Deep Representations for Iris, Face, and Fingerprint Spoofing Detection
David Menotti, Giovani Chiachia, Allan Pinto, William Robson Schwartz,, Helio Pedrini, Alexandre Xavier Falcao, Anderson Rocha

TL;DR
This paper develops deep learning-based spoofing detection systems for iris, face, and fingerprint biometrics, outperforming existing methods across multiple benchmarks by leveraging convolutional networks and training strategies.
Contribution
It introduces a dual deep learning approach combining architecture learning and weight learning, achieving state-of-the-art results in biometric spoofing detection.
Findings
Outperforms previous methods in 8 out of 9 benchmarks.
Deep convolutional networks provide robust spoofing detection.
Approach is adaptable to future attack types.
Abstract
Biometrics systems have significantly improved person identification and authentication, playing an important role in personal, national, and global security. However, these systems might be deceived (or "spoofed") and, despite the recent advances in spoofing detection, current solutions often rely on domain knowledge, specific biometric reading systems, and attack types. We assume a very limited knowledge about biometric spoofing at the sensor to derive outstanding spoofing detection systems for iris, face, and fingerprint modalities based on two deep learning approaches. The first approach consists of learning suitable convolutional network architectures for each domain, while the second approach focuses on learning the weights of the network via back-propagation. We consider nine biometric spoofing benchmarks --- each one containing real and fake samples of a given biometric modality…
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