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An IoT-Enabled Stroke Rehabilitation System Based on Smart Wearable Armband and Machine Learning

机译:基于智能穿戴式臂章和机器学习的基于物联网的中风康复系统

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摘要

Surface electromyography signal plays an important role in hand function recovery training. In this paper, an IoT-enabled stroke rehabilitation system was introduced which was based on a smart wearable armband (SWA), machine learning (ML) algorithms, and a 3-D printed dexterous robot hand. User comfort is one of the key issues which should be addressed for wearable devices. The SWA was developed by integrating a low-power and tiny-sized IoT sensing device with textile electrodes, which can measure, pre-process, and wirelessly transmit bio-potential signals. By evenly distributing surface electrodes over user’s forearm, drawbacks of classification accuracy poor performance can be mitigated. A new method was put forward to find the optimal feature set. ML algorithms were leveraged to analyze and discriminate features of different hand movements, and their performances were appraised by classification complexity estimating algorithms and principal components analysis. According to the verification results, all nine gestures can be successfully identified with an average accuracy up to 96.20%. In addition, a 3-D printed five-finger robot hand was implemented for hand rehabilitation training purpose. Correspondingly, user’s hand movement intentions were extracted and converted into a series of commands which were used to drive motors assembled inside the dexterous robot hand. As a result, the dexterous robot hand can mimic the user’s gesture in a real-time manner, which shows the proposed system can be used as a training tool to facilitate rehabilitation process for the patients after stroke.
机译:表面肌电信号在手功能恢复训练中起着重要作用。本文介绍了一种基于IoT的中风康复系统,该系统基于智能可穿戴臂章(SWA),机器学习(ML)算法和3D打印灵巧机器人手。用户舒适度是可穿戴设备应解决的关键问题之一。 SWA是通过将低功耗,微型IoT传感设备与纺织电极集成在一起而开发的,该纺织电极可以测量,预处理和无线传输生物电势信号。通过将表面电极均匀地分布在用户的前臂上,可以减轻分类准确度较差的缺点。提出了一种寻找最优特征集的新方法。利用机器学习算法来分析和区分不同手部动作的特征,并通过分类复杂度估计算法和主成分分析来评估其性能。根据验证结果,可以成功识别所有九种手势,平均准确率高达96.20%。此外,还实施了3D打印的五指机器人手以进行手部康复训练。相应地,提取了用户的手部移动意图并将其转换为一系列命令,这些命令用于驱动组装在灵巧机器人手内部的电机。结果,灵巧的机械手可以实时模拟用户的手势,这表明拟议的系统可以用作训练工具,促进中风后患者的康复过程。

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