期刊
COMPUTATIONAL INTELLIGENCE AND NEUROSCIENCE
卷 2022, 期 -, 页码 -出版社
HINDAWI LTD
DOI: 10.1155/2022/6414664
关键词
-
资金
- Xiamen University Malaysia [XMUMRF/2020-C6/IECE/0017, XMUMRF/2021-C8/IECE/0021]
- Information and Communication Technology Division, Ministry of Posts, Telecommunications and Information Technology, Government of Bangladesh [56.00.0000.028.33.098.18-219]
- Universiti Kebangsaan Malaysia [DPK-2021-001, GUP-2021-019, TAP-K017701]
This study proposes two time-domain features based on nonlinear scaling, LMAV and NSV, for electromyogram (EMG) pattern recognition. Experimental results show that the proposed feature extraction method improves the performance of EMG pattern recognition.
The multichannel electrode array used for electromyogram (EMG) pattern recognition provides good performance, but it has a high cost, is computationally expensive, and is inconvenient to wear. Therefore, researchers try to use as few channels as possible while maintaining improved pattern recognition performance. However, minimizing the number of channels affects the performance due to the least separable margin among the movements possessing weak signal strengths. To meet these challenges, two time-domain features based on nonlinear scaling, the log of the mean absolute value (LMAV) and the nonlinear scaled value (NSV), are proposed. In this study, we validate the proposed features on two datasets, the existing four feature extraction methods, variable window size, and various signal-to-noise ratios (SNR). In addition, we also propose a feature extraction method where the LMAV and NSV are grouped with the existing 11 time-domain features. The proposed feature extraction method enhances accuracy, sensitivity, specificity, precision, and F1 score by 1.00%, 5.01%, 0.55%, 4.71%, and 5.06% for dataset 1, and 1.18%, 5.90%, 0.66%, 5.63%, and 6.04% for dataset 2, respectively. Therefore, the experimental results strongly suggest the proposed feature extraction method, for taking a step forward with regard to improved myoelectric pattern recognition performance.
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