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Towards Multi-class Blind Steganalyzer for JPEG Images

机译:面向JPEG图像的多类盲隐分析仪

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摘要

In this paper, we use the previously proposed calibrated DCT features to construct a Support Vector Machine classifier for JPEG images capable of recognizing which steganographic algorithm was used for embedding. This work also constitutes a more detailed evaluation of the performance of DCT features as in [9] only a linear classifier was used. The DCT features transformed using Principal Component Analysis enable an interesting visualization of different stego programs in a three-dimensional space. This paper demonstrates that, at least under some simplifying assumptions in which the effects of double compression are ignored, it is possible to reliably classify stego images to their embedding techniques. The classifier is capable of generalizing to previously unseen techniques.
机译:在本文中,我们使用先前提出的经过校准的DCT特征来构造JPEG图像的支持向量机分类器,该分类器能够识别使用哪种隐写算法进行嵌入。这项工作还构成了对DCT功能性能的更详细的评估,因为在[9]中仅使用了线性分类器。通过使用主成分分析转换的DCT功能,可以在三维空间中对不同的Stego程序进行有趣的可视化。本文证明,至少在忽略双压缩效果的一些简化假设下,可以将隐身图像可靠地分类到其嵌入技术。分类器能够归纳为以前看不见的技术。

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