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On the probability density function and characteristic function moments of image steganalysis in the log prediction error wavelet subband

机译:对数预测误差小波子带中图像隐写的概率密度函数和特征函数矩

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摘要

Extracting informative statistic features is the most essential technical issue of steganalysis. Among various steganalysis methods, probability density function (PDF) and characteristic function (CF) moments are two important types of features due to the excellent ability for distinguishing the cover images from the stego ones. The two types of features are quite similar in definition. The only difference is that the PDF moments are computed in the spatial domain, while the CF moments are computed in the Fourier-transformed domain. Then, the comparison between PDF and CF moments is an interesting question of steganalysis. Several theoretical results have been derived, and CF moments are proved better than PDF moments in some cases. However, in the log prediction error wavelet subband of wavelet decomposition, some experiments show that the result is opposite and lacks a rigorous explanation. To solve this problem, a comparison result based on the rigorous proof is presented: the first-order PDF moment is proved better than the CF moment, while the second-order CF moment is better than the PDF moment. It tries to open the theoretical discussion on steganalysis and the question of finding suitable statistical features. (C) 2017 SPIE and IS&T
机译:提取信息统计特征是隐写分析最重要的技术问题。在各种隐写分析方法中,由于具有区分掩盖图像和隐匿图像的出色能力,概率密度函数(PDF)和特征函数(CF)矩是两种重要的特征类型。两种功能在定义上非常相似。唯一的区别是PDF矩是在空间域中计算的,而CF矩是在傅立叶变换域中计算的。因此,PDF和CF矩之间的比较是一个隐写分析的有趣问题。已经得出了一些理论结果,并且在某些情况下,CF矩比PDF矩更好。但是,在小波分解的对数预测误差小波子带中,一些实验表明,结果相反,缺乏严格的解释。为了解决这个问题,提出了一种基于严格证明的比较结果:一阶PDF矩被证明优于CF矩,而二阶CF矩则优于PDF矩。它试图打开有关隐写分析的理论讨论以及寻找合适的统计特征的问题。 (C)2017 SPIE和IS&T

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