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Using the sEMG signal representativity improvement towards upper-limb movement classification reliability

机译:使用sEMG信号代表性改善上肢运动分类的可靠性

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摘要

Several Machine Learning techniques have been employed to process sEMG signals in order to provide a reliable control biosignal. Although some papers report accuracy rates superior to 90%, there is a lack of more detailed reasoning for reliable systems capable of providing control signals to users that may, for instance, control a prosthetic device. In this paper, we combined two strategies in order to increase the representativity of the sEMG signals: (a) the use of a stochastic filter based on Antonyan Vardan Transform (AVT) prior the extraction of the signal features that reduces the stochastic behavior of the sEMG signal; and (b) a novel sEMG feature called Differential Enhanced Signal (DES), designed to increase the signal representativity in the sEMG transition sections where features based on time-domain are usually inefficient. Thus, using only RMS and DES features, we were able to mitigate the class overlap in the transition sections and consequentially increase the overall classification accuracy for training and testing of the system. Since a reliable output signal is desired to perform ultimate prosthetic control, a reliability metric was defined and evaluated, and once a non-reliable classification is detected, the system autonomously activates auxiliary methods based on post-processing and data discard to maintain the classification consistency. Three preliminary scenarios involving the AVT filter, a Wavelet filter and the unfiltered signal were compared in terms of accuracy rate to define the most efficient filtering technique. The signal representation using the combination of RMS and DES features was also compared to a set of Time Domain (TD) features to test its enhancement capabilities. The AVT-based filter and the DES feature were able to present higher accuracy rates in both accuracy scenarios tested. Three different databases including 60 subjects among amputees and non-amputees were used to appraise the system, which was able to reach a mean accuracy rate of 99.1% in the best-case scenario. (C) 2018 Elsevier Ltd. All rights reserved.
机译:为了提供可靠的控制生物信号,已经采用了几种机器学习技术来处理sEMG信号。尽管有些论文报告的准确率超过90%,但是对于能够向用户提供控制信号(例如,可以控制假体设备)的可靠系统,尚缺乏更详细的说明。在本文中,我们组合了两种策略以提高sEMG信号的代表性:(a)在提取信号特征之前使用基于Antonyan Vardan变换(AVT)的随机滤波器,以降低信号的随机性。 sEMG信号; (b)一种新颖的sEMG功能,称为差分增强信号(DES),旨在提高sEMG过渡部分的信号代表性,在这些部分中,基于时域的功能通常效率低下。因此,仅使用RMS和DES功能,我们就可以减轻过渡部分中的类重叠,从而提高系统训练和测试的总体分类准确性。由于需要可靠的输出信号来执行最终的假体控制,因此定义并评估了可靠性指标,并且一旦检测到不可靠的分类,系统便会基于后处理和数据丢弃自动激活辅助方法以维持分类的一致性。根据准确率比较了三种涉及AVT滤波器,小波滤波器和未滤波信号的初步方案,以定义最有效的滤波技术。还将使用RMS和DES功能组合的信号表示与一组时域(TD)功能进行了比较,以测试其增强功能。基于AVT的滤波器和DES功能能够在两种经过测试的精度方案中提供更高的精度。使用三个不同的数据库(包括60名被截肢者和非截肢者)对系统进行评估,在最佳情况下,该数据库的平均准确率达到99.1%。 (C)2018 Elsevier Ltd.保留所有权利。

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