Activities of daily life recognition using process representation modelling to support intention analysis

Purpose – This paper aims to focus on applying a range of traditional classification- and semantic reasoning-based techniques to recognise activities of daily life (ADLs). ADL recognition plays an important role in tracking functional decline among elderly people who suffer from Alzheimer’s disease....

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Veröffentlicht in:International Journal of Pervasive Computing and Communications 2015-09, Vol.11 (3), p.347-371
Hauptverfasser: Naeem, Usman, Bashroush, Rabih, Anthony, Richard, Azam, Muhammad Awais, Tawil, Abdel Rahman, Lee, Sin Wee, Wong, M.L. Dennis
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container_end_page 371
container_issue 3
container_start_page 347
container_title International Journal of Pervasive Computing and Communications
container_volume 11
creator Naeem, Usman
Bashroush, Rabih
Anthony, Richard
Azam, Muhammad Awais
Tawil, Abdel Rahman
Lee, Sin Wee
Wong, M.L. Dennis
description Purpose – This paper aims to focus on applying a range of traditional classification- and semantic reasoning-based techniques to recognise activities of daily life (ADLs). ADL recognition plays an important role in tracking functional decline among elderly people who suffer from Alzheimer’s disease. Accurate recognition enables smart environments to support and assist the elderly to lead an independent life for as long as possible. However, the ability to represent the complex structure of an ADL in a flexible manner remains a challenge. Design/methodology/approach – This paper presents an ADL recognition approach, which uses a hierarchical structure for the representation and modelling of the activities, its associated tasks and their relationships. This study describes an approach in constructing ADLs based on a task-specific and intention-oriented plan representation language called Asbru. The proposed method is particularly flexible and adaptable for caregivers to be able to model daily schedules for Alzheimer’s patients. Findings – A proof of concept prototype evaluation has been conducted for the validation of the proposed ADL recognition engine, which has comparable recognition results with existing ADL recognition approaches. Originality/value – The work presented in this paper is novel, as the developed ADL recognition approach takes into account all relationships and dependencies within the modelled ADLs. This is very useful when conducting activity recognition with very limited features.
doi_str_mv 10.1108/IJPCC-01-2015-0002
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subjects Activities of daily living
Activity recognition
Feature recognition
Modelling
Older people
Ontology
Representations
Schedules
Sensors
Structural hierarchy
title Activities of daily life recognition using process representation modelling to support intention analysis
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