東北大学 大学院情報科学研究科 情報基礎科学専攻 計算機構論分野
(東北大学 工学部 電気情報物理工学科 情報工学コース)
青木・伊藤(康)研究室

Optimizing DINOv2 with Registers for Face Anti-Spoofing

Mika Feng (Tohoku University) , Gallin-Martel Pierre Alexandre (Tohoku University) , Koichi Ito (Tohoku University) , Takafumi Aoki (Tohoku University)
International Conference on Computer Vision Workshops, pp. 3256--3262, October 2025.
Graphical Abstract
Abstract

Face recognition systems are designed to be robust against variations in head pose, illumination, and image blur during capture. However, malicious actors can exploit these systems by presenting a face photo of a registered user, potentially bypassing the authentication process. Such spoofing attacks must be detected prior to face recognition. In this paper, we propose a DINOv2-based spoofing attack detection method to discern minute differences between live and spoofed face images. Specifically, we employ DINOv2 with registers to extract generalizable features and to suppress perturbations in the attention mechanism, which enables focused attention on essential and minute features. We demonstrate the effectiveness of the proposed method through experiments conducted on the dataset provided by ``The 6th Face Anti-Spoofing Workshop: Unified Physical-Digital Attacks Detection@ICCV2025`` and SiW dataset.

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