Face Morphing Attack Detection with Denoising Diffusion Probabilistic Models

Marija Ivanovska, Vitomir Štruc
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引用次数: 0

Abstract

Morphed face images have recently become a growing concern for existing face verification systems, as they are relatively easy to generate and can be used to impersonate someone’s identity for various malicious purposes. Efficient Morphing Attack Detection (MAD) that generalizes well across different morphing techniques is, therefore, of paramount importance. Existing MAD techniques predominantly rely on discriminative models that learn from examples of bona fide and morphed images and, as a result, often exhibit sub-optimal generalization performance when confronted with unknown types of morphing attacks. To address this problem, we propose a novel, diffusion–based MAD method in this paper that learns only from the characteristics of bona fide images. Various forms of morphing attacks are then detected by our model as out-of-distribution samples. We perform rigorous experiments over four different datasets (CASIA-WebFace, FRLL-Morphs, FERET-Morphs and FRGC-Morphs) and compare the proposed solution to both discriminatively-trained and once-class MAD models. The experimental results show that our MAD model achieves highly competitive results on all considered datasets.
基于去噪扩散概率模型的人脸变形攻击检测
变形的人脸图像最近成为现有人脸验证系统日益关注的问题,因为它们相对容易生成,并且可以用来冒充某人的身份用于各种恶意目的。因此,有效的变形攻击检测(MAD)在不同的变形技术中很好地泛化是至关重要的。现有的MAD技术主要依赖于判别模型,这些模型从真实图像和变形图像的示例中学习,因此,当面对未知类型的变形攻击时,通常表现出次优的泛化性能。为了解决这个问题,本文提出了一种新的基于扩散的MAD方法,该方法仅从真实图像的特征中学习。然后,我们的模型将各种形式的变形攻击检测为分布外样本。我们在四个不同的数据集(CASIA-WebFace, FRLL-Morphs, fet - morphs和FRGC-Morphs)上进行了严格的实验,并将提出的解决方案与判别训练和一次分类的MAD模型进行了比较。实验结果表明,我们的MAD模型在所有考虑的数据集上都取得了高度竞争的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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