In this paper we present TruFor, a forensic framework that can be applied to a large variety of image manipulation methods, from classic cheapfakes to more recent manipulations based on deep learning. We rely on the extraction of both high-level and low-level traces through a transformer-based fusion architecture that combines the RGB image and a learned noise-sensitive fingerprint. The latter learns to embed the artifacts related to the camera internal and external processing by training only on real data in a self-supervised manner. Forgeries are detected as deviations from the expected regular pattern that characterizes each pristine image. Looking for anomalies makes the approach able to robustly detect a variety of local manipulations, ensuring generalization. In addition to a pixel-level localization map and a whole-image integrity score, our approach outputs a reliability map that highlights areas where localization predictions may be error-prone. This is particularly important in forensic applications in order to reduce false alarms and allow for a large scale analysis. Extensive experiments on several datasets show that our method is able to reliably detect and localize both cheapfakes and deepfakes manipulations outperforming state-of-the-art works. Code is publicly available at https://grip-unina.github.io/TruFor/

TruFor: Leveraging All-Round Clues for Trustworthy Image Forgery Detection and Localization / Guillaro, Fabrizio; Cozzolino, Davide; Sud, Avneesh; Dufour, Nicholas; Verdoliva, Luisa. - (2023). ( 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition) [10.1109/CVPR52729.2023.01974].

TruFor: Leveraging All-Round Clues for Trustworthy Image Forgery Detection and Localization

Fabrizio Guillaro;Davide Cozzolino;Luisa Verdoliva
2023

Abstract

In this paper we present TruFor, a forensic framework that can be applied to a large variety of image manipulation methods, from classic cheapfakes to more recent manipulations based on deep learning. We rely on the extraction of both high-level and low-level traces through a transformer-based fusion architecture that combines the RGB image and a learned noise-sensitive fingerprint. The latter learns to embed the artifacts related to the camera internal and external processing by training only on real data in a self-supervised manner. Forgeries are detected as deviations from the expected regular pattern that characterizes each pristine image. Looking for anomalies makes the approach able to robustly detect a variety of local manipulations, ensuring generalization. In addition to a pixel-level localization map and a whole-image integrity score, our approach outputs a reliability map that highlights areas where localization predictions may be error-prone. This is particularly important in forensic applications in order to reduce false alarms and allow for a large scale analysis. Extensive experiments on several datasets show that our method is able to reliably detect and localize both cheapfakes and deepfakes manipulations outperforming state-of-the-art works. Code is publicly available at https://grip-unina.github.io/TruFor/
2023
TruFor: Leveraging All-Round Clues for Trustworthy Image Forgery Detection and Localization / Guillaro, Fabrizio; Cozzolino, Davide; Sud, Avneesh; Dufour, Nicholas; Verdoliva, Luisa. - (2023). ( 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition) [10.1109/CVPR52729.2023.01974].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/972945
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