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Steganographic applications of the nearest-neighbor approach to Kullback-Leibler divergence estimation

机译:最近邻近克鲁克 - 雷布勒分歧估计的隐法识别应用

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We propose to use a method for divergence estimation between multi-dimensional distributions based on nearest neighbor distance (NND) for optimization of stegosystems (SG) and steganalysis. This approach has previously been effectively applied for the purposes of estimation and classification (particularly in the field of genetics). However, since divergence (precisely speaking, Kullback-Leibler divergence) is very popular in steganography, the NND approach can be used in order to estimate the security (undetectability) of stegosystems, given the known cover object corresponding to the tested SG. We will show how affects on the estimated divergence methods of image embedding and their parameters. This allows optimization of SG in relation to it's security for the given cover images. Stegosystem detection based on the NND approach is also considered.
机译:我们建议使用基于最近邻距离(NND)的多维分布之间的发散估计方法,以优化标记系统(SG)和麻木分析。此方法先前已被有效地应用于估计和分类的目的(特别是在遗传学领域)。然而,由于在隐写术中的发散(kullback-Leibler发散者的kullback-Leibler发散者)中,可以使用NND方法来估计鉴于与测试的SG对应的已知覆盖物体的安全性(未检测性)。我们将展示如何影响图像嵌入的估计发散方法及其参数。这允许在给定封面图像的安全性上优化SG。还考虑了基于NND方法的标记系统检测。

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