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Smart Aging System: Uncovering the Hidden Wellness Parameter for Well-Being Monitoring and Anomaly Detection

机译:智能老化系统:发现隐藏的健康参数以进行健康监测和异常检测

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摘要

Background: Ambiguities and anomalies in the Activity of Daily Living (ADL) patterns indicate deviations from Wellness. The monitoring of lifestyles could facilitate remote physicians or caregivers to give insight into symptoms of the disease and provide health improvement advice to residents; Objective: This research work aims to apply lifestyle monitoring in an ambient assisted living (AAL) system by diagnosing conduct and distinguishing variation from the norm with the slightest conceivable fake alert. In pursuing this aim, the main objective is to fill the knowledge gap of two contextual observations (i.e., day and time) in the frequent behavior modeling for an individual in AAL. Each sensing category has its advantages and restrictions. Only a single type of sensing unit may not manage composite states in practice and lose the activity of daily living. To boost the efficiency of the system, we offer an exceptional sensor data fusion technique through different sensing modalities; Methods: As behaviors may also change according to other contextual observations, including seasonal, weather (or temperature), and social interaction, we propose the design of a novel activity learning model by adding behavioral observations, which we name as the Wellness indices analysis model; Results: The ground-truth data are collected from four elderly houses, including daily activities, with a sample size of three hundred days plus sensor activation. The investigation results validate the success of our method. The new feature set from sensor data fusion enhances the system accuracy to (98.17% ± 0.95) from (80.81% ± 0.68). The performance evaluation parameters of the proposed model for ADL recognition are recorded for the 14 selected activities. These parameters are Sensitivity (0.9852), Specificity (0.9988), Accuracy (0.9974), F1 score (0.9851), False Negative Rate (0.0130).
机译:背景:日常生活活动(ADL)模式的歧义和异常表明偏离了健康。对生活方式的监测可以帮助远程医生或护理人员深入了解疾病的症状并向居民提供健康改善建议;目的:这项研究工作旨在通过诊断行为并以最小程度的假警报将行为与正常情况区分开来,将生活方式监测应用于环境辅助生活(AAL)系统中。为了实现这一目标,主要目标是填补AAL中某人的频繁行为建模中两个上下文观察(即日期和时间)的知识空白。每个传感类别都有其优势和局限性。实际上,只有一种类型的传感单元可能无法管理复合状态,并且会失去日常生活的活动。为了提高系统的效率,我们通过不同的传感方式提供了出色的传感器数据融合技术;方法:由于行为也可能会根据其他上下文观察(包括季节,天气(或温度)和社交互动)而发生变化,因此我们建议通过添加行为观察来设计一种新颖的活动学习模型,我们将其称为健康指数分析模型;结果:真实数据是从四栋老年房屋中收集的,包括日常活动,样本量为三百天,外加传感器激活。调查结果验证了我们方法的成功。传感器数据融合的新功能集将系统精度从(80.81%±0.68)提高到(98.17%±0.95)。针对所选的14个活动,记录了用于ADL识别的提议模型的性能评估参数。这些参数是灵敏度(0.9852),特异性(0.9988),准确性(0.9974),F1得分(0.9851),假阴性率(0.0130)。

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