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Αναγνώρισης προτύπων δραστηριοτήτων σε δυναμικά εναλλασσόμενα περιβάλλοντα με την χρήση έξυπνων φορητών αισθητήρων: μελέτη σκοπιμότητας.

Στοιχεία Dublin Core

dc.creatorChatzaki, Charikleiaen
dc.creatorΧατζάκη, Χαρίκλειαel
dc.date.accessioned2016-07-15T11:21:46Z
dc.date.available2016-07-15T11:21:46Z
dc.date.issued2016-07-15
dc.identifier.urihttp://hdl.handle.net/20.500.12688/7800
dc.description.abstractThe demands for understanding human activities have steadily grown in recent years in the health-care domain, especially in elder care support, rehabilitation assistance, diabetes, cognitive disorders, assisting living and wellness management. A significant amount of resources can be saved if sensors can help caretakers record and monitor elders or patients continuously and report automatically when any abnormal behavior is detected. The recognition of various activities of daily living (ADLs) can reveal valuable information about a person’s activity patterns. Many studies have successfully identified activities using wearable sensors with very low error rate, but the majority of the previous works are done in very constrained settings. Readings from multiple body-attached sensors achieve low error-rate, but the complicated setting is not feasible in practice. On the other hand, smartphones have been accepted from the research community as a powerful solution for sensing applications due to the increasing number of smartphone users and due to the vast capabilities of modern smartphones. This project uses low-cost and commercially available smartphones as sensors to identify human activities. The growing popularity and computational power of smartphone make it an ideal candidate for non-intrusive body-attached sensors. Unlike many previous reported works, we relaxed the constraints of attaching sensors to fixed body positions with fixed device orientation. In our design, the phone can be placed at any position around waist such as jacket pocket and pants pocket, with arbitrary orientation. In this work a feasibility study has been contacted to investigate whether a smartphone based recognition system can be used for estimating activity patterns in dynamic environments. To this end, different combinations of computational approaches have been taken. The computational pipeline was applied on separate activities of daily living and on complete sequences of activities, which describe a common scenario of daily living. The results showed that, using a 1 second-window with 80% overlap, the suggested feature sets and the k-NN classifier, the ADLs and the scenarios can be recognized with accuracy of 99% and 96 % respectively, when the 10-fold cross-validation evaluation method is applied. A further investigation using the aforementioned combinations and the evaluation method of Leave-One-subject-Out for the recognition of scenarios achieved accuracy of 79%.en
dc.description.abstract-el
dc.languageΑγγλικάel
dc.languageEnglishen
dc.publisherT.E.I. of Crete, School of Engineering (STEF), PPS in Informatics and Multimediaen
dc.publisherΤ.Ε.Ι. Κρήτης, Σχολή Τεχνολογικών Εφαρμογών (Σ.Τ.Εφ), ΠΜΣ Πληροφορική και Πολυμέσαel
dc.rightsAttribution-NonCommercial-NoDerivs 3.0 United States*
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/3.0/us/*
dc.titleEstimating human activity patterns in dynamic environments based on smart, wearable sensors : a feasibility study.en
dc.titleΑναγνώρισης προτύπων δραστηριοτήτων σε δυναμικά εναλλασσόμενα περιβάλλοντα με την χρήση έξυπνων φορητών αισθητήρων: μελέτη σκοπιμότητας.el

Στοιχεία healMeta

heal.creatorNameChatzaki, Charikleiaen
heal.creatorNameΧατζάκη, Χαρίκλειαel
heal.publicationDate2016-07-15
heal.identifier.primaryhttp://hdl.handle.net/20.500.12688/7800
heal.abstractThe demands for understanding human activities have steadily grown in recent years in the health-care domain, especially in elder care support, rehabilitation assistance, diabetes, cognitive disorders, assisting living and wellness management. A significant amount of resources can be saved if sensors can help caretakers record and monitor elders or patients continuously and report automatically when any abnormal behavior is detected. The recognition of various activities of daily living (ADLs) can reveal valuable information about a person’s activity patterns. Many studies have successfully identified activities using wearable sensors with very low error rate, but the majority of the previous works are done in very constrained settings. Readings from multiple body-attached sensors achieve low error-rate, but the complicated setting is not feasible in practice. On the other hand, smartphones have been accepted from the research community as a powerful solution for sensing applications due to the increasing number of smartphone users and due to the vast capabilities of modern smartphones. This project uses low-cost and commercially available smartphones as sensors to identify human activities. The growing popularity and computational power of smartphone make it an ideal candidate for non-intrusive body-attached sensors. Unlike many previous reported works, we relaxed the constraints of attaching sensors to fixed body positions with fixed device orientation. In our design, the phone can be placed at any position around waist such as jacket pocket and pants pocket, with arbitrary orientation. In this work a feasibility study has been contacted to investigate whether a smartphone based recognition system can be used for estimating activity patterns in dynamic environments. To this end, different combinations of computational approaches have been taken. The computational pipeline was applied on separate activities of daily living and on complete sequences of activities, which describe a common scenario of daily living. The results showed that, using a 1 second-window with 80% overlap, the suggested feature sets and the k-NN classifier, the ADLs and the scenarios can be recognized with accuracy of 99% and 96 % respectively, when the 10-fold cross-validation evaluation method is applied. A further investigation using the aforementioned combinations and the evaluation method of Leave-One-subject-Out for the recognition of scenarios achieved accuracy of 79%.en
heal.abstract-el
heal.languageΑγγλικάel
heal.languageEnglishen
heal.academicPublisherT.E.I. of Crete, School of Engineering (STEF), PPS in Informatics and Multimediaen
heal.academicPublisherΤ.Ε.Ι. Κρήτης, Σχολή Τεχνολογικών Εφαρμογών (Σ.Τ.Εφ), ΠΜΣ Πληροφορική και Πολυμέσαel
heal.titleEstimating human activity patterns in dynamic environments based on smart, wearable sensors : a feasibility study.en
heal.titleΑναγνώρισης προτύπων δραστηριοτήτων σε δυναμικά εναλλασσόμενα περιβάλλοντα με την χρήση έξυπνων φορητών αισθητήρων: μελέτη σκοπιμότητας.el
heal.typeΜεταπτυχακή Διατριβήel
heal.typeMaster thesisen
heal.keywordhuman activity recognition, activities of daily living, Android, smart phone, sensoren
heal.keywordαναγνώριση ανθρώπινης δραστηριότητας, δραστηριότητες καθημερινής ζωής, Android, smart phone, αισθητήραςel
heal.accessfreeel
heal.advisorNameTsiknakis, Emmanouilen
heal.advisorNameΤσικνάκης, Εμμανουήλel
heal.advisorID.emailtsiknaki@ie.teicrete.gr
heal.academicPublisherIDT.E.I. of Creteen
heal.academicPublisherIDΤ.Ε.Ι. Κρήτηςel
heal.fullTextAvailabilitytrueel
tcd.distinguishedfalseel
tcd.surveyfalseel


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Attribution-NonCommercial-NoDerivs 3.0 United States
Except where otherwise noted, this item's license is described as Attribution-NonCommercial-NoDerivs 3.0 United States