CVOct 16, 2025

A Multi-domain Image Translative Diffusion StyleGAN for Iris Presentation Attack Detection

arXiv:2510.14314v1h-index: 72025 IEEE/CVF International Conference on Computer Vision Workshops (ICCVW)
Originality Incremental advance
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This addresses a data scarcity problem in iris biometrics, providing a scalable solution for enhancing presentation attack detection systems.

The paper tackles the scarcity of datasets for iris presentation attack detection by introducing MID-StyleGAN, a framework that generates synthetic ocular images, which improved the true detect rate from 93.41% to 98.72% on the LivDet2020 dataset.

An iris biometric system can be compromised by presentation attacks (PAs) where artifacts such as artificial eyes, printed eye images, or cosmetic contact lenses are presented to the system. To counteract this, several presentation attack detection (PAD) methods have been developed. However, there is a scarcity of datasets for training and evaluating iris PAD techniques due to the implicit difficulties in constructing and imaging PAs. To address this, we introduce the Multi-domain Image Translative Diffusion StyleGAN (MID-StyleGAN), a new framework for generating synthetic ocular images that captures the PA and bonafide characteristics in multiple domains such as bonafide, printed eyes and cosmetic contact lens. MID-StyleGAN combines the strengths of diffusion models and generative adversarial networks (GANs) to produce realistic and diverse synthetic data. Our approach utilizes a multi-domain architecture that enables the translation between bonafide ocular images and different PA domains. The model employs an adaptive loss function tailored for ocular data to maintain domain consistency. Extensive experiments demonstrate that MID-StyleGAN outperforms existing methods in generating high-quality synthetic ocular images. The generated data was used to significantly enhance the performance of PAD systems, providing a scalable solution to the data scarcity problem in iris and ocular biometrics. For example, on the LivDet2020 dataset, the true detect rate at 1% false detect rate improved from 93.41% to 98.72%, showcasing the impact of the proposed method.

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