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  4. SelfMAD: Enhancing Generalization and Robustness in Morphing Attack Detection via Self-Supervised Learning
 
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2025
Conference Paper
Title

SelfMAD: Enhancing Generalization and Robustness in Morphing Attack Detection via Self-Supervised Learning

Abstract
With the continuous advancement of generative models, face morphing attacks have become a significant challenge for existing face verification systems due to their potential use in identity fraud and other malicious activities. Contemporary Morphing Attack Detection (MAD) approaches frequently rely on supervised, discriminative models trained on examples of bona fide and morphed images. These models typically perform well with morphs generated with techniques seen during training, but often lead to sub-optimal performance when subjected to novel unseen morphing techniques. While unsupervised models have been shown to perform better in terms of generalizability, they typically result in higher error rates, as they struggle to effectively capture features of subtle artifacts. To address these shortcomings, we present SelfMAD, a novel self-supervised approach that simulates general morphing attack artifacts, allowing classifiers to learn generic and robust decision boundaries without overfitting to the specific artifacts induced by particular face morphing methods. Through extensive experiments on widely used datasets, we demonstrate that SelfMAD significantly outperforms current state-of-theart MADs, reducing the detection error by more than 64% in terms of EER when compared to the strongest unsupervised competitor, and by more than 66%, when compared to the best performing discriminative MAD model, tested in crossmorph settings. The source code for SelfMAD is available at https://github.com/LeonTodorov/SelfMAD.
Author(s)
Ivanovska, Marija
University of Ljubljana
Todorov, Leon
University of Ljubljana
Damer, Naser  
Fraunhofer-Institut für Graphische Datenverarbeitung IGD  
Jain, Deepak Kumar
Dalian University of Technology
Peer, Peter
University of Ljubljana
Štruc, Vitomir
University of Ljubljana
Mainwork
IEEE 19th International Conference on Automatic Face and Gesture Recognition, FG 2025  
Project(s)
Next Generation Biometric Systems  
Next Generation Biometric Systems  
Funder
Bundesministerium für Bildung und Forschung -BMBF-
Hessisches Ministerium für Wissenschaft und Kunst -HMWK-  
Conference
International Conference on Automatic Face and Gesture Recognition 2025  
DOI
10.1109/FG61629.2025.11099381
Language
English
Fraunhofer-Institut für Graphische Datenverarbeitung IGD  
Keyword(s)
  • Branche: Information Technology

  • Research Line: Computer vision (CV)

  • Research Line: Human computer interaction (HCI)

  • Research Line: Machine learning (ML)

  • LTA: Monitoring and control of processes and systems

  • LTA: Machine intelligence, algorithms, and data structures (incl. semantics)

  • LTA: Generation, capture, processing, and output of images and 3D models

  • Deep learning

  • Machine learning

  • Face recognition

  • Biometrics

  • ATHENE

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