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Combining Identity Features and Artifact Analysis for Differential Morphing Attack Detection

Abstract: Due to the importance of the Morphing Attack, the development of new and accurate Morphing Attack Detection (MAD) systems is urgently needed by private and public institutions. In this context, D-MAD methods, i.e. detectors fed with a trusted live image and a probe tend to show better performance with respect to S-MAD approaches, that are based on a single input image. However, D-MAD methods usually leverage the identity of the two input face images only, and then present two main drawbacks: they lose performance when the two subjects look alike, and they do not consider potential artifacts left by the morphing procedure (which are instead typically exploited by S-MAD approaches). Therefore, in this paper, we investigate the combined use of D-MAD and S-MAD to improve detection performance through the fusion of the features produced by these two MAD approaches.


Citation:

Di Domenico, Nicolò; Borghi, Guido; Franco, Annalisa; Maltoni, Davide "Combining Identity Features and Artifact Analysis for Differential Morphing Attack Detection" Image Analysis and Processing – ICIAP 2023, vol. 14233, Udine, Italy, pp. 100 -111 , September 11-15, 2023, 2023 DOI: 10.1007/978-3-031-43148-7_9

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