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Unsupervised Optimization for Universal Spatial Image Steganalysis

机译:普遍空间图像隐星分析的无监督优化

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摘要

Blind universal steganalysis has been the choice of Steganalysers owing to it’s capability to detect stego images without any prior information about the embedding method. Universal steganalysis is a two class optimization problem and the detecting efficiency depends on the feature set chosen from the stego and clean images. Though extracting all possible features of an image may lead to more efficiency the classification suffers due to large dimension of feature set. To overcome the problem of dimensionality appropriate feature reduction techniques need to be employed. This paper presents a blind universal image steganalysis technique that extracts the noise models of adjacent pixels of an image. The exact model construction involves the formation of four dimensional co-occurrence matrices of the quantised and truncated noise residues. From the 106 sub models 34,671 features have been extracted and further reduced by a novel unsupervised optimization technique to identify the most appropriate features for classification. The classifiers implemented include Support Vector Machines (SVM), Multi Layer Perceptron (MLP) and three fusion classifiers based on Bayes, Decision Template and Dempster Schafer fusion schemes. It has been identified that MLP performs better than SVM but is not superior to fusion classifiers. Comparing all the classifiers, Decision Template based fusion method gives the best classification accuracy (99.25%). Thus the proposed unsupervised optimization method combined with Decision Template fusion classification scheme provides the best classification of stego and clear images as compared to the existing research work.
机译:由于它的能力检测了没有关于嵌入方法的任何先前信息,因此盲目的普遍死来的分析是由于它的能力检测了STEGO图像的能力。普遍的隐析是两个类优化问题,检测效率取决于从STEGO和清洁图像中选择的特征集。虽然提取图像的所有可能特征可能导致更多效率,但由于特征集的大维度,分类遭受。为了克服,需要使用适当的特征减少技术的问题。本文呈现了盲通用图像隐分技术,提取图像的相邻像素的噪声模型。确切的模型结构涉及形成量化和截断噪声残留的四维共生矩阵。从106模型,通过一种新的无监督优化技术提取并进一步减少了34,671个功能,以确定分类的最合适的特征。实现的分类器包括基于贝叶斯,决策模板和Dempster Schafer融合方案的支持向量机(SVM),多层Perceptron(MLP)和三个融合分类器。已经确定MLP比SVM更好,但不优于融合分类器。比较所有分类器,决策模板的融合方法提供了最佳分类准确性(99.25%)。因此,与决策模板融合分类方案结合的提议的无监督优化方法提供了与现有的研究工作相比的STEGO和清晰图像的最佳分类。

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