Empirical study of face authentication systems under OSNFD attacks
Face authentication has been widely available on smartphones, tablets, and laptops. As numerous personal images are published in online social networks (OSNs), OSN-based facial disclosure (OSNFD) creates significant threat against face authentication. We make the first attempt to quantitatively meas...
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sg-smu-ink.sis_research-43412020-03-25T09:19:39Z Empirical study of face authentication systems under OSNFD attacks LI, Yan Yingjiu LI, XU, KE, YAN, Qiang DENG, Robert H. Face authentication has been widely available on smartphones, tablets, and laptops. As numerous personal images are published in online social networks (OSNs), OSN-based facial disclosure (OSNFD) creates significant threat against face authentication. We make the first attempt to quantitatively measure OSNFD threat to real-world face authentication systems on smartphones, tablets, and laptops. Our results show that the percentage of vulnerable users that are subject to spoofing attacks is high, which is about 64% for laptop users, and 93% smartphone/tablet users. We investigate liveness detection methods in the real-world face authentication systems against OSNFD threat. We discover that under protection of liveness detection, the percentage of vulnerable images is 18.8%, but the percentage of vulnerable users is as high as 73.3%. This evidence suggests that the current face authentication systems are not strong enough under OSNFD attacks. Finally, we develop a risk estimation tool based on logistic regression, and analyze the impacts of key attributes of facial images on the OSNFD risk. Our statistical analysis reveals that the most influential attributes of facial images are image resolution, facial makeup, occluded eyes, and illumination. This tool can be used to evaluate OSNFD risk for OSN images to increase users’ awareness of OSNFD. 2018-04-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/3339 info:doi/10.1109/TDSC.2016.2550459 https://ink.library.smu.edu.sg/context/sis_research/article/4341/viewcontent/faceauthentication_final.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 liveness detection Face authentication online social networks OSN-based facial disclosure Computer Sciences Information Security |
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liveness detection Face authentication online social networks OSN-based facial disclosure Computer Sciences Information Security LI, Yan Yingjiu LI, XU, KE, YAN, Qiang DENG, Robert H. Empirical study of face authentication systems under OSNFD attacks |
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Face authentication has been widely available on smartphones, tablets, and laptops. As numerous personal images are published in online social networks (OSNs), OSN-based facial disclosure (OSNFD) creates significant threat against face authentication. We make the first attempt to quantitatively measure OSNFD threat to real-world face authentication systems on smartphones, tablets, and laptops. Our results show that the percentage of vulnerable users that are subject to spoofing attacks is high, which is about 64% for laptop users, and 93% smartphone/tablet users. We investigate liveness detection methods in the real-world face authentication systems against OSNFD threat. We discover that under protection of liveness detection, the percentage of vulnerable images is 18.8%, but the percentage of vulnerable users is as high as 73.3%. This evidence suggests that the current face authentication systems are not strong enough under OSNFD attacks. Finally, we develop a risk estimation tool based on logistic regression, and analyze the impacts of key attributes of facial images on the OSNFD risk. Our statistical analysis reveals that the most influential attributes of facial images are image resolution, facial makeup, occluded eyes, and illumination. This tool can be used to evaluate OSNFD risk for OSN images to increase users’ awareness of OSNFD. |
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text |
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LI, Yan Yingjiu LI, XU, KE, YAN, Qiang DENG, Robert H. |
author_facet |
LI, Yan Yingjiu LI, XU, KE, YAN, Qiang DENG, Robert H. |
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LI, Yan |
title |
Empirical study of face authentication systems under OSNFD attacks |
title_short |
Empirical study of face authentication systems under OSNFD attacks |
title_full |
Empirical study of face authentication systems under OSNFD attacks |
title_fullStr |
Empirical study of face authentication systems under OSNFD attacks |
title_full_unstemmed |
Empirical study of face authentication systems under OSNFD attacks |
title_sort |
empirical study of face authentication systems under osnfd attacks |
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Institutional Knowledge at Singapore Management University |
publishDate |
2018 |
url |
https://ink.library.smu.edu.sg/sis_research/3339 https://ink.library.smu.edu.sg/context/sis_research/article/4341/viewcontent/faceauthentication_final.pdf |
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