CRAISep 18, 2023

Securing Fixed Neural Network Steganography

arXiv:2309.09700v117 citationsh-index: 62
Originality Incremental advance
AI Analysis

This work addresses a security problem in steganography for applications requiring confidential data hiding, though it is incremental as it builds on existing FNNS methods.

The paper tackles the vulnerability of fixed neural network steganography (FNNS) to unauthorized secret extraction by proposing a key-based scheme with adaptive perturbation optimization, resulting in improved security and higher visual quality in stego-images compared to state-of-the-art FNNS.

Image steganography is the art of concealing secret information in images in a way that is imperceptible to unauthorized parties. Recent advances show that is possible to use a fixed neural network (FNN) for secret embedding and extraction. Such fixed neural network steganography (FNNS) achieves high steganographic performance without training the networks, which could be more useful in real-world applications. However, the existing FNNS schemes are vulnerable in the sense that anyone can extract the secret from the stego-image. To deal with this issue, we propose a key-based FNNS scheme to improve the security of the FNNS, where we generate key-controlled perturbations from the FNN for data embedding. As such, only the receiver who possesses the key is able to correctly extract the secret from the stego-image using the FNN. In order to improve the visual quality and undetectability of the stego-image, we further propose an adaptive perturbation optimization strategy by taking the perturbation cost into account. Experimental results show that our proposed scheme is capable of preventing unauthorized secret extraction from the stego-images. Furthermore, our scheme is able to generate stego-images with higher visual quality than the state-of-the-art FNNS scheme, especially when the FNN is a neural network for ordinary learning tasks.

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