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肌电假肢中基于时空信息交互的肌电信号分类研究。

Study on Interaction Between Temporal and Spatial Information in Classification of EMG Signals for Myoelectric Prostheses.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2017 Oct;25(10):1832-1842. doi: 10.1109/TNSRE.2017.2687761. Epub 2017 Apr 19.

Abstract

Advanced forearm prosthetic devices employ classifiers to recognize different electromyography (EMG) signal patterns, in order to identify the user's intended motion gesture. The classification accuracy is one of the main determinants of real-time controllability of a prosthetic limb and hence the necessity to achieve as high an accuracy as possible. In this paper, we study the effects of the temporal and spatial information provided to the classifier on its off-line performance and analyze their inter-dependencies. EMG data associated with seven practical hand gestures were recorded from partial-hand and trans-radial amputee volunteers as well as able-bodied volunteers. An extensive investigation was conducted to study the effect of analysis window length, window overlap, and the number of electrode channels on the classification accuracy as well as their interactions. Our main discoveries are that the effect of analysis window length on classification accuracy is practically independent of the number of electrodes for all participant groups; window overlap has no direct influence on classifier performance, irrespective of the window length, number of channels, or limb condition; the type of limb deficiency and the existing channel count influence the reduction in classification error achieved by adding more number of channels; partial-hand amputees outperform trans-radial amputees, with classification accuracies of only 11.3% below values achieved by able-bodied volunteers.

摘要

先进的前臂假肢设备采用分类器来识别不同的肌电图(EMG)信号模式,以识别用户的预期运动手势。分类准确性是假肢实时可控性的主要决定因素之一,因此有必要尽可能提高准确性。在本文中,我们研究了向分类器提供的时间和空间信息对其离线性能的影响,并分析了它们的相互依赖性。从部分手截肢和桡骨截肢志愿者以及健全志愿者身上记录了与七个实际手部手势相关的 EMG 数据。我们进行了广泛的研究,以研究分析窗口长度、窗口重叠和电极通道数量对分类准确性的影响及其相互作用。我们的主要发现是,对于所有参与者群体,分析窗口长度对分类准确性的影响实际上与电极数量无关;窗口重叠对分类器性能没有直接影响,无论窗口长度、通道数量或肢体状况如何;肢体缺陷的类型和现有的通道数量会影响通过增加更多数量的通道来减少分类错误;部分手截肢者的表现优于桡骨截肢者,其分类准确率仅比健全志愿者低 11.3%。

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