Enhancing Resilience in Biometric Research: Generation of 3D Synthetic Face Data Using Advanced 3D Character Creation Techniques from High-Fidelity Video Games and Animation
Author:
Blümel Florian Erwin1ORCID, Schulz Mathias1, Breithaupt Ralph2, Jung Norbert1, Lange Robert1ORCID
Affiliation:
1. Institute for Safety and Security Research, Bonn-Rhein-Sieg University of Applied Science, Grantham-Allee 20, 53757 Sankt Augustin, Germany 2. Federal Office for Information Security, Heinemannstraße 11-13, 53175 Bonn, Germany
Abstract
Biometric authentication plays a vital role in various everyday applications with increasing demands for reliability and security. However, the use of real biometric data for research raises privacy concerns and data scarcity issues. A promising approach using synthetic biometric data to address the resulting unbalanced representation and bias, as well as the limited availability of diverse datasets for the development and evaluation of biometric systems, has emerged. Methods for a parameterized generation of highly realistic synthetic data are emerging and the necessary quality metrics to prove that synthetic data can compare to real data are open research tasks. The generation of 3D synthetic face data using game engines’ capabilities of generating varied realistic virtual characters is explored as a possible alternative for generating synthetic face data while maintaining reproducibility and ground truth, as opposed to other creation methods. While synthetic data offer several benefits, including improved resilience against data privacy concerns, the limitations and challenges associated with their usage are addressed. Our work shows concurrent behavior in comparing semi-synthetic data as a digital representation of a real identity with their real datasets. Despite slight asymmetrical performance in comparison with a larger database of real samples, a promising performance in face data authentication is shown, which lays the foundation for further investigations with digital avatars and the creation and analysis of fully synthetic data. Future directions for improving synthetic biometric data generation and their impact on advancing biometrics research are discussed.
Funder
Federal Office for Information Security Institute of Safety and Security Research (ISF) of the Hochschule Bonn-Rhein-Sieg
Reference17 articles.
1. Zhang, H., Grimmer, M., Ramachandra, R., Raja, K., and Busch, C. (2021, January 6–7). On the Applicability of Synthetic Data for Face Recognition. Proceedings of the 2021 IEEE International Workshop on Biometrics and Forensics (IWBF), Rome, Italy. 2. Joshi, I., Grimmer, M., Rathgeb, C., Busch, C., Bremond, F., and Dantcheva, A. (2022). Synthetic Data in Human Analysis: A Survey. arXiv. 3. Wood, E., Baltrusaitis, T., Hewitt, C., Dziadzio, S., Cashman, T.J., and Shotton, J. (2021, January 11–17). Fake it Till You Make It: Face analysis in the wild using synthetic data alone. Proceedings of the IEEE/CVF International Conference on Computer Vision, Virtual. 4. Gallucci, A., Znamenskiy, D., Long, Y., Pezzotti, N., and Petkovic, M. (2023). Generating High-Resolution 3D Faces and Bodies Using VQ-VAE-2 with PixelSNAIL Networks on 2D Representations. Sensors, 23. 5. Kärkkäinen, K., and Joo, J. (2021, January 3–8). Fairface: Face attribute dataset for balanced race, gender, and age. Proceedings of the 2021 IEEE Winter Conference on Applications of Computer Vision (WACV), Waikoloa, HI, USA.
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