Implicit detection of user handedness in touchscreen devices through interaction analysis
Mobile devices now rival desktop computers as the most popular devices for web surfing and E-commerce. As screen sizes of mobile devices continue to get larger, operating smartphones with a single-hand becomes increasingly difficult. Automatic operating hand detection would enable E-commerce applica...
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doaj-511fa3ee6f24400ba0c53d063a083cee2021-05-01T15:05:08ZengPeerJ Inc.PeerJ Computer Science2376-59922021-04-017e48710.7717/peerj-cs.487Implicit detection of user handedness in touchscreen devices through interaction analysisCarla Fernández0Martin Gonzalez-Rodriguez1Daniel Fernandez-Lanvin2Javier De Andrés3Miguel Labrador4Department of Computer Science, University of Oviedo, Oviedo, Asturias, SpainDepartment of Computer Science, University of Oviedo, Oviedo, Asturias, SpainDepartment of Computer Science, University of Oviedo, Oviedo, Asturias, SpainDepartment of Accounting, University of Oviedo, Oviedo, Asturias, SpainDepartment of Computer Science, University of South Florida, Tampa, FL, United States of AmericaMobile devices now rival desktop computers as the most popular devices for web surfing and E-commerce. As screen sizes of mobile devices continue to get larger, operating smartphones with a single-hand becomes increasingly difficult. Automatic operating hand detection would enable E-commerce applications to adapt their interfaces to better suit their user’s handedness interaction requirements. This paper addresses the problem of identifying the operative hand by avoiding the use of mobile sensors that may pose a problem in terms of battery consumption or distortion due to different calibrations, improving the accuracy of user categorization through an evaluation of different classification strategies. A supervised classifier based on machine learning was constructed to label the operating hand as left or right. The classifier uses features extracted from touch traces such as scrolls and button clicks on a data-set of 174 users. The approach proposed by this paper is not platform-specific and does not rely on access to gyroscopes or accelerometers, widening its applicability to any device with a touchscreen.https://peerj.com/articles/cs-487.pdfMachine learningHandednessCustomizationStealth data gatheringUsabilityAccessibility |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Carla Fernández Martin Gonzalez-Rodriguez Daniel Fernandez-Lanvin Javier De Andrés Miguel Labrador |
spellingShingle |
Carla Fernández Martin Gonzalez-Rodriguez Daniel Fernandez-Lanvin Javier De Andrés Miguel Labrador Implicit detection of user handedness in touchscreen devices through interaction analysis PeerJ Computer Science Machine learning Handedness Customization Stealth data gathering Usability Accessibility |
author_facet |
Carla Fernández Martin Gonzalez-Rodriguez Daniel Fernandez-Lanvin Javier De Andrés Miguel Labrador |
author_sort |
Carla Fernández |
title |
Implicit detection of user handedness in touchscreen devices through interaction analysis |
title_short |
Implicit detection of user handedness in touchscreen devices through interaction analysis |
title_full |
Implicit detection of user handedness in touchscreen devices through interaction analysis |
title_fullStr |
Implicit detection of user handedness in touchscreen devices through interaction analysis |
title_full_unstemmed |
Implicit detection of user handedness in touchscreen devices through interaction analysis |
title_sort |
implicit detection of user handedness in touchscreen devices through interaction analysis |
publisher |
PeerJ Inc. |
series |
PeerJ Computer Science |
issn |
2376-5992 |
publishDate |
2021-04-01 |
description |
Mobile devices now rival desktop computers as the most popular devices for web surfing and E-commerce. As screen sizes of mobile devices continue to get larger, operating smartphones with a single-hand becomes increasingly difficult. Automatic operating hand detection would enable E-commerce applications to adapt their interfaces to better suit their user’s handedness interaction requirements. This paper addresses the problem of identifying the operative hand by avoiding the use of mobile sensors that may pose a problem in terms of battery consumption or distortion due to different calibrations, improving the accuracy of user categorization through an evaluation of different classification strategies. A supervised classifier based on machine learning was constructed to label the operating hand as left or right. The classifier uses features extracted from touch traces such as scrolls and button clicks on a data-set of 174 users. The approach proposed by this paper is not platform-specific and does not rely on access to gyroscopes or accelerometers, widening its applicability to any device with a touchscreen. |
topic |
Machine learning Handedness Customization Stealth data gathering Usability Accessibility |
url |
https://peerj.com/articles/cs-487.pdf |
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