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JACIII Vol.29 No.5 pp. 1172-1181
doi: 10.20965/jaciii.2025.p1172
(2025)

Research Paper:

Improved Fuzzy Adaptive Membership Function Algorithm for High-Density Surface Electromyography Based Hand Gesture Classification

Yidong He* ORCID Icon, Yinfeng Fang*,† ORCID Icon, Yunhao Zhang* ORCID Icon, and Dalin Zhou** ORCID Icon

*Department of Communication Engineering, Hangzhou Dianzi University
No.1158 Ave. 2, Qiantang District, Hangzhou, Zhejiang Province 310018, China

Corresponding author

**School of Computing, University of Portsmouth
University House, Winston Churchill Avenue, Portsmouth, Hampshire PO 3, United Kingdom

Received:
March 31, 2025
Accepted:
May 27, 2025
Published:
September 20, 2025
Keywords:
gesture classification, surface electromyography, parameter adaptation, fuzzy improvement, membership function
Abstract

Gesture classification based on high-density surface electromyography (HD-sEMG) is a key research area for assisting prosthetic users in rehabilitation. The existing algorithms have practical applications, although their efficiency and convenience may still require improvement. This study proposes an improved fuzzy adaptive membership function algorithm (IFAMF) to enhance classification accuracy and system robustness. Following data preprocessing, four types of features were extracted from different perspectives. During feature fuzzification, a reinforcement learning algorithm was employed to adaptively select the membership function type, with parameters determined via gradient descent, and these parameters were further refined using particle swarm optimization. Five well-established and reliable classifiers were selected for classification, and their performance was evaluated using a publicly available dataset. The experimental results demonstrated that under single-feature classification, the accuracy improved from 78.89% to 88.09%, with an average increase of 9.20%. Under the optimal feature combination, the final average accuracy reached 92.69%, with performance improvements across the classifiers ranging from 3.08% to 10.36%. These findings validate the superiority of the proposed method and suggest a promising direction for its integration with more advanced classifiers and feature extraction techniques to achieve more precise and intelligent prosthetic control.

Flowchart of the improved fuzzy adaptive membership function method

Flowchart of the improved fuzzy adaptive membership function method

Cite this article as:
Y. He, Y. Fang, Y. Zhang, and D. Zhou, “Improved Fuzzy Adaptive Membership Function Algorithm for High-Density Surface Electromyography Based Hand Gesture Classification,” J. Adv. Comput. Intell. Intell. Inform., Vol.29 No.5, pp. 1172-1181, 2025.
Data files:
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Last updated on Sep. 19, 2025