Nayab Maham, Waris Asim, Jawad Khan Muhammad, AlQahtani Dokhyl, Imran Ahmed, Gilani Syed Omer, Shah Umer Hameed
National University of Science and Technology, Islamabad, Pakistan.
Department of Electrical Engineering, School of Engineering, Prince Sattam Bin Abdul Aziz University, Al-Kharj, Saudi Arabia.
Front Artif Intell. 2025 Jan 22;8:1506042. doi: 10.3389/frai.2025.1506042. eCollection 2025.
Electromyography (EMG) signals have gained significant attention due to their potential applications in prosthetics, rehabilitation, and human-computer interfaces. However, the dimensionality of EMG signal features poses challenges in achieving accurate classification and reducing computational complexity. To overcome such issues, this paper proposes a novel approach that integrates feature reduction techniques with an artificial neural network (ANN) classifier to enhance the accuracy of high-dimensional EMG classification. This approach aims to improve the classification accuracy of EMG signals while substantially reducing computational costs, offering valuable implications for all EMG-related processes on such data. The proposed methodology involves extracting time and frequency domain features from twelve channels of EMG signals, followed by dimensionality reduction using techniques such as PCA, LDA, PPCA, Lasso and GPLVM, and classification using an ANN. Our investigation revealed that LDA is not appropriate for this dataset. The dimensionality reduction models did not have any significant effect on the accuracy, but the computational cost decreased significantly. In individual comparisons, GPLVM had the shortest computational time (29 s), which was significantly less than that of all the other models ( < 0.05), with PCA following at approximately 35 s and Relief at approximately 57 s, while PPCA took approximately 69 s, and Lasso exhibited higher computational costs than all the models but lower computational costs than did the original set. Using the best-performing features, all possible sets of 2, 3, 4 and 5 features were tested, and the 5-feature set exhibited the best performance. This research demonstrates the effectiveness of dimensionality reduction and feature selection in improving the accuracy of movement recognition in myoelectric control.
肌电图(EMG)信号因其在假肢、康复和人机接口方面的潜在应用而备受关注。然而,EMG信号特征的维度给实现准确分类和降低计算复杂度带来了挑战。为克服这些问题,本文提出一种新颖方法,将特征约简技术与人工神经网络(ANN)分类器相结合,以提高高维EMG分类的准确性。该方法旨在提高EMG信号的分类准确性,同时大幅降低计算成本,为处理此类数据的所有与EMG相关的过程提供有价值的启示。所提出的方法包括从12个通道的EMG信号中提取时域和频域特征,然后使用主成分分析(PCA)、线性判别分析(LDA)、概率主成分分析(PPCA)、套索回归(Lasso)和高斯过程潜变量模型(GPLVM)等技术进行降维,并使用ANN进行分类。我们的研究表明LDA不适用于此数据集。降维模型对准确性没有显著影响,但计算成本显著降低。在单独比较中,GPLVM的计算时间最短(29秒),显著低于所有其他模型(<0.05),PCA约为35秒,Relief约为57秒,PPCA约为69秒,Lasso的计算成本高于所有模型,但低于原始数据集。使用性能最佳的特征,对所有可能的2、3、4和5特征集进行了测试,5特征集表现出最佳性能。本研究证明了降维和特征选择在提高肌电控制中运动识别准确性方面的有效性。