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A neural network-based electromyography motion classifier for upper limb activities

机译:基于神经网络的肌电运动分类器用于上肢活动

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The objective of the work is to investigate the classification of different movements based on the surface electromyogram (SEMG) pattern recognition method. The testing was conducted for four arm movements using several experiments with artificial neural network classification scheme. Six time domain features were extracted and consequently classification was implemented using back propagation neural classifier (BPNC). Further, the realization of projected network was verified using cross validation (CV) process; hence ANOVA algorithm was carried out. Performance of the network is analyzed by considering mean square error (MSE) value. A comparison was performed between the extracted features and back propagation network results reported in the literature. The concurrent result indicates the significance of proposed network with classification accuracy (CA) of 100% recorded from two channels, while analysis of variance technique helps in investigating the effectiveness of classified signal for recognition ...
机译:该工作的目的是研究基于表面肌电图(SEMG)模式识别方法的不同动作的分类。测试是使用人工神经网络分类方案的几个实验对四臂运动进行的。提取了六个时域特征,因此使用反向传播神经分类器(BPNC)进行了分类。此外,使用交叉验证(CV)流程验证了投影网络的实现;因此进行了方差分析算法。通过考虑均方误差(MSE)值来分析网络的性能。在提取的特征和文献报道的反向传播网络结果之间进行了比较。并行结果表明了从两个通道记录的分类精度(CA)为100%的网络的重要性,而方差分析技术则有助于研究分类信号对识别信号的有效性。

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