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用于稳健数字图像水印的最优特征区域集选择。

On the selection of optimal feature region set for robust digital image watermarking.

机构信息

Center for Researches of E-life DIgital Technologies, Department of Computer Science and Information Engineering, National Cheng Kung University, Tainan 701, Taiwan.

出版信息

IEEE Trans Image Process. 2011 Mar;20(3):735-43. doi: 10.1109/TIP.2010.2073475. Epub 2010 Sep 7.

Abstract

A novel feature region selection method for robust digital image watermarking is proposed in this paper. This method aims to select a nonoverlapping feature region set, which has the greatest robustness against various attacks and can preserve image quality as much as possible after watermarked. It first performs a simulated attacking procedure using some predefined attacks to evaluate the robustness of every candidate feature region. According to the evaluation results, it then adopts a track-with-pruning procedure to search a minimal primary feature set which can resist the most predefined attacks. In order to enhance its resistance to undefined attacks under the constraint of preserving image quality, the primary feature set is then extended by adding into some auxiliary feature regions. This work is formulated as a multidimensional knapsack problem and solved by a genetic algorithm based approach. The experimental results for StirMark attacks on some benchmark images support our expectation that the primary feature set can resist all the predefined attacks and its extension can enhance the robustness against undefined attacks. Comparing with some well-known feature-based methods, the proposed method exhibits better performance in robust digital watermarking.

摘要

本文提出了一种用于稳健数字图像水印的新特征区域选择方法。该方法旨在选择一个非重叠的特征区域集,该区域集在各种攻击下具有最大的稳健性,并在水印后尽可能地保持图像质量。它首先使用一些预定义的攻击进行模拟攻击过程,以评估每个候选特征区域的稳健性。根据评估结果,然后采用跟踪修剪过程来搜索一个最小的基本特征集,该特征集可以抵抗大多数预定义的攻击。为了在保持图像质量的约束下增强其对未定义攻击的抵抗力,基本特征集通过添加一些辅助特征区域来扩展。这项工作被表述为一个多维背包问题,并通过基于遗传算法的方法来解决。在一些基准图像上对 StirMark 攻击的实验结果支持了我们的预期,即基本特征集可以抵抗所有预定义的攻击,其扩展可以增强对未定义攻击的鲁棒性。与一些知名的基于特征的方法相比,所提出的方法在稳健的数字水印中表现出更好的性能。

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