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基于多相跌落模型的新型分层跌落检测算法。

Novel Hierarchical Fall Detection Algorithm Using a Multiphase Fall Model.

机构信息

Department of Biomedical Engineering, National Yang-Ming University, Taipei 112, Taiwan.

出版信息

Sensors (Basel). 2017 Feb 8;17(2):307. doi: 10.3390/s17020307.

Abstract

Falls are the primary cause of accidents for the elderly in the living environment. Reducing hazards in the living environment and performing exercises for training balance and muscles are the common strategies for fall prevention. However, falls cannot be avoided completely; fall detection provides an alarm that can decrease injuries or death caused by the lack of rescue. The automatic fall detection system has opportunities to provide real-time emergency alarms for improving the safety and quality of home healthcare services. Two common technical challenges are also tackled in order to provide a reliable fall detection algorithm, including variability and ambiguity. We propose a novel hierarchical fall detection algorithm involving threshold-based and knowledge-based approaches to detect a fall event. The threshold-based approach efficiently supports the detection and identification of fall events from continuous sensor data. A multiphase fall model is utilized, including free fall, impact, and rest phases for the knowledge-based approach, which identifies fall events and has the potential to deal with the aforementioned technical challenges of a fall detection system. Seven kinds of falls and seven types of daily activities arranged in an experiment are used to explore the performance of the proposed fall detection algorithm. The overall performances of the sensitivity, specificity, precision, and accuracy using a knowledge-based algorithm are 99.79%, 98.74%, 99.05% and 99.33%, respectively. The results show that the proposed novel hierarchical fall detection algorithm can cope with the variability and ambiguity of the technical challenges and fulfill the reliability, adaptability, and flexibility requirements of an automatic fall detection system with respect to the individual differences.

摘要

跌倒 是老年人生活环境中事故的主要原因。减少生活环境中的危险和进行平衡和肌肉训练的运动是预防跌倒的常见策略。然而,跌倒并不能完全避免;跌倒检测提供了一种警报,可以减少因救援不足而导致的伤害或死亡。自动跌倒检测系统有机会为改善家庭医疗保健服务的安全性和质量提供实时紧急警报。为了提供可靠的跌倒检测算法,还解决了两个常见的技术挑战,包括可变性和模糊性。我们提出了一种新颖的分层跌倒检测算法,涉及基于阈值和基于知识的方法,以检测跌倒事件。基于阈值的方法可有效地支持从连续传感器数据中检测和识别跌倒事件。使用多相跌倒模型,包括自由落体、冲击和休息阶段,基于知识的方法识别跌倒事件,并有可能应对跌倒检测系统的上述技术挑战。安排了七种跌倒和七种日常活动来探索所提出的跌倒检测算法的性能。使用基于知识的算法的整体性能为灵敏度、特异性、精度和准确性分别为 99.79%、98.74%、99.05%和 99.33%。结果表明,所提出的新颖分层跌倒检测算法可以应对技术挑战的可变性和模糊性,并满足自动跌倒检测系统对个体差异的可靠性、适应性和灵活性要求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ba91/5335954/560986d6befa/sensors-17-00307-g001.jpg

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