Scaling human activity recognition via deep learning-based domain adaptation
We investigate the problem of making human activityrecognition (AR) scalable–i.e., allowing AR classifiers trainedin one context to be readily adapted to a different contextualdomain. This is important because AR technologies can achievehigh accuracy if the classifiers are trained for a specific ind...
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sg-smu-ink.sis_research-49792019-03-19T07:36:10Z Scaling human activity recognition via deep learning-based domain adaptation KHAN, Md Abdullah Hafiz ROY, Nirmalya MISRA, Archan We investigate the problem of making human activityrecognition (AR) scalable–i.e., allowing AR classifiers trainedin one context to be readily adapted to a different contextualdomain. This is important because AR technologies can achievehigh accuracy if the classifiers are trained for a specific individualor device, but show significant degradation when the sameclassifier is applied context–e.g., to a different device located ata different on-body position. To allow such adaptation withoutrequiring the onerous step of collecting large volumes of labeledtraining data in the target domain, we proposed a transductivetransfer learning model that is specifically tuned to the propertiesof convolutional neural networks (CNNs). Our model, calledHDCNN, assumes that the relative distribution of weights in thedifferent CNN layers will remain invariant, as long as the set ofactivities being monitored does not change. Evaluation on realworlddata shows that HDCNN is able to achieve high accuracyeven without any labeled training data in the target domain,and offers even higher accuracy (significantly outperformingcompetitive shallow and deep classifiers) when even a modestamount of labeled training data is available. 2018-03-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/3977 info:doi/10.1109/PERCOM.2018.8444585 https://ink.library.smu.edu.sg/context/sis_research/article/4979/viewcontent/1570401905_CameraReady.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Data Storage Systems OS and Networks Programming Languages and Compilers |
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Data Storage Systems OS and Networks Programming Languages and Compilers KHAN, Md Abdullah Hafiz ROY, Nirmalya MISRA, Archan Scaling human activity recognition via deep learning-based domain adaptation |
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We investigate the problem of making human activityrecognition (AR) scalable–i.e., allowing AR classifiers trainedin one context to be readily adapted to a different contextualdomain. This is important because AR technologies can achievehigh accuracy if the classifiers are trained for a specific individualor device, but show significant degradation when the sameclassifier is applied context–e.g., to a different device located ata different on-body position. To allow such adaptation withoutrequiring the onerous step of collecting large volumes of labeledtraining data in the target domain, we proposed a transductivetransfer learning model that is specifically tuned to the propertiesof convolutional neural networks (CNNs). Our model, calledHDCNN, assumes that the relative distribution of weights in thedifferent CNN layers will remain invariant, as long as the set ofactivities being monitored does not change. Evaluation on realworlddata shows that HDCNN is able to achieve high accuracyeven without any labeled training data in the target domain,and offers even higher accuracy (significantly outperformingcompetitive shallow and deep classifiers) when even a modestamount of labeled training data is available. |
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text |
author |
KHAN, Md Abdullah Hafiz ROY, Nirmalya MISRA, Archan |
author_facet |
KHAN, Md Abdullah Hafiz ROY, Nirmalya MISRA, Archan |
author_sort |
KHAN, Md Abdullah Hafiz |
title |
Scaling human activity recognition via deep learning-based domain adaptation |
title_short |
Scaling human activity recognition via deep learning-based domain adaptation |
title_full |
Scaling human activity recognition via deep learning-based domain adaptation |
title_fullStr |
Scaling human activity recognition via deep learning-based domain adaptation |
title_full_unstemmed |
Scaling human activity recognition via deep learning-based domain adaptation |
title_sort |
scaling human activity recognition via deep learning-based domain adaptation |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2018 |
url |
https://ink.library.smu.edu.sg/sis_research/3977 https://ink.library.smu.edu.sg/context/sis_research/article/4979/viewcontent/1570401905_CameraReady.pdf |
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