4.6 Article

A novel statistical decimal pattern-based surface electromyogram signal classification method using tunableq-factor wavelet transform

Journal

SOFT COMPUTING
Volume 25, Issue 2, Pages 1085-1098

Publisher

SPRINGER
DOI: 10.1007/s00500-020-05205-y

Keywords

Statistical decimal pattern; Tunableqwavelet transform; sEMG identification; Signal processing; Pattern recognition

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A new method using statistical decimal pattern and tunable Q-factor wavelet transform has been proposed in this study, which achieved high accuracy rates in surface electromyogram signal classification and outperformed other state-of-the-art methods according to the experimental results.
Surface electromyogram sensors have been widely used to acquire hand gestures signals. Many machine learning and artificial intelligence methods have been presented for automated surface electromyogram signals classification. In this method, a novel surface electromyogram signals recognition method is presented using a novel 1D local descriptor. The proposed descriptor is called as statistical decimal pattern and it is utilized as feature extractor in this study and tunableq-factor wavelet transform is used as pooling in this method. By using tunableq-factor wavelet transform and the proposed statistical decimal pattern, a multileveled learning method is constructed. Ten levels are created by using tunableq-factor wavelet transform. Statistical decimal pattern extracts features from tunableq-factor wavelet transform sub-bands of the raw surface electromyogram signal. Then, the generated features are concatenated, and to select distinctive features, ReliefF and neighborhood component analysis are used together. In the classification phase,k-nearest neighbor classifier with city block distance is chosen. To test performance of the proposed tunableq-factor wavelet transform and the proposed statistical decimal pattern-based surface electromyogram classification method, a freely and publicly published dataset was used. In this dataset, 10 hand gestures were defined. Experimental results clearly shown that the proposed tunableqwavelet transform and statistical decimal pattern-based method achieved 98.0%, 99.79% accuracy rates on two datasets and it outcomes other state-of-the-art methods according to these results.

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