Making a good thing better: Enhancing password/PIN-based user authentication with smartwatch
Wearing smartwatches becomes increasingly popular in people’s lives. This paper shows that a smartwatch can help its bearer authenticate to a login system effectively and securely even if the bearer’s password has already been revealed. This idea is motivated by our observation that a sensor-rich sm...
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2018
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sg-smu-ink.sis_research-53902022-11-03T06:31:06Z Making a good thing better: Enhancing password/PIN-based user authentication with smartwatch CHANG, Bing LI, Yingjiu WANG, Qiongxiao ZHU, Wen-Tao DENG, Robert H. Wearing smartwatches becomes increasingly popular in people’s lives. This paper shows that a smartwatch can help its bearer authenticate to a login system effectively and securely even if the bearer’s password has already been revealed. This idea is motivated by our observation that a sensor-rich smartwatch is capable of tracking the wrist motions of its bearer typing a password or PIN, which can be used as an authentication factor. The major challenge in this research is that a sophisticated attacker may imitate a user’s typing behavior as shown in previous research on keystroke dynamics based user authentication. We address this challenge by applying a set of machine learning and deep learning classifiers on the user’s wrist motion data that are collected from a smartwatch worn by the user when inputting his/her password or PIN. Our solution is user-friendly since it does not require users to perform any additional actions when typing passwords or PINs other than wearing smartwatches. We conduct a user study involving 51 participants so as to evaluate the feasibility and performance of our solution. User study results show that the best classifier is the Bagged Decision Trees, which yields 4.58% FRR and 0.12% FAR on a QWERTY keyboard, and 6.13% FRR and 0.16% FAR on a numeric keypad. 2018-12-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/4387 info:doi/10.1186/s42400-018-0009-4 https://ink.library.smu.edu.sg/context/sis_research/article/5390/viewcontent/s42400_018_0009_4.pdf http://creativecommons.org/licenses/by/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Wearable devices User authentication Sensor Machine learning Deep learning Information Security |
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Wearable devices User authentication Sensor Machine learning Deep learning Information Security CHANG, Bing LI, Yingjiu WANG, Qiongxiao ZHU, Wen-Tao DENG, Robert H. Making a good thing better: Enhancing password/PIN-based user authentication with smartwatch |
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Wearing smartwatches becomes increasingly popular in people’s lives. This paper shows that a smartwatch can help its bearer authenticate to a login system effectively and securely even if the bearer’s password has already been revealed. This idea is motivated by our observation that a sensor-rich smartwatch is capable of tracking the wrist motions of its bearer typing a password or PIN, which can be used as an authentication factor. The major challenge in this research is that a sophisticated attacker may imitate a user’s typing behavior as shown in previous research on keystroke dynamics based user authentication. We address this challenge by applying a set of machine learning and deep learning classifiers on the user’s wrist motion data that are collected from a smartwatch worn by the user when inputting his/her password or PIN. Our solution is user-friendly since it does not require users to perform any additional actions when typing passwords or PINs other than wearing smartwatches. We conduct a user study involving 51 participants so as to evaluate the feasibility and performance of our solution. User study results show that the best classifier is the Bagged Decision Trees, which yields 4.58% FRR and 0.12% FAR on a QWERTY keyboard, and 6.13% FRR and 0.16% FAR on a numeric keypad. |
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CHANG, Bing LI, Yingjiu WANG, Qiongxiao ZHU, Wen-Tao DENG, Robert H. |
author_facet |
CHANG, Bing LI, Yingjiu WANG, Qiongxiao ZHU, Wen-Tao DENG, Robert H. |
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CHANG, Bing |
title |
Making a good thing better: Enhancing password/PIN-based user authentication with smartwatch |
title_short |
Making a good thing better: Enhancing password/PIN-based user authentication with smartwatch |
title_full |
Making a good thing better: Enhancing password/PIN-based user authentication with smartwatch |
title_fullStr |
Making a good thing better: Enhancing password/PIN-based user authentication with smartwatch |
title_full_unstemmed |
Making a good thing better: Enhancing password/PIN-based user authentication with smartwatch |
title_sort |
making a good thing better: enhancing password/pin-based user authentication with smartwatch |
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Institutional Knowledge at Singapore Management University |
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2018 |
url |
https://ink.library.smu.edu.sg/sis_research/4387 https://ink.library.smu.edu.sg/context/sis_research/article/5390/viewcontent/s42400_018_0009_4.pdf |
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