Nonlinear Feature Normalization in Steganalysis

M. Boroumand, J. Fridrich
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引用次数: 8

Abstract

In this paper, we propose a method for normalization of rich feature sets to improve detection accuracy of simple classifiers in steganalysis. It consists of two steps: 1) replacing random subsets of empirical joint probability mass functions (co-occurrences) by their conditional probabilities and 2) applying a non-linear normalization to each element of the feature vector by forcing its marginal distribution over covers to be uniform. We call the first step random conditioning and the second step feature uniformization. When applied to maxSRMd2 features in combination with simple classifiers, we observe a gain in detection accuracy across all tested stego algorithms and payloads. For better insight, we investigate the gain for two image formats. The proposed normalization has a very low computational complexity and does not require any feedback from the stego class.
隐写分析中的非线性特征归一化
本文提出了一种丰富特征集的归一化方法,以提高隐写分析中简单分类器的检测精度。它包括两个步骤:1)用它们的条件概率替换经验联合概率质量函数(共现)的随机子集;2)通过强迫特征向量在覆盖上的边际分布均匀,对特征向量的每个元素应用非线性归一化。我们称第一步为随机条件反射,第二步为特征均匀化。当将maxSRMd2特征与简单分类器结合使用时,我们观察到所有测试的隐进算法和有效负载的检测精度都有所提高。为了更好地了解,我们研究了两种图像格式的增益。所提出的归一化具有非常低的计算复杂度,并且不需要来自stego类的任何反馈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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