On Quaternions and Activity Classification Across Sensor Domains
Activity classification based on sensor data is a challenging task. Many studies have focused on two main methods to enable activity classification; namely sensor level classification and body-model level classification. This study aims to enable activity classification across sensor domains by cons...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-511962020-09-29T05:39:17Z On Quaternions and Activity Classification Across Sensor Domains Dennis, Jacob Henry Electrical and Computer Engineering Martin, Thomas L. Jones, Mark T. Polys, Nicholas Fearing quaternions sensor agnostic body-model Activity classification based on sensor data is a challenging task. Many studies have focused on two main methods to enable activity classification; namely sensor level classification and body-model level classification. This study aims to enable activity classification across sensor domains by considering an e-textile garment and provide the groundwork for transferring the e-textile garment to a vision-based classifier. The framework is comprised of three main components that enable the successful transfer of the body-worn system to the vision-based classifier. The inter-class confusion of the activity space is quantified to allow an ideal prediction of known class accuracy for varying levels of error within the system. Methods for quantifying sensor and garment level error are undertaken to identify challenges specific to a body-worn system. These methods are then used to inform decisions related to the classification accuracy and threshold of the classifier. Using activities from a vision-based system known to the classifier, a user study was conducted to generate an observed set of activities from the body-worn system. The results indicate that the vision-based classifier used is user-independent and can successfully handle classification across sensor domains. Master of Science 2015-01-18T09:00:41Z 2015-01-18T09:00:41Z 2015-01-17 Thesis vt_gsexam:4427 http://hdl.handle.net/10919/51196 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf application/pdf Virginia Tech |
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quaternions sensor agnostic body-model |
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quaternions sensor agnostic body-model Dennis, Jacob Henry On Quaternions and Activity Classification Across Sensor Domains |
description |
Activity classification based on sensor data is a challenging task. Many studies have focused on two main
methods to enable activity classification; namely sensor level classification and body-model level classification.
This study aims to enable activity classification across sensor domains by considering an e-textile garment
and provide the groundwork for transferring the e-textile garment to a vision-based classifier. The framework
is comprised of three main components that enable the successful transfer of the body-worn system to the
vision-based classifier. The inter-class confusion of the activity space is quantified to allow an ideal prediction
of known class accuracy for varying levels of error within the system. Methods for quantifying sensor and
garment level error are undertaken to identify challenges specific to a body-worn system. These methods
are then used to inform decisions related to the classification accuracy and threshold of the classifier. Using
activities from a vision-based system known to the classifier, a user study was conducted to generate an
observed set of activities from the body-worn system. The results indicate that the vision-based classifier
used is user-independent and can successfully handle classification across sensor domains. === Master of Science |
author2 |
Electrical and Computer Engineering |
author_facet |
Electrical and Computer Engineering Dennis, Jacob Henry |
author |
Dennis, Jacob Henry |
author_sort |
Dennis, Jacob Henry |
title |
On Quaternions and Activity Classification Across Sensor Domains |
title_short |
On Quaternions and Activity Classification Across Sensor Domains |
title_full |
On Quaternions and Activity Classification Across Sensor Domains |
title_fullStr |
On Quaternions and Activity Classification Across Sensor Domains |
title_full_unstemmed |
On Quaternions and Activity Classification Across Sensor Domains |
title_sort |
on quaternions and activity classification across sensor domains |
publisher |
Virginia Tech |
publishDate |
2015 |
url |
http://hdl.handle.net/10919/51196 |
work_keys_str_mv |
AT dennisjacobhenry onquaternionsandactivityclassificationacrosssensordomains |
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