Biometric Identification from Human Aesthetic Preferences

In recent years, human−machine interactions encompass many avenues of life, ranging from personal communications to professional activities. This trend has allowed for person identification based on behavior rather than physical traits to emerge as a growing research domain, which spans ar...

Full description

Bibliographic Details
Main Authors: Brandon Sieu, Marina Gavrilova
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/4/1133
id doaj-ae8a2a4ef4ae45b88a9d699e98ac3bc5
record_format Article
spelling doaj-ae8a2a4ef4ae45b88a9d699e98ac3bc52020-11-25T01:38:34ZengMDPI AGSensors1424-82202020-02-01204113310.3390/s20041133s20041133Biometric Identification from Human Aesthetic PreferencesBrandon Sieu0Marina Gavrilova1Department of Computer Science, University of Calgary, 2500 University Dr. N.W., Calgary, AB T2N1N4, CanadaDepartment of Computer Science, University of Calgary, 2500 University Dr. N.W., Calgary, AB T2N1N4, CanadaIn recent years, human−machine interactions encompass many avenues of life, ranging from personal communications to professional activities. This trend has allowed for person identification based on behavior rather than physical traits to emerge as a growing research domain, which spans areas such as online education, e-commerce, e-communication, and biometric security. The expression of opinions is an example of online behavior that is commonly shared through the liking of online images. Visual aesthetic is a behavioral biometric that involves using a person’s sense of fondness for images. The identification of individuals using their visual aesthetic values as discriminatory features is an emerging domain of research. This paper introduces a novel method for aesthetic feature dimensionality reduction using gene expression programming. The proposed system is capable of using a tree-based genetic approach for feature recombination. Reducing feature dimensionality improves classifier accuracy, reduces computation runtime, and minimizes required storage. The results obtained on a dataset of 200 Flickr users evaluating 40,000 images demonstrate a 95% accuracy of identity recognition based solely on users’ aesthetic preferences.https://www.mdpi.com/1424-8220/20/4/1133pattern recognitionbehavioral biometricsbiometric securitygene expression programmingvisual aestheticshuman–machine interactions
collection DOAJ
language English
format Article
sources DOAJ
author Brandon Sieu
Marina Gavrilova
spellingShingle Brandon Sieu
Marina Gavrilova
Biometric Identification from Human Aesthetic Preferences
Sensors
pattern recognition
behavioral biometrics
biometric security
gene expression programming
visual aesthetics
human–machine interactions
author_facet Brandon Sieu
Marina Gavrilova
author_sort Brandon Sieu
title Biometric Identification from Human Aesthetic Preferences
title_short Biometric Identification from Human Aesthetic Preferences
title_full Biometric Identification from Human Aesthetic Preferences
title_fullStr Biometric Identification from Human Aesthetic Preferences
title_full_unstemmed Biometric Identification from Human Aesthetic Preferences
title_sort biometric identification from human aesthetic preferences
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-02-01
description In recent years, human−machine interactions encompass many avenues of life, ranging from personal communications to professional activities. This trend has allowed for person identification based on behavior rather than physical traits to emerge as a growing research domain, which spans areas such as online education, e-commerce, e-communication, and biometric security. The expression of opinions is an example of online behavior that is commonly shared through the liking of online images. Visual aesthetic is a behavioral biometric that involves using a person’s sense of fondness for images. The identification of individuals using their visual aesthetic values as discriminatory features is an emerging domain of research. This paper introduces a novel method for aesthetic feature dimensionality reduction using gene expression programming. The proposed system is capable of using a tree-based genetic approach for feature recombination. Reducing feature dimensionality improves classifier accuracy, reduces computation runtime, and minimizes required storage. The results obtained on a dataset of 200 Flickr users evaluating 40,000 images demonstrate a 95% accuracy of identity recognition based solely on users’ aesthetic preferences.
topic pattern recognition
behavioral biometrics
biometric security
gene expression programming
visual aesthetics
human–machine interactions
url https://www.mdpi.com/1424-8220/20/4/1133
work_keys_str_mv AT brandonsieu biometricidentificationfromhumanaestheticpreferences
AT marinagavrilova biometricidentificationfromhumanaestheticpreferences
_version_ 1725053019818557440