School of Mechanical and Manufacturing Engineering, National University of Sciences and Technology (NUST), Islamabad 44000, Pakistan.
Department of Electrical and Computer Engineering, Memorial University of Newfoundland, St. John's, P.O. Box 4200, Newfoundland, NL A1C 5S7, Canada.
Sensors (Basel). 2020 Mar 15;20(6):1642. doi: 10.3390/s20061642.
Electromyography (EMG) is a measure of electrical activity generated by the contraction of muscles. Non-invasive surface EMG (sEMG)-based pattern recognition methods have shown the potential for upper limb prosthesis control. However, it is still insufficient for natural control. Recent advancements in deep learning have shown tremendous progress in biosignal processing. Multiple architectures have been proposed yielding high accuracies (>95%) for offline analysis, yet the delay caused due to optimization of the system remains a challenge for its real-time application. From this arises a need for optimized deep learning architecture based on fine-tuned hyper-parameters. Although the chance of achieving convergence is random, however, it is important to observe that the performance gain made is significant enough to justify extra computation. In this study, the convolutional neural network (CNN) was implemented to decode hand gestures from the sEMG data recorded from 18 subjects to investigate the effect of hyper-parameters on each hand gesture. Results showed that the learning rate set to either 0.0001 or 0.001 with 80-100 epochs significantly outperformed (p < 0.05) other considerations. In addition, it was observed that regardless of network configuration some motions (close hand, flex hand, extend the hand and fine grip) performed better (83.7% ± 13.5%, 71.2% ± 20.2%, 82.6% ± 13.9% and 74.6% ± 15%, respectively) throughout the course of study. So, a robust and stable myoelectric control can be designed on the basis of the best performing hand motions. With improved recognition and uniform gain in performance, the deep learning-based approach has the potential to be a more robust alternative to traditional machine learning algorithms.
肌电图(EMG)是肌肉收缩产生的电活动的测量。基于非侵入性表面肌电图(sEMG)的模式识别方法已显示出用于上肢假肢控制的潜力。然而,它仍然不足以进行自然控制。深度学习的最新进展在生物信号处理方面显示出了巨大的进步。已经提出了多种架构,离线分析的准确率超过 95%,但由于系统优化而导致的延迟仍然是其实时应用的挑战。由此产生了对基于微调超参数的优化深度学习架构的需求。尽管达到收敛的机会是随机的,但是,观察到所获得的性能增益足以证明额外的计算是合理的,这一点很重要。在这项研究中,实现了卷积神经网络(CNN)来解码 18 名受试者从 sEMG 数据记录中记录的手动作,以研究超参数对每个手动作的影响。结果表明,学习率设置为 0.0001 或 0.001 且具有 80-100 个时期时,性能显著优于其他考虑因素(p<0.05)。此外,观察到无论网络配置如何,某些运动(握拳、弯曲手、伸展手和精细握持)的性能都更好(分别为 83.7%±13.5%、71.2%±20.2%、82.6%±13.9%和 74.6%±15%)。因此,可以根据性能最佳的手动作设计稳健且稳定的肌电控制。通过提高识别率和性能的均匀增益,基于深度学习的方法有可能成为比传统机器学习算法更稳健的替代方法。