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Selection of Robust Features for the Cover Source Mismatch Problem in 3D Steganalysis

机译:3D隐分求源不匹配问题的鲁棒特征的选择

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This paper introduces a novel method for extracting sets of feature from 3D objects characterising a robust steganalyzer. Specifically, the proposed steganalyzer should mitigate the Cover Source Mismatch (CSM) paradigm. A steganalyzer is considered as a classifier aiming to identify separately cover and stego objects. A steganalyzer behaves as a classifier by considering a set of features extracted from cover stego pairs of 3D objects as inputs during the training stage. However, during the testing stage, the steganalyzer would have to identify whether specific information was hidden in a set of 3D objects which can be different from those used during the training. Addressing the CSM paradigm corresponds to testing the generalization ability of the steganalyzer when introducing distortions in the cover objects before hiding information through steganography. Our method aims to select those 3D features that model best the changes introduced in objects by steganography or information hiding and moreover they are able to generalize for different objects, not present in the training set. The proposed robust steganalysis approach is tested when considering changes in 3D objects such as those produced by mesh simplification and additive noise. The results obtained from this study show that the steganalyzers trained with the selected set of robust features achieve better detection accuracy of the changes embedded in the objects, when compared to other sets of features.
机译:本文介绍了一种新的方法,用于从特征强大的3D对象中提取特征组的新方法。具体而言,所提出的STEGANALYZER应该减轻覆盖源不匹配(CSM)范式。 STEGANALYZER被认为是旨在识别单独覆盖和STEGO对象的分类器。通过考虑从覆盖Setego对3D对象中提取的一组特征,作为分类器的表现为分类器作为训练阶段期间的输入。然而,在测试阶段,STEGANALYZER必须识别特定信息是否隐藏在一组3D对象中,这可以与培训期间使用的一组3D对象。寻址CSM范例对应于测试Seganalyzer在通过隐写在隐藏信息之前在覆盖物体中引入扭曲时的泛化能力。我们的方法旨在选择模型通过隐草或信息隐藏所引入的对象中引入的变化的3D功能,而且它们能够概括为不同的对象,不存在于训练集中。在考虑3D对象的变化时,测试了所提出的稳健的沉淀方法,例如通过网格简化和添加剂噪声产生的3D对象。从本研究中获得的结果表明,与所选稳健特征训练的托莱斯克患者训练,与其他特征集相比,在对象中嵌入在物体中的变化的更好的检测准确性。

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