Optimizing the performance of convolutional neural network for enhanced gesture recognition using sEMG

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作者
Hassan Ashraf
Asim Waris
Syed Omer Gilani
Uzma Shafiq
Javaid Iqbal
Ernest Nlandu Kamavuako
Yaakoub Berrouche
Olivier Brüls
Mohamed Boutaayamou
Imran Khan Niazi
机构
[1] University of Liège,Laboratory of Movement Analysis (LAM
[2] National University of Science and Technology (NUST),Motion Lab)
[3] Abu Dhabi University,Department of Biomedical Engineering and Sciences, School of Mechanical and Manufacturing Engineering (SMME)
[4] King’s College London,Department of Electrical, Computer and Biomedical Engineering, Faculty of Engineering
[5] Ferhat Abbas University Setif 1,Department of Informatics
[6] New Zealand College of Chiropractic,LIS Laboratory, Department of Electronics, Faculty of Technology
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摘要
Deep neural networks (DNNs) have demonstrated higher performance results when compared to traditional approaches for implementing robust myoelectric control (MEC) systems. However, the delay induced by optimising a MEC remains a concern for real-time applications. As a result, an optimised DNN architecture based on fine-tuned hyperparameters is required. This study investigates the optimal configuration of convolutional neural network (CNN)-based MEC by proposing an effective data segmentation technique and a generalised set of hyperparameters. Firstly, two segmentation strategies (disjoint and overlap) and various segment and overlap sizes were studied to optimise segmentation parameters. Secondly, to address the challenge of optimising the hyperparameters of a DNN-based MEC system, the problem has been abstracted as an optimisation problem, and Bayesian optimisation has been used to solve it. From 20 healthy people, ten surface electromyography (sEMG) grasping movements abstracted from daily life were chosen as the target gesture set. With an ideal segment size of 200 ms and an overlap size of 80%, the results show that the overlap segmentation technique outperforms the disjoint segmentation technique (p-value < 0.05). In comparison to manual (12.76 ± 4.66), grid (0.10 ± 0.03), and random (0.12 ± 0.05) search hyperparameters optimisation strategies, the proposed optimisation technique resulted in a mean classification error rate (CER) of 0.08 ± 0.03 across all subjects. In addition, a generalised CNN architecture with an optimal set of hyperparameters is proposed. When tested separately on all individuals, the single generalised CNN architecture produced an overall CER of 0.09 ± 0.03. This study's significance lies in its contribution to the field of EMG signal processing by demonstrating the superiority of the overlap segmentation technique, optimizing CNN hyperparameters through Bayesian optimization, and offering practical insights for improving prosthetic control and human–computer interfaces.
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