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Privacy-friendly Synthetic Data for the Development of Face Morphing Attack Detectors

About

The main question this work aims at answering is: "can morphing attack detection (MAD) solutions be successfully developed based on synthetic data?". Towards that, this work introduces the first synthetic-based MAD development dataset, namely the Synthetic Morphing Attack Detection Development dataset (SMDD). This dataset is utilized successfully to train three MAD backbones where it proved to lead to high MAD performance, even on completely unknown attack types. Additionally, an essential aspect of this work is the detailed legal analyses of the challenges of using and sharing real biometric data, rendering our proposed SMDD dataset extremely essential. The SMDD dataset, consisting of 30,000 attack and 50,000 bona fide samples, is publicly available for research purposes.

Naser Damer, C\'esar Augusto Fontanillo L\'opez, Meiling Fang, No\'emie Spiller, Minh Vu Pham, Fadi Boutros• 2022

Related benchmarks

TaskDatasetResultRank
Single-image Morphing Attack DetectionMAD22
EER (OpenCV)7.52
8
Single-image Morphing Attack DetectionFRLL-Morph
OpenCV EER4.39
8
Morphing Attack DetectionFaceMorph
EER (%)4.6
3
Morphing Attack Detectionopencv
EER8.33
3
Morphing Attack DetectionWebMorph
EER18.2
3
Morphing Attack DetectionMorDIFF
EER9.4
3
Morphing Attack DetectionDCMorph
EER69.2
3
Morphing Attack DetectionMIPGAN-I
EER16.6
3
Morphing Attack DetectionMIPGAN-II
EER (%)20.52
3
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