Department of Electrical and Electronics Engineering, Nehru Institute of Engineering and Technology, Coimbatore, India.
Department of Electronics and Communication Engineering, K.S. Rangasamy College of Technology, Tiruchengode, India.
Network. 2024 Nov;35(4):488-519. doi: 10.1080/0954898X.2024.2389231. Epub 2024 Aug 21.
Hand motion detection is particularly important for managing the movement of individuals who have limbs amputated. The existing algorithm is complex, time-consuming and difficult to achieve better accuracy. A DNN is suggested to recognize human hand movements in order to get over these problems.Initially, the raw input EMG signal is captured then the signal is pre-processed using high-pass Butterworth filter and low-pass filter which is utilized to eliminate the noise present in the signal. After that pre-processed EMG signal is segmented using sliding window which is used for solving the issue of overlapping. Then the features are extracted from the segmented signal using Fast Fourier Transform. Then selected the appropriate and optimal number of features from the feature subset using coot optimization algorithm. After that selected features are given as input for deep neural network classifier for recognizing the hand movements of human. The simulation analysis shows that the proposed method obtain 95% accuracy, 0.05% error, precision is 94%, and specificity is 92%.The simulation analysis shows that the developed approach attain better performance compared to other existing approaches. This prediction model helps in controlling the movement of amputee patients suffering from disable hand motion and improve their living standard.
手部运动检测对于管理失去四肢的个体的运动特别重要。现有的算法复杂、耗时且难以达到更好的准确性。建议使用 DNN 来识别人手的运动,以克服这些问题。
首先,采集原始输入的肌电图信号,然后使用高通巴特沃斯滤波器和低通滤波器对信号进行预处理,以消除信号中的噪声。之后,使用滑动窗口对手部运动信号进行分割,以解决信号重叠的问题。然后使用快速傅里叶变换从分段信号中提取特征。之后,使用乌鸦优化算法从特征子集中选择适当和最佳数量的特征。然后,将所选特征作为输入提供给深度神经网络分类器,以识别人手的运动。
仿真分析表明,所提出的方法可达到 95%的准确率、0.05%的误差率、94%的精度和 92%的特异性。仿真分析表明,与其他现有方法相比,所开发的方法具有更好的性能。这种预测模型有助于控制手部运动障碍的截肢患者的运动,提高他们的生活水平。