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A comparative study of surface EMG classification by fuzzy relevance vector machine and fuzzy support vector machine

机译:模糊关联向量机和模糊支持向量机对表面肌电分类的比较研究

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摘要

We present a multiclass fuzzy relevance vector machine (FRVM) learning mechanism and evaluate its performance to classify multiple hand motions using surface electromyographic (sEMG) signals. The relevance vector machine (RVM) is a sparse Bayesian kernel method which avoids some limitations of the support vector machine (SVM). However, RVM still suffers the difficulty of possible unclassifiable regions in multiclass problems. We propose two fuzzy membership function-based FRVM algorithms to solve such problems, based on experiments conducted on seven healthy subjects and two amputees with six hand motions. Two feature sets, namely, AR model coefficients and room mean square value (AR-RMS), and wavelet transform (WT) features, are extracted from the recorded sEMG signals. Fuzzy support vector machine (FSVM) analysis was also conducted for wide comparison in terms of accuracy, sparsity, training and testing time, as well as the effect of training sample sizes. FRVM yielded comparable classification accuracy with dramatically fewer support vectors in comparison with FSVM. Furthermore, the processing delay of FRVM was much less than that of FSVM, whilst training time of FSVM much faster than FRVM. The results indicate that FRVM classifier trained using sufficient samples can achieve comparable generalization capability as FSVM with significant sparsity in multi-channel sEMG classification, which is more suitable for sEMG-based real-time control applications.
机译:我们提出了一种多类模糊相关矢量机(FRVM)学习机制,并评估其性能以使用表面肌电图(sEMG)信号对多个手部运动进行分类。相关向量机(RVM)是一种稀疏的贝叶斯核方法,它避免了支持向量机(SVM)的某些限制。但是,RVM仍然面临多类问​​题中可能无法分类的区域的困难。基于对七个健康受试者和两个截肢者六个手部动作进行的实验,我们提出了两种基于模糊隶属函数的FRVM算法来解决此类问题。从记录的sEMG信号中提取两个特征集,即AR模型系数和房间均方值(AR-RMS)和小波变换(WT)特征。还进行了模糊支持向量机(FSVM)分析,以在准确性,稀疏性,训练和测试时间以及训练样本量的影响方面进行广泛比较。与FSVM相比,FRVM具有可比的分类精度,支持向量大大减少。此外,FRVM的处理延迟远小于FSVM,而FSVM的训练时间却比FRVM快得多。结果表明,使用足够的样本训练的FRVM分类器可以实现与FSVM相当的泛化能力,而FSVM在多通道sEMG分类中具有显着的稀疏性,这更适合基于sEMG的实时控制应用。

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