基于MEMD和TK能量算子的肌电信号手势识别
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TN9117; R741044

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国家自然科学基金(61873259)、辽宁省自然科学基金计划(2019ZD0066)资助项目


Surface EMG signal hand motion recognition based on MEMD and TK energy operators
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    摘要:

    为提高肌电信号手势识别的准确率,提出基于时频域分析的肌电信号特征提取方法。该方法利用无线肌电信号采集装置获得肌电信号,采用基于多元经验模态分解(multivariate empirical mode decomposition,MEMD)和TK(TeagerKaiser)能量算子的肌电信号特征提取方法,利用多维尺度分析(multidimensional scaling,MDS)对多通道特征降维,采用线性判别分类器(linear discriminant analysis,LDA)对手势特征分类识别。将该算法应用于UCI数据库,手势识别准确率达9896%, 应用于自主采集数据库准确率达9937%,同时F1 score 具有明显提升。实验结果表明,与典型方法相比,所提出的肌电信号特征提取方法对手势识别的准确率更高。

    Abstract:

    To enhance the accuracy of gesture recognition using electromyogram(EMG) signals, we present an EMG signal feature extraction method based on timefrequence domain analysis. Firstly, a wireless EMG signal acquisition device is designed. Secondly, a gesture recognition method based on multivariate empirical mode decomposition (MEMD) and TeagerKaiser (TK) energy operator is proposed. Multidimensional scaling (MDS) method is used to reduce the dimensionality of multichannel features. then, linear discriminative classifier (LDA) is used to classify and recognize gesture features. The accuracy of this algorithm for UCI database can reach 9896%. The recognition accuracy for selfcollected database can reach 9937%. Meanwhile, F1 score also enhances significantly. The experiments verify that the method we proposed can reach a higher accuracy recognition results than other typical methods.

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裴晓敏,宋佳强,曹江涛,刘洪海.基于MEMD和TK能量算子的肌电信号手势识别[J].电子测量与仪器学报,2021,35(1):82-87

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  • 在线发布日期: 2022-10-28
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