首页> 外文会议>Advances in Neural Networks - ISNN 2007 pt.3; Lecture Notes in Computer Science; 4493 >Universal Steganalysis Using Multiwavelet Higher-Order Statistics and Support Vector Machines
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Universal Steganalysis Using Multiwavelet Higher-Order Statistics and Support Vector Machines

机译:使用多小波高阶统计和支持向量机的通用隐写分析

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In this paper, a new universal steganalysis algorithm based on multiwavelet higher-order statistics and Support Vector Machines(SVM) is proposed. We follow the philosophy introduced in Ref[7] in which the features are calculated from the stego image's noise component in the wavelet domain. Instead of working in wavelet domain, we calculate the features in multiwavelet domain. We call this Multiwavelet Higher-Order Statistics (MHOS) feature. A nonlinear SVM classifier is then trained on a database of images to construct a universal steganalyzer. The comparison to the current state-of-the-art universal steganalyzers, which was performed on the same image databases under the same testing conditions, indicates that the proposed universal steganalysis offers improved performance.
机译:提出了一种基于多小波高阶统计和支持向量机(SVM)的通用隐写分析算法。我们遵循Ref [7]中引入的原理,其中的特征是根据小波域中隐身图像的噪声分量来计算的。代替在小波域中工作,我们在多小波域中计算特征。我们称此为多小波高阶统计(MHOS)功能。然后在图像数据库上训练非线性SVM分类器,以构造通用隐写分析器。与当前最先进的通用隐写分析仪的比较,是在相同的测试条件下在相同的图像数据库上执行的,表明所提出的通用隐写分析提供了改进的性能。

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