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首页> 外文期刊>Journal of visual communication & image representation >Unbalanced JPEG image steganalysis via multiview data match
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Unbalanced JPEG image steganalysis via multiview data match

机译:通过多视图数据匹配实现不平衡的JPEG图像隐写分析

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摘要

Image steganalysis must address the matter of learning from unbalanced training sets where the cover objects (normal images) always greatly outnumber the stego ones. But the research in unbalanced image steganalysis is seldom seen. This work just focuses on the problem of unbalance JPEG images steganalysis. In this paper, we propose a frame of feature dimension reduction based semi-supervised learning for high-dimensional unbalanced JPEG image steganalysis. Our method uses standard steganalysis features, and selects the confident stego images from the unlabeled examples by multiview match resampling method to rebalance the unbalanced training images. Furthermore, weighted Fisher linear discriminant (WFLD) is proposed to find the proper feature subspace where K-means provides the weight factor for WFLD in return. Finally, WFLD and K-means both work in an iterative fashion until convergence. Experimental results on the MBs and nsF5 steganographic methods show the usefulness of the developed scheme over current popular feature spaces. (C) 2015 Elsevier Inc. All rights reserved.
机译:图像隐写分析必须解决从不平衡训练集中学习的问题,在这些不平衡训练集中,掩盖对象(正常图像)总是大大超过隐身对象。但是很少有关于不平衡图像隐写分析的研究。这项工作只是针对不平衡JPEG图像隐写分析的问题。在本文中,我们提出了一种基于特征降维的半监督学习框架,用于高维不平衡JPEG图像隐写分析。我们的方法使用标准的隐写分析功能,并通过多视图匹配重采样方法从未标记的示例中选择可信的隐身图像,以重新平衡不平衡的训练图像。此外,提出了加权Fisher线性判别式(WFLD),以找到适当的特征子空间,其中K-means为WFLD提供权重因子。最后,WFLD和K-means都以迭代方式工作,直到收敛为止。 MB和nsF5隐写方法的实验结果表明,该开发方案在当前流行的特征空间上非常有用。 (C)2015 Elsevier Inc.保留所有权利。

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