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Improving Blind Steganalysis in Spatial Domain Using a Criterion to Choose the Appropriate Steganalyzer Between CNN and SRM+EC

机译:使用标准改善空间域中的盲疱疹分析,以在CNN和SRM + EC之间选择合适的STEGANalyzer

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Conventional state-of-the-art image steganalysis approaches usually consist of a classifier trained with features provided by rich image models. As both features extraction and classification steps are perfectly embodied in the deep learning architecture called Convolutional Neural Network (CNN), different studies have tried to design a CNN-based steganalyzer. This work proposes a criterion to choose either the CNN designed by Xu et al. or the combination Spatial Rich Models (SRM) and Ensemble Classifier (EC) for an input image. Our approach is studied with three steganographic spatial domain algorithms: S-UNIWARD, MiPOD, and HILL, and exhibits detection capabilities better than each method alone. As SRM+EC and the CNN are only trained with MiPOD the proposed method can be seen as an approach for blind steganalysis.
机译:传统的最先进的图像隐分方法通常由具有丰富图像模型提供的功能培训的分类器组成。随着特征的提取和分类步骤完全体现在被称为卷积神经网络(CNN)的深度学习架构中,不同的研究试图设计基于CNN的塞比林。这项工作提出了一种选择由Xu等人设计的CNN。或者用于输入图像的组合空间丰富的模型(SRM)和集合分类器(EC)。我们的方法采用了三个隐星式空间域算法研究:S-Uniware,MIPOD和Hill,并比单独的方法更好地表现出检测能力。由于SRM + EC和CNN仅采用MIPOD培训,所提出的方法可以被视为盲人瘫痪的方法。

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