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EMG feature assessment for myoelectric pattern recognition and channel selection: A study with incomplete spinal cord injury

机译:用于肌电模式识别和通道选择的肌电图特征评估:脊髓不完全损伤的研究

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摘要

Myoelectric pattern recognition with a large number of electromyogram (EMG) channels provides an approach to assessing motor control information available from the recorded muscles. In order to develop a practical myoelectric control system, a feature dependent channel reduction method was developed in this study to determine a small number of EMG channels for myoelectric pattern recognition analysis. The method selects appropriate raw EMG features for classification of different movements, using the minimum Redundancy Maximum Relevance (mRMR) and the Markov random field (MRF) methods to rank a large number of EMG features, respectively. A k-nearest neighbor (KNN) classifier was used to evaluate the performance of the selected features in terms of classification accuracy. The method was tested using 57 channels' surface EMG signals recorded from forearm and hand muscles of individuals with incomplete spinal cord injury (SCI). Our results demonstrate that appropriate selection of a small number of raw EMG features from different recording channels resulted in similar high classification accuracies as achieved by using all the EMG channels or features. Compared with the conventional sequential forward selection (SFS) method, the feature dependent method does not require repeated classifier implementation. It can effectively reduce redundant information not only cross different channels, but also cross different features in the same channel. Such hybrid feature-channel selection from a large number of EMG recording channels can reduce computational cost for implementation of a myoelectric pattern recognition based control system.
机译:具有大量肌电图(EMG)通道的肌电模式识别为评估可从记录的肌肉获得的运动控制信息提供了一种方法。为了开发实用的肌电控制系统,本研究开发了一种基于特征的通道减少方法,以确定用于肌电模式识别分析的少量EMG通道。该方法使用最小冗余最大相关性(mRMR)和马尔可夫随机域(MRF)方法分别对大量的EMG特征进行排序,从而为不同的运动分类选择合适的原始EMG特征。使用k最近邻(KNN)分类器根据分类精度评估所选特征的性能。使用从不完全脊髓损伤(SCI)的个体的前臂和手部肌肉记录的57个通道的表面肌电信号测试了该方法。我们的结果表明,从不同的记录通道中适当选择少量原始EMG特征会产生与使用所有EMG通道或特征所实现的相似的高分类精度。与传统的顺序前向选择(SFS)方法相比,基于特征的方法不需要重复的分类器实现。它可以有效地减少冗余信息,不仅可以跨越不同的渠道,而且可以跨越同一渠道中的不同功能。从大量的EMG记录通道中选择这种混合特征通道可以减少用于实现基于肌电模式识别的控制系统的计算成本。

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