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基于 MUAP 识别和分离的肌电控制模式识别系统的有效方法。

An efficient approach for EMG controlled pattern recognition system based on MUAP identification and segregation.

机构信息

Department of Electronics and Communication, Malviya National Institute of Technology, Jaipur, 302017, Rajasthan, India.

Department of Electronics and Communication, Malviya National Institute of Technology, Jaipur, 302017, Rajasthan, India.

出版信息

Comput Biol Med. 2024 Nov;182:109169. doi: 10.1016/j.compbiomed.2024.109169. Epub 2024 Sep 27.

Abstract

An Electromyography (EMG) based pattern recognition system constitutes various steps of signal processing and control engineering from signal acquisition to real-time control. Efficient control of external devices largely depends on the signal processing steps executed before the final output. This work presents a new approach to signal processing using Motor Unit Action Potential (MUAP) based signal decomposition and segmentation. An MUAP is a neurological response during muscle contraction. Due to the higher contact area of surface electrodes, MUAPs from multiple muscles are captured. An MUAP generated from a single muscle usually has identical waveshapes and similar discharging rates and usually lasts for 8-15 ms. These are known as primary MUAPs. The proposed algorithm identifies and uses the primary observed MUAPs for feature extraction and classification. Firstly, noise signals are eliminated by a determined noise margin, which also separates the active muscle movement signals. Next, a novel MUAP identification algorithm is implemented to detect the MUAP trains. Then, identified primary MUAPs are used to make segments with variable widths to extract feature vectors. Based on the correlation score of all the primary MUAPs, the segmentation is performed, which results in segmentation width varying from 110-200 ms. The achieved segmentation width is lesser than the conventional overlapping and non-overlapping methods - the proposed approach results in a 20 to 50% reduction in the segmentation width. Four different classifiers are tested during the machine learning stage to investigate the performance of the proposed approach. The obtained feature sets are then used to train the Linear Discriminant Analysis (LDA), K-Nearest Neighbor (kNN), Decision Tree (DT), and Random Forest (RF) classifiers. The classifiers are tested with precision, recall, F score, and accuracy. The kNN and DT classifiers performed better than the LDA and RF classifiers. The maximum precision and recall are 100% while the maximum achieved accuracy is 98.56%. The comparative results show higher accuracy even at lower segmentation widths than the conventional constant window scheme. The kNN and DT classifiers provide a 5% to 15% increment in accuracy compared to the constant window segmentation-based approach.

摘要

基于肌电图(EMG)的模式识别系统由从信号采集到实时控制的信号处理和控制工程的各个步骤组成。外部设备的高效控制在很大程度上取决于执行最终输出之前的信号处理步骤。这项工作提出了一种新的基于运动单位动作电位(MUAP)信号分解和分割的信号处理方法。MUAP 是肌肉收缩期间的神经反应。由于表面电极的较高接触面积,会捕获来自多个肌肉的 MUAP。源自单个肌肉的 MUAP 通常具有相同的波形和相似的放电率,并且通常持续 8-15ms。这些被称为主要 MUAP。所提出的算法识别并使用主要观察到的 MUAP 进行特征提取和分类。首先,通过确定的噪声裕量消除噪声信号,该噪声裕量还分离了活跃的肌肉运动信号。接下来,实现了一种新的 MUAP 识别算法来检测 MUAP 列车。然后,识别出的主要 MUAP 用于制作具有可变宽度的段以提取特征向量。基于所有主要 MUAP 的相关分数进行分段,从而导致分段宽度从 110-200ms 变化。所获得的分段宽度小于传统的重叠和非重叠方法-所提出的方法导致分段宽度减少 20%至 50%。在机器学习阶段测试了四种不同的分类器,以研究所提出方法的性能。然后使用线性判别分析(LDA)、K-最近邻(kNN)、决策树(DT)和随机森林(RF)分类器来训练所获得的特征集。使用精度、召回率、F 分数和准确性来测试分类器。kNN 和 DT 分类器的性能优于 LDA 和 RF 分类器。最大精度和召回率为 100%,而最大达到的准确性为 98.56%。比较结果表明,即使在较低的分段宽度下,精度也更高,甚至比传统的固定窗口方案更高。与基于固定窗口分段的方法相比,kNN 和 DT 分类器的精度提高了 5%至 15%。

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