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Robust steganalysis based on training set construction and ensemble classifiers weighting

机译:基于训练集构建和集成分类器加权的稳健隐写分析

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The cover source mismatch problem in steganalysis is a serious problem which keeps current steganalysis from practical use. It is mainly because of the high intra-class variation of cover and stego samples in the feature space, since current ste-ganalytic features are inevitably affected much by the image content, size, quality and many other factors. Small training set often reflects only part of the real data distribution, hence the classifier (steganalyzer) may be undertrained and lack of robustness. In this paper, we propose a scheme to efficiently construct large representative training set for steganalysis. We also scheme out weighted ensemble classifiers which can be adaptive to testing data. Experimental results show that our method can improve the performance and robustness of ste-ganalysis under high intra-class variation.
机译:隐写分析中的掩盖源不匹配问题是一个严重的问题,使当前的隐写分析无法实用。这主要是由于特征空间中掩盖和隐身样本的类内差异很大,因为当前的隐身分析特征不可避免地受到图像内容,大小,质量和许多其他因素的影响。小型训练集通常仅反映真实数据分布的一部分,因此分类器(steganalyzer)可能训练不足且缺乏鲁棒性。在本文中,我们提出了一种可以有效构建大型代表性训练集进行隐写分析的方案。我们还设计了加权的集成分类器,可以适用于测试数据。实验结果表明,我们的方法可以提高类内变异较高时Ste-gana分析的性能和鲁棒性。

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