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识别和监测居家老年人的日常生活。

Identifying and Monitoring the Daily Routine of Seniors Living at Home.

机构信息

Computer Science Department, Technical University of Cluj-Napoca, Memorandumului 28, 400114 Cluj-Napoca, Romania.

Department of Informatics, Technical University of Munich, Boltzmannstr. 3, 85748 Garching, Germany.

出版信息

Sensors (Basel). 2022 Jan 27;22(3):992. doi: 10.3390/s22030992.

Abstract

As the population in the Western world is rapidly aging, the remote monitoring solutions integrated into the living environment of seniors have the potential to reduce the care burden helping them to self-manage problems associated with old age. The daily routine is considered a useful tool for addressing age-related problems having additional benefits for seniors like reduced stress and anxiety, increased feeling of safety and security. In this paper, we propose a solution for identifying the daily routines of seniors using the monitored activities of daily living and for inferring deviations from the routines that may require caregivers' interventions. A Markov model-based method is defined to identify the daily routines, while entropy rate and cosine functions are used to measure and assess the similarity between the daily monitored activities in a day and the inferred routine. A distributed monitoring system was developed that uses Beacons and trilateration techniques for monitoring the activities of older adults. The results are promising, the proposed techniques can identify the daily routines with confidence concerning the activity duration of 0.98 and the sequence of activities in the interval of [0.0794, 0.0829]. Regarding deviation identification, our method obtains 0.88 as the best sensitivity value with an average precision of 0.95.

摘要

随着西方世界人口的迅速老龄化,集成到老年人生活环境中的远程监控解决方案有可能减轻护理负担,帮助他们自我管理与老年相关的问题。日常生活规律被认为是解决与年龄相关问题的有用工具,对老年人有额外的好处,如减轻压力和焦虑、增加安全感。在本文中,我们提出了一种使用监测到的日常生活活动来识别老年人日常活动的解决方案,并推断可能需要护理人员干预的日常活动偏差。定义了一种基于马尔可夫模型的方法来识别日常活动,同时使用熵率和余弦函数来衡量和评估一天中日常监测活动与推断出的日常活动之间的相似性。开发了一种分布式监测系统,该系统使用信标和三边测量技术来监测老年人的活动。结果很有希望,所提出的技术可以识别日常活动,置信度为 0.98,活动持续时间为 0.98,活动序列在[0.0794,0.0829]之间。关于偏差识别,我们的方法获得了 0.88 的最佳灵敏度值,平均精度为 0.95。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/67ff/8840439/9dccfd761010/sensors-22-00992-g001.jpg

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