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Accurate EMG onset detection in pathological, weak and noisy myoelectric signals

机译:在病理,微弱和嘈杂的肌电信号中进行准确的EMG起病检测

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摘要

In this paper, we propose an alternative onset detection method dealing with pathological, weak and noisy myoelectric signals. We evaluate our method on simulated, offline EMG signals, which are supposed to be generated from a relatively small number of motor units (MU's) with various muscle contraction levels and pathological characteristics. These simulated signals were scaled and then superimposed to a standard white noise to obtain various signal conditions (signal noise ratio, SNR). We utilize the Teager-Kaiser Energy (TKE) operator as a fore-processing procedure to highlight amplitude variation on the onset point, and employ two image enhancement technologies, namely, morphological close operator (MCO) and morphological open operator (MOO), as successive post-processing procedures to filter out onset artefacts. A synthesized index for evaluating the method is proposed, which can optimize the parameters according to specific signal conditions. Comparing with other approaches, our method is simple and competitive in accuracy and reliability, especially for the pathological EMG signals in low SNR's. Result on clinic EMG signals that collected from healthy subjects and patients with amyotrophic lateral sclerosis and myopathy also verifies our design. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在本文中,我们提出了一种用于处理病理性,微弱和有噪声的肌电信号的替代性发作检测方法。我们在模拟的离线EMG信号上评估我们的方法,该信号可能是由相对较少数量的具有各种肌肉收缩水平和病理特征的运动单元(MU)产生的。缩放这些模拟信号,然后将其叠加到标准白噪声中,以获得各种信号条件(信号噪声比,SNR)。我们利用Teager-Kaiser能量(TKE)运算符作为前处理程序来突出显示起始点上的振幅变化,并采用两种图像增强技术,即形态学闭合运算符(MCO)和形态学开放运算符(MOO),作为连续的后处理程序,以过滤掉假象。提出了一种综合评价该方法的指标,可以根据具体信号条件对参数进行优化。与其他方法相比,我们的方法简单且在准确性和可靠性方面具有竞争力,特别是对于低SNR的病理EMG信号而言。从健康受试者和肌萎缩性侧索硬化症和肌病患者收集的临床EMG信号结果也验证了我们的设计。 (C)2016 Elsevier Ltd.保留所有权利。

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