Optimisation and Classification of EMG signal using PSO-ANN

Virendra Prasad Maurya, Prashant Kumar, S. Halder
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引用次数: 5

Abstract

Qualitative feature extraction from Electromyogram (EMG) signal has become necessary to assess the fitness of human being. Till date, various analysis tools have been employed to examine the EMG signal. Here the authors are endeavored to apply PSO-ANN based optimisation and two classification tools, namely KNN (nearest neighbor) and SVM (support vector machine) to extract features from EMG signal. EMG signal represents the signal generated by neuron from the brain, which is transmitted through the spinal cord into the body to which part is guided by the brain. The EMG signal is computed by Biopac MP45 Biomedical measurement device which is further divided into five-second segments for each activity. Unwanted EMG signal is regarded as noise and is filtered by an appropriate filter to improve the signal to noise ratio. Fourteen different time-domain and frequency domain features have been extracted for different hand movement (Weight lifting Up, Weight lifting Down, movement of Hand Gripper). Both hands are utilized for acquisition of EMG for hand grip movement. Classifier Model is used in classifying the optimised features and calculation of sensitivity, selectivity and precision of those features. From results it is evident that better accuracy is achieved for classifier KNN with respect to SVM.
基于PSO-ANN的肌电信号优化与分类
对肌电信号进行定性特征提取已成为评估人体适应度的必要条件。迄今为止,各种分析工具已被用于检查肌电图信号。在这里,作者尝试应用基于PSO-ANN的优化和两种分类工具,即KNN(最近邻)和SVM(支持向量机)从肌电信号中提取特征。肌电图信号是神经元从大脑产生的信号,通过脊髓传递到身体,由大脑引导到达身体的部分。肌电图信号由Biopac MP45生物医学测量设备计算,并进一步将每个活动分为5秒的片段。不需要的肌电信号被视为噪声,并通过适当的滤波器进行滤波,以提高信噪比。针对不同的手部运动(举重物、举重物、抓手器运动),提取了14种不同的时域和频域特征。双手被用来获取手握运动的肌电图。利用分类器模型对优化后的特征进行分类,计算特征的灵敏度、选择性和精度。从结果可以看出,相对于支持向量机,KNN分类器获得了更好的精度。
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