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首页> 外文期刊>Journal of visual communication & image representation >Digital watermark extraction using support vector machine with principal component analysis based feature reduction
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Digital watermark extraction using support vector machine with principal component analysis based feature reduction

机译:使用基于主成分分析的特征向量的支持向量机提取数字水印

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This paper proposes a new approach for watermark extraction using support vector machine (SVM) with principal component analysis (PCA) based feature reduction. In this method, the original cover image is decomposed up to three level using lifting wavelet transform (LWT), and lowpass subband is selected for data hiding purpose. The lowpass subband is divided into small blocks, and a binary watermark is embedded into the original cover image by quantizing the two maximum coefficients of the block. In order to extract watermark bits with maximum correlation, SVM based binary classification approach is incorporated. The training and testing patterns are constructed by employing a reduced set of features along with block coefficients. Firstly, different features are obtained by evaluating the statistical parameters of each block coefficients, and then PCA is utilized to reduce this feature set. As far as security is concerned, randomization of coefficients, blocks, and watermark bits enhances the security of system. Furthermore, energy compaction property of LWT increases the robustness in comparison to conventional wavelet transform. A comparison of the proposed method with some of the recent techniques shows remarkable improvement in terms of robustness and security of the watermark. (C) 2015 Elsevier Inc. All rights reserved.
机译:本文提出了一种基于支持向量机(SVM)和基于主成分分析(PCA)的特征约简的水印提取新方法。在这种方法中,使用提升小波变换(LWT)将原始封面图像分解为三个级别,并选择低通子带进行数据隐藏。将低通子带划分为小块,并通过量化该块的两个最大系数,将二进制水印嵌入到原始封面图像中。为了提取具有最大相关性的水印位,引入了基于SVM的二进制分类方法。训练和测试模式是通过使用一组减少的特征以及块系数来构造的。首先,通过评估每个块系数的统计参数获得不同的特征,然后利用PCA来减少该特征集。就安全性而言,系数,块和水印位的随机化可增强系统的安全性。此外,与传统的小波变换相比,LWT的能量压缩特性提高了鲁棒性。所提出的方法与一些最新技术的比较显示出在水印的鲁棒性和安全性方面的显着改进。 (C)2015 Elsevier Inc.保留所有权利。

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