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2024
Journal Article
Title
Disentangling Morphed Identities for Face Morphing Detection
Abstract
Morphing attacks keep threatening biometric systems, especially face recognition systems. Over time they have become simpler to perform and more realistic, as such, the usage of deep learning systems to detect these attacks has grown. At the same time, there is a constant concern regarding the lack of interpretability of deep learning models. Balancing performance and interpretability has been a difficult task for scientists. However, by leveraging domain information and proving some constraints, we have been able to develop IDistill, an interpretable method with state-of-the-art performance that provides information on both the identity separation on morph samples and their contribution to the final prediction. The domain information is learnt by an autoencoder and distilled to a classifier system in order to teach it to separate identity information. When compared to other methods in the literature it outperforms them in three out of five databases and is competitive in the remaining.
Author(s)
Project(s)
Recovery and Resilience Mechanism
Funder
Bundesministerium für Bildung und Forschung -BMBF-
Open Access
Rights
CC BY 4.0: Creative Commons Attribution
Language
English
Keyword(s)
Branche: Information Technology
Branche: Bioeconomics and Infrastructure
Research Line: Computer vision (CV)
Research Line: Human computer interaction (HCI)
Research Line: Machine learning (ML)
LTA: Interactive decision-making support and assistance systems
LTA: Machine intelligence, algorithms, and data structures (incl. semantics)
LTA: Generation, capture, processing, and output of images and 3D models
Biometrics
Face recognition
Machine learning
Morphing attack
ATHENE