Subsampling-Based Wavelet Watermarking Algorithm Using Support Vector Regression

Gaoding Fu, Hong Peng
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引用次数: 6

Abstract

A subsampling-based wavelet watermarking algorithm by using support vector regression (SVR) in the wavelet domain is presented in this paper. Four coefficient sets are obtained via DWT for four subimages gained by subsampling an original image. Because of the neighborhood correlation of image pixels, the coefficient sets are approximately equal. Due to the good learning and generalization capability in the processing of small-sample learning problems, SVR is applied to model the relationship between the coefficient on the random selected coefficient set and the coefficients on the corresponding position of others. Then, the watermark is embedded into part of the low frequency coefficients or extracted by adjusting or comparing the relationship between the embedding coefficient and the output of the trained SVR. Experimental results show our technique has excellent performance against several common attacks.
基于支持向量回归的子采样小波水印算法
提出了一种基于小波域支持向量回归(SVR)的子采样小波水印算法。对原始图像进行子采样得到的四个子图像,通过DWT得到四个系数集。由于图像像素的邻域相关性,系数集近似相等。由于在处理小样本学习问题时具有良好的学习和泛化能力,因此采用SVR对随机选择的系数集上的系数与其他相应位置上的系数之间的关系进行建模。然后,将水印嵌入到部分低频系数中,或者通过调整或比较嵌入系数与训练后的支持向量回归器输出之间的关系来提取水印。实验结果表明,该技术对几种常见的攻击具有良好的性能。
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