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dc.contributor.author Ghayvat, Hemant
dc.contributor.author Awais, Muhammad
dc.contributor.author Pandya, Sharnil
dc.contributor.author Ren, Hao
dc.contributor.author Akbarzadeh, Saeed
dc.contributor.author Mukhopadhyay, Subhas Chandra
dc.contributor.author Chen, Chen
dc.contributor.author Gope, Prosanta
dc.contributor.author Chouhan, Arpita
dc.contributor.author Chen, Wei
dc.date.accessioned 2019-02-14T09:43:52Z
dc.date.available 2019-02-14T09:43:52Z
dc.date.issued 2019-02-13
dc.identifier.citation Ghayvat H, Awais M, Pandya S, Ren H, Akbarzadeh S, Chandra Mukhopadhyay S, Chen C, Gope P, Chouhan A, Chen W. Smart Aging System: Uncovering the Hidden Wellness Parameter for Well-Being Monitoring and Anomaly Detection. Sensors. 2019; 19(4):766. en_US
dc.identifier.uri http://27.109.7.66:8080/xmlui/handle/123456789/480
dc.description Sensors 2019, 19(4), 766 en_US
dc.description.abstract 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). en_US
dc.language.iso en en_US
dc.publisher MDPI en_US
dc.subject Wellness en_US
dc.subject Elderly en_US
dc.subject Smart Home en_US
dc.subject Ambient Assisted Living en_US
dc.subject Activity of Daily Living en_US
dc.subject Wellness Indices en_US
dc.subject Anomaly Detection en_US
dc.title Smart aging system en_US
dc.title.alternative Uncovering the hidden wellness parameter for well-being monitoring and anomaly detection en_US
dc.type Article en_US


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