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CNN-based image steganalysis using additional data embedding

机译:使用额外数据嵌入的基于CNN的图像隐写分析

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Image steganalysis identifies whether a secret message is hidden in an image. Conventional steganalytic methods require processes to extract discriminative statistical features from images and classify them. Convolutional neural networks (CNN) are particularly effective at conducting those processes. However, since the hidden message was too weak to be detected, existing CNN-based steganalytic methods needed to adopt preprocessing filters to increase the strength of the hidden message. Then, development focused on improved network structures and preprocessing filters. In this paper, we propose a different approach to CNN-based image steganalysis. We embed additional data in an input image and use two images (i.e., the original input image and its stego image with additional embedded data) as input. This is based on an assumption that pixel variations due to the additional embedded data would be sufficient to identify images with and without a secret message. We also propose two variants of conventional CNNs for image steganalysis, named dual channel CNN and dual network CNN, to input two images. We conducted various experiments using the proposed CNNs. The experimental results prove that the assumption holds, and the additional input could provide useful information to improve the performance of conventional CNN-based steganalytic methods. Depending on the strength of the hidden message, the proposed approach could improve the identification rate by up to 6% for S-UNIWARD, an adaptive steganographic method.
机译:图像隐写分析可识别秘密消息是否隐藏在图像中。常规隐写分析方法需要从图像中提取判别统计特征并将其分类的过程。卷积神经网络(CNN)在进行这些过程时特别有效。但是,由于隐藏消息太弱而无法检测到,因此现有的基于CNN的隐写分析方法需要采用预处理过滤器以增加隐藏消息的强度。然后,开发的重点是改进的网络结构和预处理过滤器。在本文中,我们提出了另一种基于CNN的图像隐写分析方法。我们将其他数据嵌入到输入图像中,并使用两个图像(即原始输入图像及其带有附加嵌入数据的隐身图像)作为输入。这是基于这样的假设:由于附加的嵌入式数据而导致的像素变化足以识别带有或不带有秘密消息的图像。我们还提出了用于图像隐写分析的常规CNN的两个变体,分别称为双通道CNN和双网络CNN,以输入两个图像。我们使用提出的CNN进行了各种实验。实验结果证明了该假设成立,并且额外的输入可以提供有用的信息,以改善常规基于CNN的隐写分析方法的性能。根据隐藏消息的强度,所提出的方法可以将自适应隐写方法S-UNIWARD的识别率提高多达6%。

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