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Unsupervised universal steganalyzer for high-dimensional steganalytic features

机译:用于高维隐写特征的无监督通用隐写分析器

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摘要

The research in developing steganalytic features has been highly successful. These features are extremely powerful when applied to supervised binary classification problems. However, they are incompatible with unsupervised universal steganalysis because the unsupervised method cannot distinguish embedding distortion from varying levels of noises caused by cover variation. This study attempts to alleviate the problem by introducing similarity retrieval of image statistical properties (SRISP), with the specific aim of mitigating the effect of cover variation on the existing steganalytic features. First, cover images with some statistical properties similar to those of a given test image are searched from a retrieval cover database to establish an aided sample set. Then, unsupervised outlier detection is performed on a test set composed of the given test image and its aided sample set to determine the type (cover or stego) of the given test image. Our proposed framework, called SRISP-aided unsupervised outlier detection, requires no training. Thus, it does not suffer from model mismatch mess. Compared with prior unsupervised outlier detectors that do not consider SRISP, the proposed framework not only retains the universality but also exhibits superior performance when applied to high-dimensional steganalytic features. (C) 2016 SPIE and IS&T
机译:开发隐写分析功能的研究非常成功。当将这些功能应用于有监督的二进制分类问题时,这些功能非常强大。但是,它们与无监督的通用隐写分析不兼容,因为无监督的方法无法将嵌入失真与由封面变化引起的噪声水平的变化区分开。这项研究试图通过引入图像统计属性(SRISP)的相似性检索来缓解此问题,其特定目的是减轻封面变化对现有隐写分析功能的影响。首先,从检索封面数据库中搜索具有与给定测试图像相似的统计属性的封面图像,以建立辅助样本集。然后,对由给定测试图像及其辅助样本集组成的测试集执行无监督的离群值检测,以确定给定测试图像的类型(覆盖或隐秘)。我们提出的框架称为SRISP辅助无监督离群值检测,不需要任何培训。因此,它不会遭受模型失配混乱的困扰。与不考虑SRISP的现有非监督离群值检测器相比,所提出的框架不仅保留了通用性,而且在应用于高维隐写分析特征时表现出卓越的性能。 (C)2016 SPIE和IS&T

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