IJCB 2022 Mobile Behavioral Biometrics Competition (MobileB2C)
- URL: http://arxiv.org/abs/2210.03072v1
- Date: Thu, 6 Oct 2022 17:27:05 GMT
- Title: IJCB 2022 Mobile Behavioral Biometrics Competition (MobileB2C)
- Authors: Giuseppe Stragapede, Ruben Vera-Rodriguez, Ruben Tolosana, Aythami
Morales, Julian Fierrez, Javier Ortega-Garcia, Sanka Rasnayaka, Sachith
Seneviratne, Vipula Dissanayake, Jonathan Liebers, Ashhadul Islam, Samir
Brahim Belhaouari, Sumaiya Ahmad, Suraiya Jabin
- Abstract summary: The aim of MobileB2C is to benchmarking mobile user authentication systems based on behavioral biometric traits transparently acquired by mobile devices.
The data are composed of touchscreen data and several background sensor data simultaneously acquired.
The results achieved by the participants show the feasibility of user authentication through behavioral biometrics, although this proves to be a non-trivial challenge.
- Score: 14.585321226098321
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This paper describes the experimental framework and results of the IJCB 2022
Mobile Behavioral Biometrics Competition (MobileB2C). The aim of MobileB2C is
benchmarking mobile user authentication systems based on behavioral biometric
traits transparently acquired by mobile devices during ordinary Human-Computer
Interaction (HCI), using a novel public database, BehavePassDB, and a standard
experimental protocol. The competition is divided into four tasks corresponding
to typical user activities: keystroke, text reading, gallery swiping, and
tapping. The data are composed of touchscreen data and several background
sensor data simultaneously acquired. "Random" (different users with different
devices) and "skilled" (different user on the same device attempting to imitate
the legitimate one) impostor scenarios are considered. The results achieved by
the participants show the feasibility of user authentication through behavioral
biometrics, although this proves to be a non-trivial challenge. MobileB2C will
be established as an on-going competition.
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