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通过数据融合方法使用印刷式可穿戴传感器(BWS)的躯干运动系统(TMS)

Trunk Motion System (TMS) Using Printed Body Worn Sensor (BWS) via Data Fusion Approach.

作者信息

Mokhlespour Esfahani Mohammad Iman, Zobeiri Omid, Moshiri Behzad, Narimani Roya, Mehravar Mohammad, Rashedi Ehsan, Parnianpour Mohamad

机构信息

Department of Industrial and Systems Engineering, Virginia Polytechnic Institute and State University, Blacksburg, VA 24061, USA.

Laboratory of Wearable Technologies and Neuromusculoskeletal Research, School of Mechanical Engineering, Sharif University of Technology, Tehran 11155-9567, Iran.

出版信息

Sensors (Basel). 2017 Jan 8;17(1):112. doi: 10.3390/s17010112.

Abstract

Human movement analysis is an important part of biomechanics and rehabilitation, for which many measurement systems are introduced. Among these, wearable devices have substantial biomedical applications, primarily since they can be implemented both in indoor and outdoor applications. In this study, a Trunk Motion System (TMS) using printed Body-Worn Sensors (BWS) is designed and developed. TMS can measure three-dimensional (3D) trunk motions, is lightweight, and is a portable and non-invasive system. After the recognition of sensor locations, twelve BWSs were printed on stretchable clothing with the purpose of measuring the 3D trunk movements. To integrate BWSs data, a neural network data fusion algorithm was used. The outcome of this algorithm along with the actual 3D anatomical movements (obtained by Qualisys system) were used to calibrate the TMS. Three healthy participants with different physical characteristics participated in the calibration tests. Seven different tasks (each repeated three times) were performed, involving five planar, and two multiplanar movements. Results showed that the accuracy of TMS system was less than 1.0°, 0.8°, 0.6°, 0.8°, 0.9°, and 1.3° for flexion/extension, left/right lateral bending, left/right axial rotation, and multi-planar motions, respectively. In addition, the accuracy of TMS for the identified movement was less than 2.7°. TMS, developed to monitor and measure the trunk orientations, can have diverse applications in clinical, biomechanical, and ergonomic studies to prevent musculoskeletal injuries, and to determine the impact of interventions.

摘要

人体运动分析是生物力学和康复学的重要组成部分,为此引入了许多测量系统。其中,可穿戴设备具有大量生物医学应用,主要是因为它们可在室内和室外应用中实现。在本研究中,设计并开发了一种使用印刷式身体佩戴传感器(BWS)的躯干运动系统(TMS)。TMS可测量三维(3D)躯干运动,重量轻,是一种便携式且非侵入性的系统。在识别传感器位置后,在可拉伸衣物上印刷了十二个BWS,用于测量3D躯干运动。为了整合BWS数据,使用了一种神经网络数据融合算法。该算法的结果与实际3D解剖运动(通过Qualisys系统获得)一起用于校准TMS。三名具有不同身体特征的健康参与者参加了校准测试。进行了七个不同的任务(每个任务重复三次),包括五个平面运动和两个多平面运动。结果表明,TMS系统在屈伸、左右侧屈、左右轴向旋转和多平面运动方面的精度分别小于1.0°、0.8°、0.6°、0.8°、0.9°和1.3°。此外,TMS对识别运动的精度小于2.7°。开发用于监测和测量躯干方向的TMS在临床、生物力学和人体工程学研究中可具有多种应用,以预防肌肉骨骼损伤,并确定干预措施的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ac38/5298685/8135725c7dd5/sensors-17-00112-g001.jpg

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