Digital image steganography using universal distortion

Vojtech Holub, J. Fridrich
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引用次数: 292

Abstract

Currently, the most secure practical steganographic schemes for empirical cover sources embed their payload while minimizing a distortion function designed to capture statistical detectability. Since there exists a general framework for this embedding paradigm with established payload-distortion bounds as well as near-optimal practical coding schemes, building an embedding scheme has been essentially reduced to the distortion design. This is not an easy task as relating distortion to statistical detectability is a hard and open problem. In this article, we propose an innovative idea to measure the embedding distortion in one fixed domain independently of the domain where the embedding changes (and coding) are carried out. The proposed universal distortion is additive and evaluates the cost of changing an image element (e.g., pixel or DCT coefficient) from directional residuals obtained using a Daubechies wavelet filter bank. The intuition is to limit the embedding changes only to those parts of the cover that are difficult to model in multiple directions while avoiding smooth regions and clean edges. The utility of the universal distortion is demonstrated by constructing steganographic schemes in the spatial, JPEG, and side-informed JPEG domains, and comparing their security to current state-of-the-art methods using classifiers trained with rich media models.
使用通用失真的数字图像隐写
目前,最安全实用的隐写方案的经验覆盖源嵌入其有效载荷,同时最小化失真函数,旨在捕捉统计可检测性。由于该嵌入范式存在一个通用框架,具有确定的有效载荷-失真边界以及接近最优的实用编码方案,因此构建嵌入方案本质上已简化为失真设计。这不是一项容易的任务,因为将扭曲与统计可检测性联系起来是一个困难而开放的问题。在本文中,我们提出了一种创新的想法,即在一个固定的域中独立于进行嵌入更改(和编码)的域来测量嵌入失真。提出的通用失真是加性的,并评估从使用Daubechies小波滤波器组获得的方向残差中改变图像元素(例如,像素或DCT系数)的成本。直觉是将嵌入变化限制在那些难以在多个方向上建模的覆盖部分,同时避免光滑的区域和干净的边缘。通过在空间、JPEG和侧面通知JPEG域中构建隐写方案,并将其安全性与使用富媒体模型训练的分类器的当前最先进方法进行比较,证明了通用失真的实用性。
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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