Watermark detection algorithm using statistical decision theory

Seong-Geun Kwon, Suk-Hwan Lee, Kee-Koo Kwon, Ki-Ryong Kwon, Kuhn-Il Lee
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引用次数: 16

Abstract

Watermark detection plays a crucial role in multimedia copyright protection and has traditionally been tackled using correlation-based algorithms. However, correlation-based detection is not actually the best choice, as it does not utilize the distributional characteristics of the image being marked. Accordingly, an efficient watermark detection scheme for DWT coefficients is proposed as optimal for non-additive schemes. Based on the statistical decision theory, the proposed method is derived according to Bayes' decision theory, the Neyman-Pearson criterion, and the distribution of the DWT coefficients, thereby minimizing the missed detection probability subject to a given false alarm probability. The proposed method has been tested in the context of robustness, and the results confirm the superiority of the proposed technique over conventional correlation-based detection methods.
基于统计决策理论的水印检测算法
水印检测在多媒体版权保护中起着至关重要的作用,传统上使用基于相关性的算法来解决水印检测问题。然而,基于相关性的检测实际上并不是最好的选择,因为它没有利用被标记图像的分布特征。据此,提出了一种有效的小波变换系数水印检测方案,作为非加性方案的最优方案。在统计决策理论的基础上,根据贝叶斯决策理论、Neyman-Pearson准则和DWT系数的分布推导出该方法,从而在给定虚警概率的情况下使漏检概率最小化。该方法已在鲁棒性的背景下进行了测试,结果证实了所提出的技术优于传统的基于相关的检测方法。
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