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Improving Text-Image Matching with Adversarial Learning and Circle Loss for Multi-modal Steganography

机译:改进与对抗的文本图像匹配,对普通型隐写术的对抗学习和圆圈损失

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This paper proposes a multi-modal steganography method based on an improved text-image matching algorithm. At present, most of the steganography methods are based on single modality of carriers and embed confidential information into the carriers by cover modification or cover synthesis. Since the distortions between the covers after embedding and the original covers are inevitable, these steganography methods can be detected by the existing steganalysis methods. To solve this problem, we propose multi-modal steganography which hides the confidential information in the semantic relevancy between two modalities of original carriers. The semantic relevancy between the two modalities is measured by text-image matching, which affects the impercep-tibility of the proposed method to a large extent. In order to increase the security of multi-modal steganography, we improve the current text-image matching algorithm with adversarial learning and circle loss. By selecting and transmitting the original multi-modal carriers with high relevancy, the proposed method can escape from the detection of current steganalysis methods. It is also illustrated by the theoretical analysis and experimental results that the semantic relevancy between the selected multi-modal carriers is enhanced.
机译:本文提出了一种基于改进的文本图像匹配算法的多模态隐写法方法。目前,大多数隐写术方法基于载波的单个模态,并通过覆盖修改或覆盖合成将机密信息嵌入到载体中。由于嵌入和原始封面之后的覆盖物之间的扭曲是不可避免的,因此可以通过现有的隐分方法检测这些隐喻方法。为了解决这个问题,我们提出了多模态隐写术,它隐藏了原始运营商的两个模式之间的语义相关性中的机密信息。通过文本图像匹配来测量两种方式之间的语义相关性,这在很大程度上影响了所提出的方法的占透视性。为了提高多模态隐写术的安全性,我们通过对抗学习和圆损改善了当前的文本图像匹配算法。通过用高相关性选择和发送原始多模乘载流子,所提出的方法可以从检测到当前的隐点分析方法。还通过理论分析和实验结果说明了所选多模态载波之间的语义相关性的实验结果说明。

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