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Predicting sex as a soft-biometric from device interaction swipe gestures

Predicting sex as a soft-biometric from device interaction swipe gestures
Predicting sex as a soft-biometric from device interaction swipe gestures
Touch and multi-touch gestures are becoming the most common way to interact with technology such as smart phones, tablets and other mobile devices. The latest touch-screen input capacities have tremendously increased the quantity and quality of available gesture data, which has led to the exploration of its use in multiple disciplines from psychology to biometrics. Following research studies undertaken in similar modalities such as keystroke and mouse usage biometrics, the present work proposes the use of swipe gesture data for the prediction of soft-biometrics, specifically the user's sex. This paper details the software and protocol used for the data collection, the feature set extracted and subsequent machine learning analysis. Within this analysis, the BestFirst feature selection technique and classification algorithms (naïve Bayes, logistic regression, support vector machine and decision tree) have been tested. The results of this exploratory analysis have confirmed the possibility of sex prediction from the swipe gesture data, obtaining an encouraging 78% accuracy rate using swipe gesture data from two different directions. These results will hopefully encourage further research in this area, where the prediction of soft-biometrics traits from swipe gesture data can play an important role in enhancing the authentication processes based on touch-screen devices.
44-51
Miguel-Hurtado, Oscar
57a8ef90-e39d-4731-a271-0399d7201d34
Stevenage, Sarah
493f8c57-9af9-4783-b189-e06b8e958460
Bevan, Chris
15ecc8cb-bf4a-4c7a-bddd-800dc73dc70d
Guest, Richard
264ed94a-5d42-4b1b-a4bc-d4f83319de5c
Miguel-Hurtado, Oscar
57a8ef90-e39d-4731-a271-0399d7201d34
Stevenage, Sarah
493f8c57-9af9-4783-b189-e06b8e958460
Bevan, Chris
15ecc8cb-bf4a-4c7a-bddd-800dc73dc70d
Guest, Richard
264ed94a-5d42-4b1b-a4bc-d4f83319de5c

Miguel-Hurtado, Oscar, Stevenage, Sarah, Bevan, Chris and Guest, Richard (2016) Predicting sex as a soft-biometric from device interaction swipe gestures. Pattern Recognition Letters, 79, 44-51. (doi:10.1016/j.patrec.2016.04.024).

Record type: Article

Abstract

Touch and multi-touch gestures are becoming the most common way to interact with technology such as smart phones, tablets and other mobile devices. The latest touch-screen input capacities have tremendously increased the quantity and quality of available gesture data, which has led to the exploration of its use in multiple disciplines from psychology to biometrics. Following research studies undertaken in similar modalities such as keystroke and mouse usage biometrics, the present work proposes the use of swipe gesture data for the prediction of soft-biometrics, specifically the user's sex. This paper details the software and protocol used for the data collection, the feature set extracted and subsequent machine learning analysis. Within this analysis, the BestFirst feature selection technique and classification algorithms (naïve Bayes, logistic regression, support vector machine and decision tree) have been tested. The results of this exploratory analysis have confirmed the possibility of sex prediction from the swipe gesture data, obtaining an encouraging 78% accuracy rate using swipe gesture data from two different directions. These results will hopefully encourage further research in this area, where the prediction of soft-biometrics traits from swipe gesture data can play an important role in enhancing the authentication processes based on touch-screen devices.

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More information

Accepted/In Press date: 29 April 2016
e-pub ahead of print date: 17 May 2016
Published date: 1 August 2016

Identifiers

Local EPrints ID: 398188
URI: http://eprints.soton.ac.uk/id/eprint/398188
PURE UUID: b717cea5-ea05-41e9-ae74-df685e6d9c31
ORCID for Sarah Stevenage: ORCID iD orcid.org/0000-0003-4155-2939

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Date deposited: 21 Jul 2016 10:23
Last modified: 24 Apr 2024 01:34

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Contributors

Author: Oscar Miguel-Hurtado
Author: Sarah Stevenage ORCID iD
Author: Chris Bevan
Author: Richard Guest

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