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BASN—Learning Steganography with a Binary Attention Mechanism

机译:Basn-Learning Seganography,具有二元关注机制

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Secret information sharing through image carriers has aroused much research attention in recent years with images’ growing domination on the Internet and mobile applications. The technique of embedding secret information in images without being detected is called image steganography. With the booming trend of convolutional neural networks (CNN), neural-network-automated tasks have been embedded more deeply in our daily lives. However, a series of wrong labeling or bad captioning on the embedded images has left a trace of skepticism and finally leads to a self-confession like exposure. To improve the security of image steganography and minimize task result distortion, models must maintain the feature maps generated by task-specific networks being irrelative to any hidden information embedded in the carrier. This paper introduces a binary attention mechanism into image steganography to help alleviate the security issue, and, in the meantime, increase embedding payload capacity. The experimental results show that our method has the advantage of high payload capacity with little feature map distortion and still resist detection by state-of-the-art image steganalysis algorithms.
机译:通过图像运营商共享的秘密信息近年来在互联网和移动应用程序上越来越多的统治,近年来引起了很多研究的关注。在不检测的图像中嵌入图像中的秘密信息的技术称为图像隐写。随着卷积神经网络(CNN)的蓬勃发展趋势,在日常生活中更深入地嵌入了神经网络自动化任务。然而,嵌入式图像上的一系列错误的标签或错误的标题留下了一丝怀疑主义,最终导致自我忏悔等曝光。为了提高图像隐写的安全性并最小化任务结果失真,模型必须维护由嵌入在运营商中嵌入的任何隐藏信息的任务特定网络生成的特征映射。本文将二进制注意力机制介绍到图像隐写术中,以帮助缓解安全问题,并且在此期间增加嵌入有效载荷容量。实验结果表明,我们的方法具有高有效载荷容量的优点,具有很小的特征图失真,并且仍然是最先进的图像隐性算法检测。

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