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Classification of Synthetic Facial Attributes by Means of Hybrid Classification/Localization Patch-based Analysis

Jun Wang (University of Siena); Benedetta Tondi (University of Siena); Mauro Barni (University of Siena)

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08 Jun 2023

Facial attributes editing, that is the manipulation of some specific attributes of a face image, is a new trend in the generation of synthetic images by GANs. Several recent studies have shown the possibility to detect the synthetic nature of such images by training a DL-based binary classifier. At the same time, the question about the specific face attributes that have been altered is typically disregarded, yet this may be a crucial information for forensic analysts. In this paper, we propose a new architecture whose objective is to identify the altered facial attributes of synthetic face images. To do so, we developed a hybrid classification-and-localization architecture. The local and global features are first extracted from the full image and from specific image patches, and then merged by using an attentional feature fusion module. The extensive experiments we have carried out involving 19 different facial attributes, manipulated by a StyleGAN2 network, show the good accuracy of the proposed method and its robustness against several image post-processing operators.