基于肌肉协同理论的个体运动学习对人体关节的组合运动进行分类

K. Shima, T. Tsuji
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引用次数: 17

摘要

本文提出了一种基于肌肉协同理论的用户动作模式分类方法,从肌电图中生成人机界面输入信号。该方法可以通过结合神经网络预处理的肌电信号的协同模式,使用递归神经网络来表示非训练的组合动作(如手抓握时的腕屈)。这种方法只允许通过学习单个动作(如手抓握和手腕弯曲)来分类组合动作(即未学习的动作),这意味着可以增加动作的数量,而不增加学习样本的数量或控制假肢等设备所需的学习时间。通过对6名受试者(包括一名前臂截肢者)的运动分类测试和假手控制实验,验证了该方法的有效性。结果表明,18个动作(12个组合动作和6个单一动作)可以通过学习进行充分的分类(平均准确率:89.2±6.33%),截肢者可以随意地使用单个和组合动作来控制假手。
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Classification of combined motions in human joints through learning of individual motions based on muscle synergy theory
This paper proposes a novel method of pattern classification for user motions to create input signals for human-machine interfaces from electromyograms (EMGs) based on muscle synergy theory. The method can be adopted to represent non-trained combined motions (e.g., wrist flexion during hand grasping) using a recurrent neural network by combining synergy patterns of EMG signals preprocessed by the network. This approach allows combined motions (i.e., unlearned motions) to be classified through learning of individual motions (such as hand grasping and wrist flexion) only, meaning that the number of motions can be increased without increasing the number of learning samples or the learning time needed to control devices such as prosthetic hands. The effectiveness of the proposed method was demonstrated through motion classification tests and prosthetic hand control experiments with six subjects (including a forearm amputee). The results showed that 18 motions (12 combined and 6 single) could be classified sufficiently with learning for just 6 single motions (average rate: 89.2 ± 6.33%), and the amputee was able to control a prosthetic hand using single and combined motions at will.
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