An Shanshan, Pu Xianjie, Zhou Shiyi, Wu Yihan, Li Gui, Xing Pengcheng, Zhang Yangsong, Hu Chenguo
Department of Applied Physics, State Key Laboratory of Power Transmission Equipment and System Security and New Technology, Chongqing Key Laboratory of Soft Condensed Matter Physics and Smart Materials, Chongqing University, Chongqing 400044, China.
School of Computer Science and Technology, Laboratory for Brain Science and Medical Artificial Intelligence, Southwest University of Science and Technology, Mianyang 621010, China.
ACS Nano. 2022 Jun 28;16(6):9359-9367. doi: 10.1021/acsnano.2c02149. Epub 2022 May 19.
The state of neck motion reflects cervical health. To detect the motion state of the human neck is of important significance to healthcare intelligence. A practical neck motion detector should be wearable, flexible, power efficient, and low cost. Here, we report such a neck motion detector comprising a self-powered triboelectric sensor group and a deep learning block. Four flexible and stretchable silicon rubber based triboelectric sensors are integrated on a neck collar. With different neck motions, these four sensors lead-out voltage signals with different amplitudes and/or directions. Thus, the combination of these four signals can represent one motion state. Significantly, a carbon-doped silicon rubber layer is attached between the neck collar and the sensors to shield the external electric field (.., electrical changes at the skin surface) for a far more robust identification. Furthermore, a deep learning model based on the convolutional neural network is designed to recognize 11 classes of neck motion including eight directions of bending, two directions of twisting, and one resting state with an average recognition accuracy of 92.63%. This developed neck motion detector has promising applications in neck monitoring, rehabilitation, and control.
颈部运动状态反映颈椎健康状况。检测人体颈部的运动状态对医疗智能化具有重要意义。一个实用的颈部运动探测器应具备可穿戴、灵活、节能和低成本的特点。在此,我们报道了一种由自供电摩擦电传感器组和深度学习模块组成的颈部运动探测器。四个基于柔性可拉伸硅橡胶的摩擦电传感器集成在一个颈圈上。随着颈部的不同运动,这四个传感器会输出不同幅度和/或方向的电压信号。因此,这四个信号的组合可以代表一种运动状态。值得注意的是,在颈圈和传感器之间附着了一层碳掺杂硅橡胶层,以屏蔽外部电场(即皮肤表面的电变化),从而实现更可靠的识别。此外,设计了一种基于卷积神经网络的深度学习模型,用于识别11种颈部运动类别,包括八个弯曲方向、两个扭转方向和一个静止状态,平均识别准确率为92.63%。这种开发的颈部运动探测器在颈部监测、康复和控制方面具有广阔的应用前景。