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Image Protection for Robust Cropping Localization and Recovery

2022-06-06Unverified0· sign in to hype

Qichao Ying, Hang Zhou, Xiaoxiao Hu, Zhenxing Qian, Sheng Li, Xinpeng Zhang

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Abstract

Existing image cropping detection schemes ignore that recovering the cropped-out contents can unveil the purpose of the behaved cropping attack. This paper presents CLR-Net, a novel image protection scheme addressing the combined challenge of image Cropping Localization and Recovery. We first protect the original image by introducing imperceptible perturbations. Then, typical image post-processing attacks are simulated to erode the protected image. On the recipient's side, we predict the cropping mask and recover the original image. Besides, we propose a novel Fine-Grained generative JPEG simulator (FG-JPEG) as well as a feature alignment network to improve the real-world robustness. Comprehensive experiments prove that the quality of the recovered image and the accuracy of crop localization are both satisfactory.

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