A new adaptive watermarking attack in wavelet domain

A. Taherinia, M. Jamzad
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引用次数: 5

Abstract

In this paper, we proposed a categorization for most of the existing watermarking algorithms that work in wavelet domain. Then an adaptive watermarking attack for digital images that is based on the proposed categorization is presented. This attack determines the flat regions, edges and textures of the watermarked image and based on known features of each region the proposed attack tries to destroy the watermark information by manipulating the wavelet coefficients of each region separately such that the least visual distortion will be imposed on the attacked image. We have tested the proposed method to attack two recent and robust watermarking methods and the results sound impressive. The average PSNR of the watermarked image after applying the proposed attack is more than 31dB and the average NC for extracted watermark is lowers than 0.4, so the watermark is not detectable. The proposed method does not consider any knowledge about the underlying watermarking algorithm.
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一种新的小波域自适应水印攻击方法
本文对大多数在小波域中工作的现有水印算法进行了分类。在此基础上提出了一种针对数字图像的自适应水印攻击方法。该攻击确定了水印图像的平面区域、边缘和纹理,并根据每个区域的已知特征,分别对每个区域的小波系数进行处理,以使被攻击图像的视觉失真最小,从而破坏水印信息。我们对所提出的方法进行了测试,以攻击两种最新的鲁棒水印方法,结果令人印象深刻。应用该攻击后水印图像的平均PSNR大于31dB,提取的水印的平均NC小于0.4,因此水印不可检测。该方法不考虑对底层水印算法的任何了解。
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