Low volume generic steganalysis with improved generalization

S. Arivazhagan, W. Jebarani, S. Veena
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引用次数: 1

Abstract

Practical Steganalysis needs to be carried blind as the Steganalyzer won't have access to any other data except for the suspicion of a covert channel. The process needs to be carried out universal with a bunch of statistical features as the Steganalyzer needs to identify stego images created with even new steganographic tools. This poses a need for the generalization of the Steganalyzer to be enhanced. The proposed approach improves the generalization of the developed Steganalyzer by training it with a group of statistical features carefully coined to characterize embedding distortions that can disturb different features of an image. The designed Steganalyzer uses mixed blind generic classification for identifying unfamiliar tools i.e., not introduced during training phase.
改进泛化的低体积通用隐写分析
实际的隐写分析需要盲目进行,因为隐写分析器将无法访问任何其他数据,除了怀疑隐蔽通道。这个过程需要用一堆统计特征来进行,因为隐写分析器需要识别用新的隐写工具创建的隐写图像。这就需要加强隐写分析仪的通用性。提出的方法通过使用一组精心设计的统计特征来训练已开发的Steganalyzer,以表征可能干扰图像不同特征的嵌入失真,从而提高了其泛化性。设计的隐写分析器使用混合盲通用分类来识别不熟悉的工具,即在训练阶段未引入的工具。
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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