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首页> 外文期刊>Journal of ambient intelligence and smart environments >Detection of physical helplessness at home using ambient sensor information
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Detection of physical helplessness at home using ambient sensor information

机译:使用环境传感器信息检测在家中的身体无助

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摘要

Societal changes lead to an increase in the number of critical emergency situations in single households, resulting in the need for new concepts, such as automatic detection of physical weakness. This paper describes an approach that identifies deviations from a person's 'normal' behavior, specifically the absence of typical activities, based on sensor information. False negatives are avoided by using information about the behavior on different semantic levels. The approach was evaluated in a variety of controlled lab experiments. Normal behavior was learned with 120 typical activity scenarios in bathroom and kitchen. Three configurations were defined for each location and semantic level. 100 scenarios with and without emergency situations were performed. The system's responses were analyzed regarding correctness and reaction time. Hypothesis 1: The approach detects at least 80% of critical motionlessness situations correctly (sensitivity > 0.8), which is confirmed for every configuration. Hypothesis 2: The number of false alarms (false positives) is lower than 10% with the best configuration (false positive rate < 0.1), which is confirmed for 8 out of 12 configurations. The evaluation results suggest that it is possible to detect situations of physical weakness with sufficient reliability. The approach was also tested against a standard procedure with static thresholds.
机译:社会变化导致单户家庭紧急情况的数量增加,导致需要新的概念,例如自动检测身体虚弱。本文介绍了一种基于传感器信息来识别与人“正常”行为(特别是没有典型活动)偏离的方法。通过使用有关不同语义级别上的行为的信息,可以避免误报。在各种受控实验室实验中对该方法进行了评估。通过在浴室和厨房中的120种典型活动场景学习了正常行为。为每个位置和语义级别定义了三种配置。进行了100个有或没有紧急情况的方案。分析了系统的正确性和反应时间。假设1:该方法至少可以正确检测出80%的关键静止情况(灵敏度> 0.8),并针对每种配置进行了确认。假设2:在最佳配置(误报率<0.1)下,错误警报(误报)的数量低于10%,在12种配置中有8种被确认。评估结果表明,可以以足够的可靠性检测身体虚弱的情况。还针对具有静态阈值的标准程序测试了该方法。

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