Real-Time Classification of Multi-Channel Forearm EMG to Recognize Hand Movements using Effective Feature Combination and LDA Classifier

Muhammad S. Alam, A. Arefin
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引用次数: 7

Abstract

Electromyography (EMG) signals acquired from surface of arms can be crucial in recognizing nature of hand gestures. The concept is used in current highly demanding fields such as controlling prosthetic limbs, diagnosing neuromuscular disorders, manipulation of robotic arm etc. The purpose of the work was to classify a set of hand motions from corresponding multi-channel surface EMG signals by developing MATLAB tools. The research focused on extracting multiple signal features and finding the appropriate combination of extracted intelligible features to get the best classification accuracy for the specific set of hand gestures. For dynamic and fast classification purpose, linear discriminant analysis (LDA) classifier was employed. Effect of feature dimensionality reduction on classification accuracy was also investigated via Principal Component Analysis (PCA) in this research. Finally, the research analyzed different electrode placements by comparing classification accuracy for each of the set of motions and proposed a simple and compact data acquisition instrumentation having less number of electrodes while maintaining high classification accuracy.Bangladesh Journal of Medical Physics Vol.10 No.1 2017 25-39
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基于有效特征组合和LDA分类器的多通道前臂肌电图实时分类识别手部运动
从手臂表面获得的肌电图(EMG)信号对于识别手势的性质是至关重要的。这个概念被用于当前高要求的领域,如控制假肢、诊断神经肌肉疾病、操纵机械臂等。本工作的目的是通过开发MATLAB工具,从相应的多通道表面肌电信号中对一组手部动作进行分类。研究的重点是提取多个信号特征,并找到提取的可理解特征的合适组合,以获得特定手势集的最佳分类精度。为了达到动态、快速分类的目的,采用了线性判别分析(LDA)分类器。本研究还通过主成分分析(PCA)研究了特征降维对分类精度的影响。最后,通过对每组动作的分类精度进行比较,分析了不同电极放置方式,提出了一种结构简单、结构紧凑、电极数量少、分类精度高的数据采集仪器。孟加拉国医学物理杂志Vol.10 No.1 2017 25-39
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