Robust Message Embedding via Attention Flow-Based Steganography
Image steganography can hide information in a host image and obtain a stego image that is perceptually indistinguishable from the original one. This technique has tremendous potential in scenarios like copyright protection, information retrospection, etc. Some previous studies have proposed to enhan...
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Zusammenfassung: | Image steganography can hide information in a host image and obtain a stego
image that is perceptually indistinguishable from the original one. This
technique has tremendous potential in scenarios like copyright protection,
information retrospection, etc. Some previous studies have proposed to enhance
the robustness of the methods against image disturbances to increase their
applicability. However, they generally cannot achieve a satisfying balance
between the steganography quality and robustness. Instead of image-in-image
steganography, we focus on the issue of message-in-image embedding that is
robust to various real-world image distortions. This task aims to embed
information into a natural image and the decoding result is required to be
completely accurate, which increases the difficulty of data concealing and
revealing. Inspired by the recent developments in transformer-based vision
models, we discover that the tokenized representation of image is naturally
suitable for steganography task. In this paper, we propose a novel message
embedding framework, called Robust Message Steganography (RMSteg), which is
competent to hide message via QR Code in a host image based on an normalizing
flow-based model. The stego image derived by our method has imperceptible
changes and the encoded message can be accurately restored even if the image is
printed out and photoed. To our best knowledge, this is the first work that
integrates the advantages of transformer models into normalizing flow. Our
experiment result shows that RMSteg has great potential in robust and
high-quality message embedding. |
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DOI: | 10.48550/arxiv.2405.16414 |