肩周肌肉活动对上肢运动的分类:手部生物反馈。

Jose González, Yuse Horiuchi, Wenwei Yu
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引用次数: 16

摘要

从肌电信号中挖掘信息来检测复杂的运动意图已经引起了越来越多的研究关注,特别是在上肢假手的应用中。在大多数研究中,前臂肌肉活动的记录作为信号源,利用模式识别技术检测手腕和手部运动的意图。然而,日常生活中的上肢活动大多需要肩-臂-手复合体的协调,因此,仅仅依靠局部信息来识别身体的协调运动有很多缺点,因为无法实现自然的连续的手臂-手运动。此外,实现用户和假体之间的动态耦合将是不可能的。本研究的目的是探讨肩周围肌肉的肌电图(EMG)活动是否可能与不同的手握和手臂方向运动相关联。实验记录不同手臂和手部运动的肌电图,并对数据进行分析,确定各传感器的贡献,以区分手臂和手部运动作为到达时间的函数。结果表明,在进行伸手和抓握任务时,可以区分手握和手臂位置。此外,这些结果对于实现用户与假肢之间的闭环动态耦合具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Classification of upper limb motions from around-shoulder muscle activities: hand biofeedback.

Classification of upper limb motions from around-shoulder muscle activities: hand biofeedback.

Classification of upper limb motions from around-shoulder muscle activities: hand biofeedback.

Classification of upper limb motions from around-shoulder muscle activities: hand biofeedback.

Mining information from EMG signals to detect complex motion intention has attracted growing research attention, especially for upper-limb prosthetic hand applications. In most of the studies, recordings of forearm muscle activities were used as the signal sources, from which the intention of wrist and hand motions were detected using pattern recognition technology. However, most daily-life upper limb activities need coordination of the shoulder-arm-hand complex, therefore, relying only on the local information to recognize the body coordinated motion has many disadvantages because natural continuous arm-hand motions can't be realized. Also, achieving a dynamical coupling between the user and the prosthesis will not be possible. This study objective was to investigate whether it is possible to associate the around-shoulder muscles' Electromyogram (EMG) activities with the different hand grips and arm directions movements. Experiments were conducted to record the EMG of different arm and hand motions and the data were analyzed to decide the contribution of each sensor, in order to distinguish the arm-hand motions as a function of the reaching time. Results showed that it is possible to differentiate hand grips and arm position while doing a reaching and grasping task. Also, these results are of great importance as one step to achieve a close loop dynamical coupling between the user and the prosthesis.

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