AI-based compression: A new unintended counter attack on Jpeg-related image forensic detectors?

Berthet, Alexandre; Dugelay, Jean-Luc
ICIP 2022, IEEE International Conference on Image Processing, 16-19 October 2022, Bordeaux, France

The detection of forged images is an important topic in digital image forensics. There are two main types of forgery: copy-move and splicing. These forgeries are created with image editors that apply JPEG compression by default, when saving the forged images. As a result, the authentic and falsified areas have different compression statistics, including histograms of DCT coefficients that show inconsistencies in the
case of double JPEG compression. Therefore, the detection of double JPEG compression (DJPEG-C) is an important topic for JPEG-related image forensic detectors. Since the emergence of deep learning in image processing, AI-based compression methods have been proposed. This paper is the first to consider AI-based compression with digital image analysis tools. The objective is to understand whether AI-based compression can be a new unintended counter-attack for JPEGrelated
image forensic detectors. To verify our hypothesis, we selected the best detector to date, an AI-based compression method and the Casia v2 database that contains both splicing
and copy-move (all publicly available). We focused our experiment on benign post-processing operations: AI-based and JPEG recompressions (with different quality levels). The evaluation is performed using different metrics (average precision, F1 score and accuracy, PSNR, SSIM) to take into account both the impact on detection and image quality. At similar image quality, AI-based recompression achieves a decrease
in performance at least twice higher than JPEG, while preserving high visual image quality. Thus, AI-based compression is a new unintended counter-attack, which can no
longer be ignored in future studies on image forensic detectors. 

DOI
Type:
Conférence
City:
Bordeaux
Date:
2022-10-16
Department:
Sécurité numérique
Eurecom Ref:
7005
Copyright:
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