Type of Publication
Conference Papers
Date:
9 /
2025
Status
Accepted
Featured in:
IEEE International Joint Conference on Biometrics (IJCB 2025)
Authors:
Ajnas Muhammed; Iurii Medvedev; Nuno Gonçalves
Advancement of machine learning techniques, com bined with the availability of large-scale datasets, has significantly improved the accuracy and efficiency of facial recognition. Modern facial recognition systems are trained using large face datasets collected from diverse individuals or public repositories. However, for training, these datasets are often replicated and stored in multiple workstations, resulting in data replication, which complicates database management and oversight. At present, once a user submits their face for dataset preparation, they lose control over how their data is used, raising a significant privacy and ethical concerns. This paper introduces VOIDFace, a novel framework for facial recognition systems that addresses two major issues. First, it eliminates the need of data replication and improves data control to securely store training face data by using Visual Secret Sharing. Second, it proposes a patch-based multi-training network that uses this novel training data storage mechanism to develop robust, privacy-preserving facial recognition systems. By integrating these advancements, VOIDFace aims to improve the privacy, security, and efficiency of facial recognition training while ensuring greater control over sensitive personal face data. VOIDFace also enables users to exercise their Right-to-be-Forgotten property to control their personal data. Experimental evaluations on the VGGFace2 dataset show that VOIDFace provides Right-to-be-Forgotten, improved data control, security, and privacy while maintaining competitive facial recognition performance.
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Institute of Systems and Robotics Department of Electrical and Computers Engineering University of Coimbra