Performance variation of morphed face image detection algorithms across different datasets

U. Scherhag, C. Rathgeb, C. Busch
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引用次数: 29

Abstract

In past years, different researchers have shown the vulnerability of face recognition systems to attacks based on morphed face images. More recently, first morph detection subsystems have been proposed to automatically detect this kind of fraud. While some algorithms have been reported to reveal practical detection performance on individual datasets a systematic analysis of proposed detectors with respect to their robustness across different databases has remained elusive. In this work, we evaluate the performance of different morph detection algorithms across disjoint datasets of 2,745 bona fide and 14,337 automatically generated morphed face images. Within a generic evaluation framework a systematic robustness estimation scheme is proposed to identify reliable detection algorithms. Finally, the robustness of algorithms which have been determined as most promising is verified on another disjoint dataset. Hence, this paper represents the first attempt towards a comprehensive cross-database performance evaluation and a systematic evaluation of the robustness of morphed face image detection algorithms.
变形人脸图像检测算法在不同数据集上的性能变化
在过去的几年里,不同的研究人员已经证明了人脸识别系统对基于变形人脸图像的攻击的脆弱性。最近,人们提出了第一形态检测子系统来自动检测这类欺诈。虽然一些算法已被报道揭示了在单个数据集上的实际检测性能,但对所提出的检测器在不同数据库中的鲁棒性的系统分析仍然难以捉摸。在这项工作中,我们评估了不同的变形检测算法在2,745张真实和14,337张自动生成的变形人脸图像的不相交数据集上的性能。在一个通用的评估框架内,提出了一种系统的鲁棒性估计方案来识别可靠的检测算法。最后,在另一个不相交数据集上验证了被确定为最有希望的算法的鲁棒性。因此,本文首次尝试对变形人脸图像检测算法进行全面的跨数据库性能评估和系统的鲁棒性评估。
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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