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To Detect or not to Detect: The Right Faces to Morph

机译:侦测或不侦测:变形的正确面孔

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Recent works have studied the face morphing attack detection performance generalization over variations in morphing approaches, image re-digitization, and image source variations. However, these works assumed a constant approach for selecting the images to be morphed (pairing) across their training and testing data. A realistic variation in the pairing protocol in the training data can result in challenges and opportunities for a stable attack detector. This work extensively study this issue by building a novel database with three different pairing protocols and two different morphing approaches. We study the detection generalization over these variations for single image and differential attack detection, along with handcrafted and CNN-based features. Our observations included that training an attack detection solution on attacks created from dissimilar face images, in contrary to the common practice, can result in an overall more generalized detection performance. Moreover, we found that differential attack detection is very sensitive to variations in morphing and pairing protocols.
机译:最近的工作已经研究了在变形方法,图像重新数字化和图像源变化方面对面部变形攻击检测性能的概括。但是,这些工作假定采用恒定的方法来选择要在其训练和测试数据中变形(配对)的图像。训练数据中配对协议的实际变化可能会给稳定的攻击检测器带来挑战和机遇。这项工作通过使用三个不同的配对协议和两个不同的变形方法来构建一个新颖的数据库,从而对该问题进行了广泛的研究。我们研究了针对单张图像和差分攻击检测以及这些手工生成的和基于CNN的功能的这些变化的检测泛化。我们的观察结果包括,与通常的做法相反,训练针对不同面部图像产生的攻击的攻击检测解决方案可以使检测性能总体上更加通用。此外,我们发现差异攻击检测对形态和配对协议的变化非常敏感。

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