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首页> 外文期刊>Signal processing >Adversarial batch image steganography against CNN-based pooled steganalysis
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Adversarial batch image steganography against CNN-based pooled steganalysis

机译:对基于CNN的CNN的汇集批量批量批量图像隐写杂志

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摘要

The application of adversarial embedding in single image steganography exhibits its advantage in resisting convolutional neural network (CNN)-based steganalysis. As an important technique to move the steganography from the laboratory to the real world, batch steganography is developed based on the single image steganography, which uses a series of images as carriers. Furthermore, existing pooled steganalysis also applied CNN architecture for feature extraction, which aims to detect batch steganography. Therefore, it is reasonable and meaningful to introduce adversarial embedding in batch steganography to resist pooled steganalysis. However, as far as we know, there is no work about adversarial batch steganography. Adversarial batch image steganography should be able to resist pooled steganalysis which takes a group of images as a unit, therefore the loss function of the single image steganalyzer can not be directly used for adversarial embedding. In addition, adversarial embedding should be combined with batch strategy. In this paper, we propose a general framework of adversarial embedding for batch steganography, in which a new loss function is designed and the batch strategy is combined with adversarial embedding. By this framework, we can adapt most adversarial embedding algorithms for single image steganography to batch steganography. To verify the efficiency of the proposed framework, we design an algorithm called ADVersarial Image Merging Steganography (ADV-1MS) based on ADVersarial EMBedding (ADV-EMB), and carry out a series corresponding experiments. Experimental results show the proposed method significantly improves the security performance of batch steganography against pooled steganalysis and keeps a high-security level against single image steganalysis.
机译:对抗性嵌入在单个图像隐写术的应用表现出抵抗卷积神经网络(CNN)系隐写它的优点。至于从实验室移到隐身于现实世界的一项重要技术,批量隐写术是基于单个图像隐秘,它采用了一系列的图像作为载体的开发。此外,现有的共用的隐写也适用CNN架构用于特征提取,其目的是检测批量隐写术。因此,它是合理的和有意义的引入对抗嵌入在批次隐写术抵抗池隐写。然而,据我们所知,目前还没有关于敌对批隐秘的工作。对抗性批次隐秘图像应该能够抵抗池隐写这需要一组图像作为一个单位,因此不能直接用于对抗嵌入单个图像steganalyzer的损失函数。此外,对抗嵌入应与一批战略结合起来。在本文中,我们提出了对抗性嵌入批量隐秘,在一个新的损失函数的设计和批量策略与对抗嵌入结合的总体框架。通过这个框架,我们可以适应单隐秘图像批量隐秘最敌对的嵌入算法。为了验证所提出的框架的有效性,我们设计了所谓的对抗性图像合成基于对抗嵌入(ADV-EMB)隐写术(ADV-1MS)的算法,并进行相应的实验系列。实验结果表明,该方法显著提高对合并隐写一批隐写术的安全性能,并保持对单个图像隐写一个高安全级别。

著录项

  • 来源
    《Signal processing》 |2021年第4期|107920.1-107920.11|共11页
  • 作者单位

    University of Science and Technology of China. CAS Key Laboratory of Electro-Magnetic Space Information Hefei 230026 China;

    University of Science and Technology of China. CAS Key Laboratory of Electro-Magnetic Space Information Hefei 230026 China;

    University of Science and Technology of China. CAS Key Laboratory of Electro-Magnetic Space Information Hefei 230026 China;

    University of Science and Technology of China. CAS Key Laboratory of Electro-Magnetic Space Information Hefei 230026 China;

    University of Science and Technology of China. CAS Key Laboratory of Electro-Magnetic Space Information Hefei 230026 China;

    University of Science and Technology of China. CAS Key Laboratory of Electro-Magnetic Space Information Hefei 230026 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Batch steganography; Adversarial attack; Pooled steganalysis; Deep learning;

    机译:批量隐写术;对抗攻击;合并的麻木分析;深度学习;

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