Selection-channel-aware rich model for Steganalysis of digital images

Tomáš Denemark, V. Sedighi, Vojtech Holub, R. Cogranne, J. Fridrich
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引用次数: 293

Abstract

From the perspective of signal detection theory, it seems obvious that knowing the probabilities with which the individual cover elements are modified during message embedding (the so-called probabilistic selection channel) should improve steganalysis. It is, however, not clear how to incorporate this information into steganalysis features when the detector is built as a classifier. In this paper, we propose a variant of the popular spatial rich model (SRM) that makes use of the selection channel. We demonstrate on three state-of-the-art content-adaptive steganographic schemes that even an imprecise knowledge of the embedding probabilities can substantially increase the detection accuracy in comparison with feature sets that do not consider the selection channel. Overly adaptive embedding schemes seem to be more vulnerable than schemes that spread the embedding changes more evenly throughout the cover.
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数字图像隐写分析的选择通道感知丰富模型
从信号检测理论的角度来看,似乎很明显,知道在消息嵌入期间单个覆盖元素被修改的概率(所谓的概率选择通道)应该改善隐写分析。然而,当检测器作为分类器构建时,如何将这些信息合并到隐写分析特征中尚不清楚。在本文中,我们提出了一种利用选择通道的空间丰富模型(SRM)的变体。我们展示了三种最先进的内容自适应隐写方案,与不考虑选择通道的特征集相比,即使对嵌入概率有不精确的了解,也可以大大提高检测精度。过度自适应的嵌入方案似乎比在整个覆盖物中更均匀地分布嵌入变化的方案更脆弱。
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