Department of Electrical Engineering, Malaviya National Institute of Technology, Jaipur, India.
Department of Electrical Engineering, Swami Keshvanand Institute of Technology, Management & Gramothan, Jaipur, India.
Phys Eng Sci Med. 2021 Dec;44(4):1297-1309. doi: 10.1007/s13246-021-01071-6. Epub 2021 Nov 8.
Surface electromyography (sEMG) signal classification has many applications such as human-machine interaction, diagnosis of kinesiological studies, and neuromuscular diseases. However, these signals are complicated because of different artifacts added to the sEMG signal during recording. In this study, a multi-stage classification technique is proposed for the identification of distinct movements of the lower limbs using sEMG signals acquired from leg muscles of healthy knee and abnormal knee subjects. This investigation involves 11 subjects with a knee abnormality and 11 without knee abnormality for three distinct activities viz. walking, leg extension from sitting position (sitting), and flexion of the leg (standing). Discrete wavelet denoising to fourth level decomposition has been implemented for the artifact reduction and the signal has been segmented using overlapping windowing technique. A study of four different architectures of 1D convolutional neural network models is undertaken for the prediction of lower limb activities and the final prediction is achieved via a voting mechanism of all four model results. The performance parameters of CNN models have been calculated for three different cases: (1) healthy subjects (2) subjects with knee abnormality (3) Pooled data (combination of abnormal knee and healthy knee subjects) using nested threefold cross-validation. It has been found that the voting mechanism yields an average classification accuracy as 99.35%, 97.63%, and 97.14% for healthy subjects, knee abnormal subjects, and pooled data, respectively. The result validates that the proposed voting-based 1D CNN model is efficient and useful in lower limb activity recognition using the sEMG signal.
表面肌电图(sEMG)信号分类在人机交互、运动学研究诊断和神经肌肉疾病等方面有许多应用。然而,这些信号很复杂,因为在记录过程中会向 sEMG 信号添加不同的伪影。在这项研究中,提出了一种多阶段分类技术,用于使用从健康膝关节和异常膝关节受试者腿部肌肉获取的 sEMG 信号识别下肢的不同运动。该研究涉及 11 名膝关节异常受试者和 11 名无膝关节异常受试者,进行三种不同的活动,即行走、从坐姿伸展腿部(坐姿)和腿部弯曲(站立)。已经实现了四阶分解的离散小波去噪,以减少伪影,并使用重叠窗口技术对信号进行分段。对 1D 卷积神经网络模型的四种不同结构进行了研究,用于预测下肢活动,最终预测是通过所有四个模型结果的投票机制实现的。使用嵌套三折交叉验证,对 CNN 模型的性能参数进行了计算,分为三种情况:(1)健康受试者,(2)膝关节异常受试者,(3)异常膝关节和健康膝关节受试者的混合数据。结果表明,投票机制分别为健康受试者、膝关节异常受试者和混合数据提供了 99.35%、97.63%和 97.14%的平均分类准确率。验证了基于投票的 1D CNN 模型在使用 sEMG 信号进行下肢活动识别方面是高效和有用的。