Online learning of personalised human activity recognition models from user-provided annotations

In Human Activity Recognition (HAR), supervised and semi-supervised training are important tools for devising parametric activity models. For the best modelling performance, large amounts of annotated personalised sample data are typically required. Annotating often represents the bottleneck in the...

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Main Author: Miu, Tudor Alin
Published: University of Newcastle upon Tyne 2017
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Online Access:https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.724696
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spelling ndltd-bl.uk-oai-ethos.bl.uk-7246962019-03-05T15:24:22ZOnline learning of personalised human activity recognition models from user-provided annotationsMiu, Tudor Alin2017In Human Activity Recognition (HAR), supervised and semi-supervised training are important tools for devising parametric activity models. For the best modelling performance, large amounts of annotated personalised sample data are typically required. Annotating often represents the bottleneck in the overall modelling process as it usually involves retrospective analysis of experimental ground truth, like video footage. These approaches typically neglect that prospective users of HAR systems are themselves key sources of ground truth for their own activities. This research therefore involves the users of HAR monitors in the annotation process. The process relies solely on users' short term memory and engages with them to parsimoniously provide annotations for their own activities as they unfold. E ects of user input are optimised by using Online Active Learning (OAL) to identify the most critical annotations which are expected to lead to highly optimal HAR model performance gains. Personalised HAR models are trained from user-provided annotations as part of the evaluation, focusing mainly on objective model accuracy. The OAL approach is contrasted with Random Selection (RS) { a naive method which makes uninformed annotation requests. A range of simulation-based annotation scenarios demonstrate that using OAL brings bene ts in terms of HAR model performance over RS. Additionally, a mobile application is implemented and deployed in a naturalistic context to collect annotations from a panel of human participants. The deployment is proof that the method can truly run in online mode and it also shows that considerable HAR model performance gains can be registered even under realistic conditions. The ndings from this research point to the conclusion that online learning from userprovided annotations is a valid solution to the problem of constructing personalised HAR models.006.3University of Newcastle upon Tynehttps://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.724696http://hdl.handle.net/10443/3635Electronic Thesis or Dissertation
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sources NDLTD
topic 006.3
spellingShingle 006.3
Miu, Tudor Alin
Online learning of personalised human activity recognition models from user-provided annotations
description In Human Activity Recognition (HAR), supervised and semi-supervised training are important tools for devising parametric activity models. For the best modelling performance, large amounts of annotated personalised sample data are typically required. Annotating often represents the bottleneck in the overall modelling process as it usually involves retrospective analysis of experimental ground truth, like video footage. These approaches typically neglect that prospective users of HAR systems are themselves key sources of ground truth for their own activities. This research therefore involves the users of HAR monitors in the annotation process. The process relies solely on users' short term memory and engages with them to parsimoniously provide annotations for their own activities as they unfold. E ects of user input are optimised by using Online Active Learning (OAL) to identify the most critical annotations which are expected to lead to highly optimal HAR model performance gains. Personalised HAR models are trained from user-provided annotations as part of the evaluation, focusing mainly on objective model accuracy. The OAL approach is contrasted with Random Selection (RS) { a naive method which makes uninformed annotation requests. A range of simulation-based annotation scenarios demonstrate that using OAL brings bene ts in terms of HAR model performance over RS. Additionally, a mobile application is implemented and deployed in a naturalistic context to collect annotations from a panel of human participants. The deployment is proof that the method can truly run in online mode and it also shows that considerable HAR model performance gains can be registered even under realistic conditions. The ndings from this research point to the conclusion that online learning from userprovided annotations is a valid solution to the problem of constructing personalised HAR models.
author Miu, Tudor Alin
author_facet Miu, Tudor Alin
author_sort Miu, Tudor Alin
title Online learning of personalised human activity recognition models from user-provided annotations
title_short Online learning of personalised human activity recognition models from user-provided annotations
title_full Online learning of personalised human activity recognition models from user-provided annotations
title_fullStr Online learning of personalised human activity recognition models from user-provided annotations
title_full_unstemmed Online learning of personalised human activity recognition models from user-provided annotations
title_sort online learning of personalised human activity recognition models from user-provided annotations
publisher University of Newcastle upon Tyne
publishDate 2017
url https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.724696
work_keys_str_mv AT miutudoralin onlinelearningofpersonalisedhumanactivityrecognitionmodelsfromuserprovidedannotations
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