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An Activity Recognition Model Using Inertial Sensor Nodes in a Wireless Sensor Network for Frozen Shoulder Rehabilitation Exercises

机译:在无线传感器网络中使用惯性传感器节点进行冰冻肩膀康复锻炼的活动识别模型

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摘要

This paper proposes a model for recognizing motions performed during rehabilitation exercises for frozen shoulder conditions. The model consists of wearable wireless sensor network (WSN) inertial sensor nodes, which were developed for this study, and enables the ubiquitous measurement of bodily motions. The model employs the back propagation neural network (BPNN) algorithm to compute motion data that are formed in the WSN packets; herein, six types of rehabilitation exercises were recognized. The packets sent by each node are converted into six components of acceleration and angular velocity according to three axes. Motor features such as basic acceleration, angular velocity, and derivative tilt angle were input into the training procedure of the BPNN algorithm. In measurements of thirteen volunteers, the accelerations and included angles of nodes were adopted from possible features to demonstrate the procedure. Five exercises involving simple swinging and stretching movements were recognized with an accuracy of 85%–95%; however, the accuracy with which exercises entailing spiral rotations were recognized approximately 60%. Thus, a characteristic space and enveloped spectrum improving derivative features were suggested to enable identifying customized parameters. Finally, a real-time monitoring interface was developed for practical implementation. The proposed model can be applied in ubiquitous healthcare self-management to recognize rehabilitation exercises.
机译:本文提出了一个模型,用于识别在肩周炎的康复锻炼过程中执行的动作。该模型由可穿戴的无线传感器网络(WSN)惯性传感器节点组成,该节点是为该研究而开发的,并能够进行人体运动的普遍测量。该模型采用反向传播神经网络(BPNN)算法来计算WSN数据包中形成的运动数据。在此,确认了六种类型的康复锻炼。每个节点发送的数据包根据三个轴转换为加速度和角速度的六个分量。诸如基本加速度,角速度和微分倾斜角之类的电动机功能已输入到BPNN算法的训练过程中。在对13名志愿者的测量中,从可能的特征中采用了节点的加速度和夹角来演示该过程。五种涉及简单的摆动和伸展运动的练习被认为具有85%–95%的准确度;但是,人们认识到使螺旋旋转运动的准确性约为60%。因此,提出了特征空间和包络频谱改善的导数特征,以能够识别定制参数。最后,开发了用于实际实施的实时监控界面。所提出的模型可以应用于普遍存在的医疗保健自我管理中,以识别康复锻炼。

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