived from principal component analysis (PCA). Moreover, we also examine the robustness of these methods in the absence of electrodes (muscle importance) and show that NMF is able to provide sufficiently accurate results.
机译:这项研究的主要目的是分析基于表面肌电图(EMG)测量的肌肉协同作用是否可以在机器人假体控制的情况下用于手部姿势分类。根据日常活动的有用性选择目标掌握。此外,由于机器人修复术的可行性限制,仅分析了14种手势(13种可行握把和1种静止状态)。将完整肢体对象的EMG信号分解为基本成分和激活成分,以评估肌肉活动。结果表明,基于源自非负矩阵分解(NMF)的肌肉协同作用的特征优于基于主成分分析(PCA)的特征。此外,我们还检查了在没有电极(肌肉重要性)的情况下这些方法的鲁棒性,并表明NMF能够提供足够准确的结果。

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