Design of upper limb rehabilitation evaluation system based on deep learning

Le Ding, Haoyu Wang, Chao Chen, Jia-yu Xu, Pingping Zhou
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Abstract

The topic of non-contact diagnosis became a hot topic during COVID-19 and online consultation gained popularity. In this research, a deep learning-based autonomous limb evaluation system is developed for online consultation and remote rehabilitation training for people with physical limitations. Its main goal is to collect and analyze information about limb states. The patient can evaluate the limb state at home using the mobile app, and the doctor can view the data and connect with the patient via the web's chat module to offer diagnostic opinions. Deep learning is used for the Start/End Attitude Determination Model and OpenCV for the limb and hand evaluation model, with the results being uploaded to the server.
基于深度学习的上肢康复评估系统设计
新型冠状病毒肺炎期间,非接触诊断成为热门话题,网络会诊得到普及。本研究开发了一种基于深度学习的肢体自主评估系统,用于肢体障碍患者的在线咨询和远程康复训练。它的主要目标是收集和分析肢体状态的信息。患者可以在家中使用移动应用评估肢体状态,医生可以查看数据并通过网络聊天模块与患者联系,提供诊断意见。开始/结束姿态确定模型使用深度学习,肢体和手部评估模型使用OpenCV,并将结果上传到服务器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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