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首页> 外文期刊>IEEE Transactions on Biometrics, Behavior, and Identity Science >Detection of Face Morphing Attacks Based on PRNU Analysis
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Detection of Face Morphing Attacks Based on PRNU Analysis

机译:基于PRNU分析的脸部变形攻击检测

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摘要

Recent research found that attacks based on morphed face images, i.e., morphing attacks, pose a severe security risk to face recognition systems. A reliable morphing attack detection from a single face image remains a research challenge since cameras and morphing techniques used by an attacker are unknown at the time of classification. These issues are commonly overseen while many researchers report encouraging detection performance for training and testing morphing attack detection schemes on images obtained from a single face database employing a single morphing algorithm. In this work, a morphing attack detection system based on the analysis of Photo Response Non-Uniformity (PRNU) is presented. More specifically, spatial and spectral features extracted from PRNU patterns across image cells are analyzed. Differences of these features for bona fide and morphed images are estimated during a threshold-selection stage using the Dresden image database which is specifically built for PRNU analysis in digital image forensics. Cross-database evaluations are then conducted employing an ICAO compliant subset of the FRGCv2 database and a Print-Scan database which is a printed and scanned version of said FRGCv2 subset. Bona fide and morphed face images are automatically generated employing four different morphing algorithms. The proposed PRNU-based morphing attack detector is shown to robustly distinguish bona fide and morphed face images achieving an average D-EER of 11.2% in the best configuration. In scenarios where image sources and morphing techniques are unknown, it is shown to significantly outperform other previously established morphing attack detectors. Finally, the limitations and potential of the approach are demonstrated on a dataset of printed and scanned bona fide and morphed face images.
机译:最近的研究发现,基于变形的面部图像的攻击,即变形攻击,对面部识别系统构成严重的安全风险。自单面图像的可靠性变形攻击检测仍然是研究挑战,因为攻击者在分类时使用的相机和变形技术是未知的。这些问题通常是监督,而许多研究人员则报告鼓励训练和测试从采用单个变形算法获得的图像上获得的图像的攻击检测计划的检测性能。在这项工作中,提出了一种基于照片响应不均匀性(PRNU)分析的变形攻击检测系统。更具体地,分析从图像单元跨图像单元中提取的空间和光谱特征。在阈值选择阶段,使用DRESDON图像数据库在阈值选择阶段估计了这些特征对阈值和变形图像的差异,该序列图像数据库专门用于数字图像取证中的PRNU分析。然后,进行跨数据库评估,采用FRGCV2数据库的ICAO兼容子集和一个印刷版本的所述FRGCV2子集的打印和扫描版本。使用四种不同的变形算法自动生成Bona FIDE和变形的脸部图像。所提出的基于PRNU的变形攻击探测器被证明是鲁棒地区分Bona FIDE和变形的面部图像,以最佳配置实现11.2%的平均d-eer。在图像源和变形技术未知的场景中,显示出显着优于其他先前建立的变形攻击探测器。最后,在印刷和扫描的Bona Fide和变形的面部图像的数据集上证明了这种方法的局限性和潜力。

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