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Learning JPEG Compression Artifacts for Image Manipulation Detection and Localization

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Detecting and localizing image manipulation are necessary to counter malicious use of image editing techniques. Accordingly, it is essential to distinguish between authentic and tampered regions by analyzing intrinsic statistics in an image. We focus on JPEG compression artifacts left during image acquisition and editing. We propose a convolutional neural network (CNN) that uses discrete cosine transform (DCT) coefficients, where compression artifacts remain, to localize image manipulation. Standard CNNs cannot learn the distribution of DCT coefficients because the convolution throws away the spatial coordinates, which are essential for DCT coefficients. We illustrate how to design and train a neural network that can learn the distribution of DCT coefficients. Furthermore, we introduce Compression Artifact Tracing Network (CAT-Net) that jointly uses image acquisition artifacts and compression artifacts. It significantly outperforms traditional and deep neural network-based methods in detecting and localizing tampered regions.

Myung-Joon Kwon, Seung-Hun Nam, In-Jae Yu, Heung-Kyu Lee, Changick Kim• 2021

Related benchmarks

TaskDatasetResultRank
Image Forgery DetectionColumbia
AUC0.977
25
Image Forgery DetectionCoverage
AUC0.68
25
Image Forgery DetectionDSO-1
AUC74.7
25
Image-level manipulation detectionCASIA v1+
AUC0.942
19
Image Manipulation LocalizationCocoGlide (test)
F1 Score43.4
18
Image Manipulation LocalizationCoverage--
16
Image Forgery DetectionCASIA v1+
AUC94.2
15
Image Forgery DetectionNIST16
AUC0.75
15
Image Forgery DetectionVIPP
AUC0.813
15
Image Forgery DetectionCocoGlide
AUC66.7
15
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