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Effects and solutions of Cover-Source Mismatch in image steganalysis

机译:封面源失配的影响与解

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摘要

The Cover-Source Mismatch (CSM) has been long recognized as a major problem in modern steganography and steganalysis. Indeed, while a vast majority of works in steganography and steganalysis had been tailored to a specific reference database, namely BOSSbase, recent works show that, because of CSM, the results may greatly differ when changing this dataset. Although the CSM has already been the subject of several publications, these prior works investigated only a few elements in a limited setup. The goal of the current paper is to study the effects of the CSM in a more comprehensive manner and then to examine and compare different strategies for mitigating it. It first defines two different parameters, the source difficulty and the source inconsistency, which are involved in the CSM. Then, using different steganographic schemes and feature sets, it aims at providing a systematic study regarding the various factors that can give birth to CSM for image steganalysis. Finally, two practical ways to mitigate the CSM, using training techniques promoting either diversity of different sources or the specificity of one targeted source which is beforehand identified by training a multi-class classifier, are presented and their performances are compared for different training set sizes.
机译:封面来源不匹配(CSM)已长期被认为是现代隐写术和塞加帕分析的主要问题。实际上,虽然隐藏术和隐草的绝大多数作品已经针对特定的参考数据库量身定制,但是Bossbase,最近的作品表明,由于CSM,结果在改变此数据集时可能会大大不同。虽然CSM已经是几个出版物的主题,但这些事先作品仅在有限的设置中调查了几个元素。目前纸张的目标是以更全面的方式研究CSM的影响,然后审查和比较不同的策略来缓解它。它首先定义了两个不同的参数,源难度和源不一致,涉及CSM。然后,使用不同的书签计划和特征集,它旨在提供有关可以为图像隐星分析生育CSM的各种因素的系统研究。最后,提出了通过培训通过训练多级分类器识别的不同来源的多样性的训练技术来减轻CSM的两种实际方法,并通过训练多级分类器识别,并将其性能与不同的训练设定大小进行比较。

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