Syed A Usama, Sattar Neelum Y, Ganiyu Ismaila, Sanjay Chintakindi, Alkhatib Soliman, Salah Bashir
Department of Industrial Engineering, University of Trento, Trento, Italy.
Department of Mechatronics and Biomedical Engineering, Air University, Islamabad, Pakistan.
Front Neurorobot. 2023 Jul 27;17:1174613. doi: 10.3389/fnbot.2023.1174613. eCollection 2023.
This research study proposes a unique framework that takes input from a surface electromyogram (sEMG) and functional near-infrared spectroscopy (fNIRS) bio-signals. These signals are trained using convolutional neural networks (CNN). The framework entails a real-time neuro-machine interface to decode the human intention of upper limb motions. The bio-signals from the two modalities are recorded for eight movements simultaneously for prosthetic arm functions focusing on trans-humeral amputees. The fNIRS signals are acquired from the human motor cortex, while sEMG is recorded from the human bicep muscles. The selected classification and command generation features are the peak, minimum, and mean ΔHbO and ΔHbR values within a 2-s moving window. In the case of sEMG, wavelength, peak, and mean were extracted with a 150-ms moving window. It was found that this scheme generates eight motions with an enhanced average accuracy of 94.5%. The obtained results validate the adopted research methodology and potential for future real-time neural-machine interfaces to control prosthetic arms.
本研究提出了一个独特的框架,该框架接收表面肌电图(sEMG)和功能性近红外光谱(fNIRS)生物信号作为输入。这些信号使用卷积神经网络(CNN)进行训练。该框架需要一个实时神经机器接口来解码上肢运动的人类意图。针对经肱骨截肢者的假肢手臂功能,同时记录来自这两种模式的生物信号用于八种动作。fNIRS信号从人类运动皮层获取,而sEMG从人类肱二头肌记录。所选的分类和命令生成特征是2秒移动窗口内的峰值、最小值以及平均ΔHbO和ΔHbR值。对于sEMG,在150毫秒移动窗口内提取波长、峰值和平均值。结果发现,该方案生成八种动作,平均准确率提高到94.5%。所获得的结果验证了所采用的研究方法以及未来用于控制假肢手臂的实时神经机器接口的潜力。