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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Image Steganography With Symmetric Embedding Using Gaussian Markov Random Field Model
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Image Steganography With Symmetric Embedding Using Gaussian Markov Random Field Model

机译:使用Gaussian Markov随机现场模型的对称嵌入的图像隐写术

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摘要

Recent advances on adaptive steganography show that the performance of image steganographic communication can be improved by incorporating the non-additive models that capture the dependencies among adjacent pixels. In this paper, a Gaussian Markov Random Field model (GMRF) with four-element cross neighborhood is proposed to characterize the interactions among local elements of cover images, and the problem of secure image steganography is formulated as the one of minimization of KL-divergence in terms of a series of low-dimensional clique structures associated with GMRF by taking advantages of the conditional independence of GMRF. The adoption of the proposed GMRF tessellates the cover image into two disjoint subimages, and an alternating iterative optimization scheme is developed to effectively embed the given payload while minimizing the total KL-divergence between cover and stego, i.e., the statistical detectability. Experimental results demonstrate that the proposed GMRF outperforms the prior arts of model based schemes, e.g., MiPOD, and rivals the state-of-the-art HiLL for practical steganography, where the selection channel knowledges are unavailable to steganalyzers.
机译:自适应隐写术的最新进展表明,通过结合捕获相邻像素之间的依赖性的非加性模型,可以改善图像隐写通信的性能。在本文中,提出了一种具有四元横邻域的高斯马尔可夫随机场模型(GMRF),以表征覆盖图像的局部元素之间的相互作用,并且将安全图像隐写的问题配制为最小化KL分歧的问题根据GMRF的条件独立性的优势,就一系列与GMRF相关的低维集合结构。将拟议的GMRF与盖子图像镶嵌成两个不相交的子像序,并且开发了交替的迭代优化方案,以有效地嵌入给定的有效载荷,同时最小化盖子和stego之间的总KL分歧,即统计可检测性。实验结果表明,所提出的GMRF优于基于模型的方案的现有技术,例如MIPOD,并使艺术状态的山丘用于实用的隐写,其中选择频道知识不可用来落地。

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