Xing Zhizhong, Meng Zhijun, Zheng Gengfeng, Ma Guolan, Yang Lin, Guo Xiaojun, Tan Li, Jiang Yuanqiu, Wu Huidong
School of Rehabilitation, Kunming Medical University, Kunming, China.
Medical Imaging Key Laboratory of Sichuan Province, North Sichuan Medical College, Nanchong, China.
Front Comput Neurosci. 2025 May 2;19:1543643. doi: 10.3389/fncom.2025.1543643. eCollection 2025.
Human-machine interaction and computational neuroscience have brought unprecedented application prospects to the field of medical rehabilitation, especially for the elderly population, where the decline and recovery of hand function have become a significant concern. Responding to the special needs under the context of normalized epidemic prevention and control and the aging trend of the population, this research proposes a method based on a 3D deep learning model to process laser sensor point cloud data, aiming to achieve non-contact gesture surface feature analysis for application in the field of intelligent rehabilitation of human-machine interaction hand functions. By integrating key technologies such as the collection of hand surface point clouds, local feature extraction, and abstraction and enhancement of dimensional information, this research has constructed an accurate gesture surface feature analysis system. In terms of experimental results, this research validated the superior performance of the proposed model in recognizing hand surface point clouds, with an average accuracy of 88.72%. The research findings are of significant importance for promoting the development of non-contact intelligent rehabilitation technology for hand functions and enhancing the safe and comfortable interaction methods for the elderly and rehabilitation patients.
人机交互和计算神经科学为医学康复领域带来了前所未有的应用前景,特别是对于老年人群体,手部功能的衰退和恢复已成为一个重大关注点。针对常态化疫情防控背景下的特殊需求以及人口老龄化趋势,本研究提出一种基于三维深度学习模型的方法来处理激光传感器点云数据,旨在实现非接触式手势表面特征分析,以应用于人机交互手部功能的智能康复领域。通过整合手部表面点云采集、局部特征提取以及维度信息的抽象与增强等关键技术,本研究构建了一个精确的手势表面特征分析系统。在实验结果方面,本研究验证了所提模型在识别手部表面点云方面的卓越性能,平均准确率达88.72%。研究结果对于推动手部功能非接触式智能康复技术的发展以及增强老年人和康复患者的安全舒适交互方式具有重要意义。