Article ID Journal Published Year Pages File Type
384422 Expert Systems with Applications 2012 12 Pages PDF
Abstract

Feature extraction is a significant method to extract the useful information which is hidden in surface electromyography (EMG) signal and to remove the unwanted part and interferences. To be successful in classification of the EMG signal, selection of a feature vector ought to be carefully considered. However, numerous studies of the EMG signal classification have used a feature set that have contained a number of redundant features. In this study, most complete and up-to-date thirty-seven time domain and frequency domain features have been proposed to be studied their properties. The results, which were verified by scatter plot of features, statistical analysis and classifier, indicated that most time domain features are superfluity and redundancy. They can be grouped according to mathematical property and information into four main types: energy and complexity, frequency, prediction model, and time-dependence. On the other hand, all frequency domain features are calculated based on statistical parameters of EMG power spectral density. Its performance in class separability viewpoint is not suitable for EMG recognition system. Recommendation of features to avoid the usage of redundant features for classifier in EMG signal classification applications is also proposed in this study.

► Complete and up-to-date 37 EMG feature extractions are proposed in review and theory. ► Redundancy of EMG features in time and frequency domains are pointed. ► Most time domain features show redundancy which were evaluated by scatter plots. ► EMG features based on frequency domain are not good in EMG signal classification. ► Some features are recommended through the experiments in this study.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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