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倒谱系数和最大似然法在肌电图模式识别中的应用。

The application of cepstral coefficients and maximum likelihood method in EMG pattern recognition.

作者信息

Kang W J, Shiu J R, Cheng C K, Lai J S, Tsao H W, Kuo T S

机构信息

Department of Electrical Engineering, National Taiwan University, R.O.C.

出版信息

IEEE Trans Biomed Eng. 1995 Aug;42(8):777-85. doi: 10.1109/10.398638.

Abstract

A new technique for classifying patterns of movement via electromyographic (EMG) signals is presented. Two methods (conventional autoregressive (AR) coefficients and cepstral coefficients) for extracting features from EMG signals and three classification algorithms (Euclidean Distance Measure (EDM), Weighted Distance Measure (WDM), and Maximum Likelihood Method (MLM)) for discriminating signals representative of broad classes of movements are described and compared. These three classifiers are derived from Bayes classifier with some assumptions, the relationship among them is discussed. The conventional MLM is modified to avoid heavy matrix inversion. Six able-bodied subjects with two pairs of surface electrodes located on bilateral sternocleidomastoid and upper trapezius muscles were studied in the experiment. The EMG signals of 20 repetitions of 10 motions were analyzed for each subject. Experimental results showed that mean recognition rate of the cepstral coefficients was at least 5% superior to that of the AR coefficients. The improvement achieved by the cepstral method was statistically significant for all the three classifiers. Reasons for the superiority of cepstral features were investigated from the feature space and frequency domain, respectively. The cepstral coefficients owned better cluster separability in feature space and they emphasized the more informative part in the frequency domain. The discrimination rate of the MLM was the highest among three classifiers. Incorporation of the cepstral features with the MLM could reduce the misclassification rate by 10.6% when compared with the combination of AR coefficients and EDM. Proper choice of five of ten motions could further raise the recognition rate to more than 95%.

摘要

提出了一种通过肌电图(EMG)信号对运动模式进行分类的新技术。描述并比较了两种从EMG信号中提取特征的方法(传统自回归(AR)系数和倒谱系数)以及三种用于区分代表广泛运动类别的信号的分类算法(欧几里得距离度量(EDM)、加权距离度量(WDM)和最大似然法(MLM))。这三种分类器是在一些假设下从贝叶斯分类器推导出来的,讨论了它们之间的关系。对传统的MLM进行了修改以避免繁重的矩阵求逆。在实验中研究了六名身体健全的受试者,他们在双侧胸锁乳突肌和上斜方肌上放置了两对表面电极。对每个受试者的10种运动的20次重复的EMG信号进行了分析。实验结果表明,倒谱系数的平均识别率比AR系数至少高5%。倒谱方法所实现的改进对所有三种分类器在统计学上都是显著的。分别从特征空间和频域研究了倒谱特征优越性的原因。倒谱系数在特征空间中具有更好的聚类可分性,并且它们在频域中强调了信息更丰富的部分。MLM的判别率在三种分类器中最高。与AR系数和EDM的组合相比,将倒谱特征与MLM相结合可以将误分类率降低10.6%。正确选择十种运动中的五种可以进一步将识别率提高到95%以上。

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