基于无线惯性传感器节点的冻肩康复运动活动识别的初步研究

Kai Lee, Hsueh-Chun Lin, Yao-Chiang Kan, Shu-Yin Chiang
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引用次数: 4

摘要

本研究在尺寸为40mm × 37mm × 2mm的四层可印刷电路板上建立了由微控制单元、兼容zigbee射频芯片、三轴加速度计、双轴陀螺仪、单轴陀螺仪和平面倒f型天线组成的无线传感器网络(WSN)惯性传感器节点(ISN)。在手臂和手腕上安装两个无线isn,用于测量肩周炎的康复运动。测量数据被无线发送到一个基本节点,在那里开发一个基于matlab的程序来检索数据包,解析数据包,并基于人工神经网络(ANN)算法识别运动数据。通过在手腕和手臂上佩戴两个节点来测量六种肩周炎的康复运动。三个轴上的加速度和导出的角度形成一个四元组矢量,作为所采用识别算法的电机特征。结果表明,6个动作中有5个动作的识别准确率为85- 90%,而复杂动作(即螺旋旋转动作)的识别准确率仅为60%左右。该试点研究证实了自主开发WSN ISNs识别康复运动的良好可行性,并为未来移动或无处不在的医疗保健提供先进应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A pilot study of activity recognition on rehabilitation exercise of frozen shoulder using wireless inertial sensor node
This study establishes wireless sensor network (WSN) inertial sensor nodes (ISN) that comprise micro control unit, ZigBee-compatible radio frequency chip, tri-axial accelerometer, biaxial gyroscope, single-axial gyroscope, and a planar inverted-F type antenna on a four-layer printable circuit board with size of 40mm × 37mm × 2mm. Two wireless ISNs are attached on arm and wrist for measuring rehabilitation exercise of frozen shoulder. The measured data are sent wirelessly to a base node where a Matlab-based program is developed for retrieving packet, parsing packets, and recognizing motion data based on the artificial neural network (ANN) algorithm. Six rehabilitation exercises for frozen shoulder are measured by wearing two nodes on the wrist and the arm. Accelerations in three axes and the derived angle form a 4-tuple vector as the motor feature of employed recognition algorithm. As results, five of six exercises are successfully recognized with 85-90 % of accuracy rates but the complex one (i.e. the spiral rotation exercise) reached only around 60 %. The pilot study approves good feasibility of self-developed WSN ISNs to recognize rehabilitation exercises as well as contribute advanced applications for mobile or ubiquitous health care in the future.
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