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Machine Learning-based Detection of Compensatory Balance Responses and Environmental Fall Risks Using Wearable Sensors

机译:使用可穿戴式传感器的基于机器学习的补偿性余额响应和环境跌倒风险检测

摘要

Falls are the leading cause of fatal and non-fatal injuries among seniors worldwide, with serious and costly consequences. Compensatory balance responses (CBRs) are reactions to recover stability following a loss of balance, potentially resulting in a fall if sufficient recovery mechanisms are not activated. While performance of CBRs are demonstrated risk factors for falls in seniors, the frequency, type, and underlying cause of these incidents occurring in everyday life have not been well investigated.This study was spawned from the lack of research on development of fall risk assessment methods that can be used for continuous and long-term mobility monitoring of the geri- atric population, during activities of daily living, and in their dwellings. Wearable sensor systems (WSS) offer a promising approach for continuous real-time detection of gait and balance behavior to assess the risk of falling during activities of daily living. To detect CBRs, we record movement signals (e.g. acceleration) and activity patterns of four muscles involving in maintaining balance using wearable inertial measurement units (IMUs) and surface electromyography (sEMG) sensors. To develop more robust detection methods, we investigate machine learning approaches (e.g., support vector machines, neural networks) and successfully detect lateral CBRs, during normal gait with accuracies of 92.4% and 98.1% using sEMG and IMU signals, respectively.Moreover, to detect environmental fall-related hazards that are associated with CBRs, and affect balance control behavior of seniors, we employ an egocentric mobile vision system mounted on participants chest. Two algorithms (e.g. Gabor Barcodes and Convolutional Neural Networks) are developed. Our vision-based method detects 17 different classes of environmental risk factors (e.g., stairs, ramps, curbs) with 88.5% accuracy. To the best of the authors knowledge, this study is the first to develop and evaluate an automated vision-based method for fall hazard detection.
机译:跌落是全球老年人致命和非致命伤害的主要原因,造成了严重且代价高昂的后果。补偿性平衡反应(CBR)是在失去平衡后恢复稳定性的反应,如果未激活足够的恢复机制,则可能导致下降。虽然证明了CBR的性能是老年人跌倒的危险因素,但对这些事件在日常生活中发生的频率,类型和根本原因尚未进行充分的调查。该研究源于对跌倒风险评估方法的开发缺乏研究可用于在日常生活活动期间以及在其住所中对老年人群进行连续和长期的移动性监视。可穿戴式传感器系统(WSS)为连续实时检测步态和平衡行为提供了一种有前途的方法,以评估日常生活活动中跌倒的风险。为了检测CBR,我们使用可穿戴惯性测量单元(IMU)和表面肌电图(sEMG)传感器记录了参与保持平衡的四块肌肉的运动信号(例如加速度)和活动模式。为了开发更强大的检测方法,我们研究了机器学习方法(例如,支持向量机,神经网络),并在正常步态中使用sEMG和IMU信号分别成功检测了横向CBR,其准确度分别为92.4%和98.1%。为了检测与CBR相关的与环境坠落相关的危害,并影响老年人的平衡控制行为,我们在参与者的胸部安装了一个以自我为中心的移动视觉系统。开发了两种算法(例如Gabor条形码和卷积神经网络)。我们基于视觉的方法可以检测出17种不同的环境风险因素(例如,楼梯,坡道,路缘石),准确度为88.5%。就作者所知,该研究是第一个开发和评估基于视觉的自动方法用于跌倒危险检测的研究。

著录项

  • 作者

    Nouredanesh Mina;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 en
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