More than just an auxiliary loss: Anti-spoofing Backbone Training via Adversarial Pseudo-depth Generation
Chang Keun Paik, Naeun Ko, Youngjoon Yoo

TL;DR
This paper introduces a novel adversarial pseudo-depth generation training method for anti-spoofing that improves generalization and reduces model complexity, outperforming existing models with fewer parameters.
Contribution
It proposes using a GAN-based pseudo-depth pre-training approach to enhance anti-spoofing classifier robustness and efficiency, a significant advancement over prior auxiliary loss methods.
Findings
Improved cross-dataset generalization performance.
Achieves near state-of-the-art accuracy with 15.8x fewer parameters.
Effective using only binary labels without additional semantic info.
Abstract
In this paper, a new method of training pipeline is discussed to achieve significant performance on the task of anti-spoofing with RGB image. We explore and highlight the impact of using pseudo-depth to pre-train a network that will be used as the backbone to the final classifier. While the usage of pseudo-depth for anti-spoofing task is not a new idea on its own, previous endeavours utilize pseudo-depth simply as another medium to extract features for performing prediction, or as part of many auxiliary losses in aiding the training of the main classifier, normalizing the importance of pseudo-depth as just another semantic information. Through this work, we argue that there exists a significant advantage in training the final classifier can be gained by the pre-trained generator learning to predict the corresponding pseudo-depth of a given facial image, from a Generative Adversarial…
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Taxonomy
TopicsDigital Media Forensic Detection · Biometric Identification and Security · Advanced Steganography and Watermarking Techniques
