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Unobtrusive Monitoring the Daily Activity Routine of Elderly People Living Alone with Low-Cost Binary Sensors

机译:通过低成本的二进制传感器轻松监控独自生活的老年人的日常活动

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摘要

Most expert projections indicate that in 2030, there will be over one billion people aged 60 or over. The vast majority of them prefer to spend their last years at home, and almost a third of them live alone. This creates a growing need for technology-based solutions capable of helping older people to live independently in their places. Despite the wealth of solutions proposed for this general problem, there are very few support systems that can be reproduced on a larger scale. In this study, we propose a method to monitor the activity of the elderly living alone and detect deviations from the previous activity patterns based on the idea that the residential living environment can be modeled as a collection of behaviorally significant places located arbitrarily in a generic space. Then we use virtual pheromones—a concept defined in our previous work—to create images of the pheromone distribution maps, which describe the spatiotemporal evolution of the interactions between the user and the environment. We propose a method to detect deviations from the activity routines based on a simple statistical analysis of the resulting images. By applying this method on two public activity recognition datasets, we found that the system is capable of detecting both singular deviations and slow-deviating trends from the previous activity routine of the monitored persons.
机译:大多数专家预测表明,到2030年,将有超过10亿的60岁或以上的人口。他们中的绝大多数人都喜欢在家里度过最后的时光,其中近三分之一的人独自生活。这对基于技术的解决方案提出了越来越高的需求,该解决方案能够帮助老年人独立生活。尽管针对此一般问题提出了许多解决方案,但很少有支持系统可以大规模复制。在这项研究中,我们提出了一种方法来监视独居老人的活动,并根据以下想法提出了一种方法:发现居民的居住环境可以建模为任意位于通用空间中的重要行为场所的集合,从而检测与先前活动模式的偏差。然后,我们使用虚拟信息素(在先前的工作中定义的概念)来创建信息素分布图的图像,该图描述了用户与环境之间的交互作用的时空演变。我们提出了一种基于对结果图像的简单统计分析来检测与活动例程的偏差的方法。通过在两个公共活动识别数据集上应用此方法,我们发现该系统能够从受监视人员的先前活动例程中检测到奇异偏差和缓慢偏离趋势。

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