Development of a Novel Post-Processing Algorithm for Myoelectric Pattern Classification

Q4 Engineering
M. Kasuya, R. Kato, H. Yokoi
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引用次数: 2

Abstract

This paper describes a novel post-processing algorithm for electromyographic (EMG) pattern classification, for use with myoelectric prosthetic hands. Amputees have difficulties controlling multiple degrees of freedom, but there is an increasing number of prosthetic hands with multiple degrees of freedom. Generally, an increasing number of classes decreases the classification accuracy. Artificial neural networks have been used for EMG pattern classification in previous studies. The proposed post-processing algorithm stores the temporal sequence of classifications from the EMG pattern classification algorithm, and runs a second classification based on the sequential patterns. We compared the accuracy of the output before and after the post-processing step. In our experiment, we set the training time of the EMG pattern classification algorithm to 1 s for each class, and used three channels of surface EMG signals. We selected 7 and 9 classes of EMG patterns, and recorded the output every 10-20 ms. The classification accuracy improved by 11.5% with 7 classes, and 17.7% with 9 classes. The overall accuracy of the proposed system was 82.5% for 9 classes and 92.9% for 7 classes. With the adequately high classification accuracy and other features(small number of EMG channels and short training time), the proposed method is potentially suitable for practical use with prosthetic hands.
一种新的肌电模式分类后处理算法的发展
本文描述了一种用于肌电义肢的肌电图(EMG)模式分类的后处理算法。截肢者很难控制多个自由度,但是越来越多的具有多个自由度的假手出现了。一般来说,分类数量的增加会降低分类的准确性。在以往的研究中,人工神经网络已被用于肌电模式分类。提出的后处理算法存储EMG模式分类算法的分类时间序列,并基于顺序模式运行第二次分类。我们比较了后处理步骤前后输出的精度。在我们的实验中,我们将肌电模式分类算法的训练时间设置为每类1 s,并使用3个表面肌电信号通道。我们选择了7类和9类肌电图,每10-20 ms记录一次输出。7类和9类的分类准确率分别提高了11.5%和17.7%。该系统对9个类别的总体准确率为82.5%,对7个类别的总体准确率为92.9%。该方法具有足够高的分类准确率和其他特点(肌电信号通道数量少、训练时间短),具有潜在的假手实际应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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