A Multi-Modal Approach for Face Anti-Spoofing in Non-Calibrated Systems using Disparity Maps
Ariel Larey, Eyal Rond, Omer Achrack

TL;DR
This paper presents a novel multi-modal anti-spoofing approach using disparity maps derived from facial attributes in non-calibrated systems, significantly improving detection accuracy against 3D face spoofing attacks.
Contribution
It introduces a disparity-based anti-spoofing model for non-calibrated systems and demonstrates superior performance over existing methods with a comprehensive dataset.
Findings
Achieved an EER of 1.71% and FNR of 2.77% at 1% FPR
Outperformed existing methods by 2.45% in EER
Ensemble model effectively detects 3D spoof attacks
Abstract
Face recognition technologies are increasingly used in various applications, yet they are vulnerable to face spoofing attacks. These spoofing attacks often involve unique 3D structures, such as printed papers or mobile device screens. Although stereo-depth cameras can detect such attacks effectively, their high-cost limits their widespread adoption. Conversely, two-sensor systems without extrinsic calibration offer a cost-effective alternative but are unable to calculate depth using stereo techniques. In this work, we propose a method to overcome this challenge by leveraging facial attributes to derive disparity information and estimate relative depth for anti-spoofing purposes, using non-calibrated systems. We introduce a multi-modal anti-spoofing model, coined Disparity Model, that incorporates created disparity maps as a third modality alongside the two original sensor modalities. We…
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Taxonomy
TopicsAntenna Design and Analysis · Biometric Identification and Security · Infant Health and Development
