Implicit neural representation steganography by neuron pruning

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Weina Dong, Jia Liu, Lifeng Chen, Wenquan Sun, Xiaozhong Pan, Yan Ke
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Abstract

Recently, implicit neural representation (INR) has started to be applied in image steganography. However, the quality of stego and secret images represented by INR is generally low. In this paper, we propose an implicit neural representation steganography method by neuron pruning. Initially, we randomly deactivate a portion of neurons to train an INR function for implicitly representing the secret image. Subsequently, we prune the neurons that are deemed unimportant for representing the secret image in a unstructured manner to obtain a secret function, while marking the positions of neurons as the key. Finally, based on a partial optimization strategy, we reactivate the pruned neurons to construct a stego function for representing the cover image. The recipient only needs the shared key to recover the secret function from the stego function in order to reconstruct the secret image. Experimental results demonstrate that this method not only allows for lossless recovery of the secret image, but also performs well in terms of capacity, fidelity, and undetectability. The experiments conducted on images of different resolutions validate that our proposed method exhibits significant advantages in image quality over existing implicit representation steganography methods.

Abstract Image

通过神经元修剪实现隐式神经表征隐写术
最近,隐式神经表示(INR)开始应用于图像隐写术。然而,用 INR 表示的偷窃图像和秘密图像的质量普遍较低。本文提出了一种通过神经元剪枝的隐式神经表示隐写方法。首先,我们随机停用一部分神经元来训练隐式表示秘密图像的 INR 函数。随后,我们以非结构化的方式修剪被认为对表示秘密图像不重要的神经元,以获得秘密函数,同时将神经元的位置标记为关键。最后,基于局部优化策略,我们重新激活被剪切的神经元,从而构建一个用于表示封面图像的偷窃函数。接收者只需要共享密钥就能从隐去函数中恢复秘密函数,从而重建秘密图像。实验结果表明,这种方法不仅可以无损地恢复秘密图像,而且在容量、保真度和不可检测性方面表现出色。在不同分辨率的图像上进行的实验证明,与现有的隐式表示隐写术方法相比,我们提出的方法在图像质量上具有显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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