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屈嘉豪, 潘家锴, 李华. 基于肌电信号的低延时假肢手系统[J]. 桂林电子科技大学学报, xxxx, x(x): 1-6. DOI: 10.3969/1673-808X.2022300
引用本文: 屈嘉豪, 潘家锴, 李华. 基于肌电信号的低延时假肢手系统[J]. 桂林电子科技大学学报, xxxx, x(x): 1-6. DOI: 10.3969/1673-808X.2022300
QU Jiahao, PAN Jiakai, LI Hua. Low delay prosthetic hand system based on electromyographic[J]. Journal of Guilin University of Electronic Technology, xxxx, x(x): 1-6. DOI: 10.3969/1673-808X.2022300
Citation: QU Jiahao, PAN Jiakai, LI Hua. Low delay prosthetic hand system based on electromyographic[J]. Journal of Guilin University of Electronic Technology, xxxx, x(x): 1-6. DOI: 10.3969/1673-808X.2022300

基于肌电信号的低延时假肢手系统

Low delay prosthetic hand system based on electromyographic

  • 摘要: 表面肌电信号(sEMG)目前被广泛用于义肢设计与应用相关的康复工程。针对目前由肌电信号控制的肌电假肢手实时性较差、造价成本高、不够便携等问题,设计了一个基于肌电信号的分体式低延时假肢控制系统。首先,整个系统分为由K210作为模式识别的中央主控和由STM32F103控制的机械假肢手2个模块,使用2.4 G无线传输作为两部分的通讯连接,利用双通道肌电采集电极收集手肘前段两侧肌肉信号,将其传入搭载K210的主控芯片中,然后运用滑动窗口进行手势动作起始判别,并对数据窗口滑动进行高性能设计,以使得整个系统实现低延时信号处理,接着采用支持向量机模式识别算法对肌电信号进行动作类型识别,最后将识别结果对应的动作类型经无线传输发送到机械假肢手控制端。实验结果表明,实时佩戴的采用分体式设计的机械假肢手系统对基于SVM的手势动作综合识别率达95.28%,同时对动作的实时反应时间低于110 ms。

     

    Abstract: Surface electromyography (sEMG) has been currently widely used in rehabilitation engineering related to the design and application of prosthetic limbs.Aiming at the problems of the current sEMG prosthetic hand controlled by sEMG signals, such as poor real-time performance, high cost, and insufficient portability, a set of split low-latency prosthetic hand system based on sEMG signals was designed.First of all, the whole system was divided into two modules, with K210 as the central master for pattern recognition and a mechanical prosthetic hand controlled by STM32F103, using 2.4 G wireless transmission as the communication connection between the two parts, and using dual-channel EMG acquisition electrodes to collect data from the anterior segment of the elbow.The muscle signals on both sides were transmitted to the main control chip equipped with K210, and then the sliding window was used to judge the initial gesture action, and the high-performance design of the data window sliding was carried out so that the whole system could realize low-latency signal processing, and then The support vector machine pattern recognition algorithm was used to identify the action type of the electromyographic signal, and finally the action type corresponding to the identification result was sent to the mechanical prosthetic hand control terminal through wireless transmission.The experimental results showed that the real-time wearable mechanical prosthetic hand system with a split design had a comprehensive recognition rate of 95.28% for gestures based on SVM, and the real-time response time to actions was less than 110 ms.

     

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