跌落检测系统中误报的识别

S. Abbate, M. Avvenuti, Guglielmo Cola, P. Corsini, J. Light, Alessio Vecchio
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引用次数: 58

摘要

跌倒是老年人住院和受伤相关死亡的主要原因。跌倒的有害影响以及对卫生服务成本的负面影响,使卫生保健行业对跌倒检测系统产生了极大的兴趣。最有希望的方法是那些基于可穿戴设备的方法,该设备可以监控患者的运动,识别跌倒并触发警报。不幸的是,这种技术存在误报问题:一些日常生活活动被错误地报告为跌倒,从而降低了用户的信心。本文提出了一种提高检测精度的新方法,该方法基于将特定运动模式识别到加速度数据中的思想。使用单个加速度计,我们的系统可以识别这些模式,并利用它们区分日常生活活动和真实跌倒;这样就减少了误报的数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of false alarms in fall detection systems
Falls are a major cause of hospitalization and injury-related deaths among the elderly population. The detrimental effects of falls, as well as the negative impact on health services costs, have led to a great interest on fall detection systems by the health-care industry. The most promising approaches are those based on a wearable device that monitors the movements of the patient, recognizes a fall and triggers an alarm. Unfortunately such techniques suffer from the problem of false alarms: some activities of daily living are erroneously reported as falls, thus reducing the confidence of the user. This paper presents a novel approach for improving the detection accuracy which is based on the idea of identifying specific movement patterns into the acceleration data. Using a single accelerometer, our system can recognize these patterns and use them to distinguish activities of daily living from real falls; thus the number of false alarms is reduced.
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