Author:
Li Hailin,Ramachandra Raghavendra
Abstract
AbstractSmartphone-based biometric authentication has been widely used in various applications. Among several biometric characteristics, fingerphoto biometrics captured from smartphones are gaining popularity owing to their usability, scalability across different smartphones, and reliable verification. However, fingerphoto verification systems are vulnerable to both direct and indirect attacks. In this work, we propose a novel method to generate morphing attacks on fingerphoto biometrics captured using smartphones. We introduce three different image-level fingerphoto morphing attack generation algorithms that can generate high-quality fingerphoto morphing images with minimum distortions. Extensive experiments were conducted on two datasets captured using different smartphones under various environmental conditions. The results demonstrate that the proposed morphing algorithms are highly vulnerable to commercial off-the-shelf and block-directional fingerprint verification systems. To effectively detect morphing attacks on fingerphoto biometrics, we propose the use of fingerphoto morphing attack detection algorithms that utilize both handcrafted and deep features. However, our detection results showed a high error rate in accurately detecting these types of attacks.
Funder
Norges Forskningsråd
NTNU Norwegian University of Science and Technology
Publisher
Springer Science and Business Media LLC
Reference38 articles.
1. Rattani, A., Derakhshani, R. & Ross, A. Selfie biometrics (Springer Nature, Advances and Challenges, Cham, 2019).
2. Tapia, J. E., Valenzuela, A., Lara, R., Gomez-Barrero, M. & Busch, C. Selfie periocular verification using an efficient super-resolution approach. Ieee Access 10, 67573–67589 (2022).
3. Telos. Touchless mobile fingerprinting: Efficient and cost-effective identity verification. howpublishedhttps://www.telos.com/wp-content/uploads/pdf/ONYX-Mobile-Fingerprinting-Overview-Ebook.pdf ( 2023). noteONYX.
4. Yin, X., Zhu, Y. & Hu, J. A survey on 2d and 3d contactless fingerprint biometrics: a taxonomy, review, and future directions. IEEE Open J. Comput. Soc. 2, 370–381 (2021).
5. Stein, C., Nickel, C. & Busch, C. Fingerphoto recognition with smartphone cameras. In 2012 BIOSIG-Proceedings of the International Conference of Biometrics Special Interest Group (BIOSIG), 1–12 ( IEEE, 2012).