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PRIS: Practical robust invertible network for image steganography

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Image steganography is a technique of hiding secret information inside another image, so that the secret is not visible to human eyes and can be recovered when needed. Most of the existing image steganography methods have low hiding robustness when the container images affected by distortion. Such as Gaussian noise and lossy compression. This paper proposed PRIS to improve the robustness of image steganography, it based on invertible neural networks, and put two enhance modules before and after the extraction process with a 3-step training strategy. Moreover, rounding error is considered which is always ignored by existing methods, but actually it is unavoidable in practical. A gradient approximation function (GAF) is also proposed to overcome the undifferentiable issue of rounding distortion. Experimental results show that our PRIS outperforms the state-of-the-art robust image steganography method in both robustness and practicability. Codes are available at https://github.com/yanghangAI/PRIS, demonstration of our model in practical at http://yanghang.site/hide/.

Hang Yang, Yitian Xu, Xuhua Liu, Xiaodong Ma• 2023

Related benchmarks

TaskDatasetResultRank
Secret image extractionLSUN Bedroom 256x256
PSNR37.42
10
Secret image extractionCIFAR10 32x32
PSNR29.83
10
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