Domain Generalization via Ensemble Stacking for Face Presentation Attack Detection
Usman Muhammad, Jorma Laaksonen, Djamila Romaissa Beddiar, and Mourad, Oussalah

TL;DR
This paper introduces a novel face presentation attack detection method that combines synthetic data generation with ensemble stacking to improve generalization across unseen domains.
Contribution
It proposes a comprehensive approach integrating synthetic data creation and deep ensemble learning to enhance cross-domain face PAD performance.
Findings
Achieved low half total error rates on multiple benchmark datasets.
Demonstrated improved generalization to unseen attack types.
Utilized synthetic data to enrich training and boost model robustness.
Abstract
Face Presentation Attack Detection (PAD) plays a pivotal role in securing face recognition systems against spoofing attacks. Although great progress has been made in designing face PAD methods, developing a model that can generalize well to unseen test domains remains a significant challenge. Moreover, due to different types of spoofing attacks, creating a dataset with a sufficient number of samples for training deep neural networks is a laborious task. This work proposes a comprehensive solution that combines synthetic data generation and deep ensemble learning to enhance the generalization capabilities of face PAD. Specifically, synthetic data is generated by blending a static image with spatiotemporal encoded images using alpha composition and video distillation. This way, we simulate motion blur with varying alpha values, thereby generating diverse subsets of synthetic data that…
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Taxonomy
TopicsBiometric Identification and Security · Face recognition and analysis
MethodsBalanced Selection · Test
