Zhang Ping, Pan Weimeng, Li Zhihao, Liu Baocheng
School of Electrical and Information Engineering, Tianjin University, Tianjin 300072, P. R. China.
ACS Omega. 2025 Feb 26;10(9):9381-9389. doi: 10.1021/acsomega.4c10150. eCollection 2025 Mar 11.
With the rapid development of the Internet of Things (IoT) and 5G technology, there has been a considerable increase in demand for self-powered and flexible sensors. However, existing solutions frequently prove inadequate regarding flexibility, energy efficiency, and the accuracy with which gestures can be recognized, particularly in noncontact operation scenarios. As a result, there is a need for innovative developments in sensor technology. This study proposes an artificial intelligence-based gesture recognition system comprising a triboelectric sensor ring, an Arduino signal processing module, and a deep learning module. Our approach enables the direct reading of triboelectric signals by Arduino through integrated circuits, thereby maintaining the output voltage of triboelectric signals within the input range of commonly used microcontrollers. The integration of triboelectric technology with sophisticated deep learning methodologies, notably the utilization of a one-dimensional convolutional neural network (CNN), has enabled the development of a system that exhibits an accuracy rate exceeding 95% in the recognition of 12 distinct gestures. This study demonstrates the prospective utility of triboelectric sensors in the realms of gesture recognition, wearable technology, and human-machine interaction.
随着物联网(IoT)和5G技术的快速发展,对自供电且灵活的传感器的需求大幅增加。然而,现有解决方案在灵活性、能源效率以及手势识别精度方面常常显得不足,尤其是在非接触操作场景中。因此,传感器技术需要创新发展。本研究提出了一种基于人工智能的手势识别系统,该系统由摩擦电传感器环、Arduino信号处理模块和深度学习模块组成。我们的方法使Arduino能够通过集成电路直接读取摩擦电信号,从而将摩擦电信号的输出电压保持在常用微控制器的输入范围内。摩擦电技术与先进的深度学习方法的结合,特别是一维卷积神经网络(CNN)的应用,使得开发出的系统在识别12种不同手势时准确率超过95%。本研究证明了摩擦电传感器在手势识别、可穿戴技术和人机交互领域的潜在应用价值。