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EMG Wrist-hand Motion Recognition System for Real-time Embedded Platform

机译:实时嵌入式平台的肌电腕部动作识别系统

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Electromyography (EMG) signal analysis is a popular method for controlling prosthetic and gesture control equipment. For portable systems, such as prosthetic limbs, real-time low-power operation on embedded processors is critical, but to date there has been no record of how existing EMG analysis approaches support such deployments. This paper presents a novel approach to time-domain classification of multichannel EMG signals harnessed from randomly-placed sensors according to the wrist-hand movements which caused their occurrence. It shows how, by employing a very small set of time-domain features, Kernel Fisher discriminant feature projection and Radial Bias Function neural network classifiers, nine wrist-hand movements can be detected with accuracy exceeding 99% - surpassing the state-of-the-art on record. It also shows how, when deployed on ARM Cortex-A53, the processing time is not only sufficient to enable real-time processing but is also a factor 50 shorter than the leading time-frequency techniques on record.
机译:肌电图(EMG)信号分析是一种用于控制假肢和手势控制设备的流行方法。对于假肢等便携式系统,嵌入式处理器上的实时低功耗操作至关重要,但迄今为止,尚无任何有关现有EMG分析方法如何支持此类部署的记录。本文提出了一种新的方法,可以根据造成手腕动作的手腕运动,对随机放置的传感器利用的多通道EMG信号进行时域分类。它显示了如何通过使用极少量的时域特征,Kernel Fisher判别特征投影和径向偏置函数神经网络分类器,可以检测到九种腕部手部运动,其准确性超过99%-超越了现状-有记录的艺术。它还显示了在ARM Cortex-A53上部署时,处理时间不仅足以实现实时处理,而且比记录中领先的时频技术短50倍。

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