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基于稳定分布的轮廓波域乘性水印检测算法研究。

A study of multiplicative watermark detection in the contourlet domain using alpha-stable distributions.

出版信息

IEEE Trans Image Process. 2014 Oct;23(10):4348-60. doi: 10.1109/TIP.2014.2339633. Epub 2014 Jul 16.

Abstract

In the past decade, several schemes for digital image watermarking have been proposed to protect the copyright of an image document or to provide proof of ownership in some identifiable fashion. This paper proposes a novel multiplicative watermarking scheme in the contourlet domain. The effectiveness of a watermark detector depends highly on the modeling of the transform-domain coefficients. In view of this, we first investigate the modeling of the contourlet coefficients by the alpha-stable distributions. It is shown that the univariate alpha-stable distribution fits the empirical data more accurately than the formerly used distributions, such as the generalized Gaussian and Laplacian, do. We also show that the bivariate alpha-stable distribution can capture the across scale dependencies of the contourlet coefficients. Motivated by the modeling results, a blind watermark detector in the contourlet domain is designed by using the univariate and bivariate alpha-stable distributions. It is shown that the detectors based on both of these distributions provide higher detection rates than that based on the generalized Gaussian distribution does. However, a watermark detector designed based on the alpha-stable distribution with a value of its parameter α other than 1 or 2 is computationally expensive because of the lack of a closed-form expression for the distribution in this case. Therefore, a watermark detector is designed based on the bivariate Cauchy member of the alpha-stable family for which α = 1 . The resulting design yields a significantly reduced-complexity detector and provides a performance that is much superior to that of the GG detector and very close to that of the detector corresponding to the best-fit alpha-stable distribution. The robustness of the proposed bivariate Cauchy detector against various kinds of attacks, such as noise, filtering, and compression, is studied and shown to be superior to that of the generalized Gaussian detector.

摘要

在过去的十年中,已经提出了几种数字图像水印方案,以保护图像文档的版权或以某种可识别的方式提供所有权证明。本文提出了一种新的基于轮廓波的乘法水印方案。水印检测器的有效性高度依赖于变换域系数的建模。鉴于此,我们首先研究了通过稳定分布对轮廓波系数的建模。结果表明,单变量稳定分布比以前使用的分布(如广义高斯分布和拉普拉斯分布)更能准确地拟合经验数据。我们还表明,双变量稳定分布可以捕获轮廓波系数的跨尺度相关性。受建模结果的启发,我们设计了一种基于轮廓波域的盲水印检测器,该检测器使用单变量和双变量稳定分布。结果表明,基于这两种分布的检测器比基于广义高斯分布的检测器具有更高的检测率。然而,基于参数 α 不等于 1 或 2 的稳定分布设计的水印检测器由于在这种情况下分布没有封闭形式的表达式,因此计算成本很高。因此,我们基于稳定分布的双变量 Cauchy 成员设计了一个水印检测器,其中 α = 1 。所得到的设计产生了一个复杂度显著降低的检测器,并提供了比 GG 检测器优越得多的性能,并且非常接近最佳拟合稳定分布对应的检测器的性能。研究了所提出的双变量 Cauchy 检测器对各种攻击(如噪声、滤波和压缩)的鲁棒性,并表明其优于广义高斯检测器。

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