基于“分发副本”的可证明安全隐写术

Jinyang Ding, Kejiang Chen, Yaofei Wang, Na Zhao, Weiming Zhang, Neng H. Yu
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引用次数: 2

摘要

隐写术是一种将秘密信息的传输伪装成看似无辜的行为。虽然安全隐写术已经提出了几十年,但由于其严格的要求(如完美的采样器和明确的数据分布)在传统数据环境中难以满足,因此在该领域尚未成为主流。深度生成模型的普及程度正在逐渐提高,它可以为解决这一问题提供一个极好的机会。近年来,人们提出了几种基于深度生成模型的可证明安全的隐写方法。然而,在实践中,由于不现实的条件,例如离散元素的均衡分组以及消息和信道分布之间的完美匹配,它们无法达到预期的安全性。本文提出了一种新的可证明安全的隐写方法——Discop,该方法在生成过程中构造多个“分发副本”。在生成的每个时间步骤中,消息决定从哪个“分发副本”进行采样。只要接收者同意与发送者共享一些信息,他就可以毫无差错地提取信息。为了进一步提高嵌入率,我们通过创建Huffman树递归地构造更多的“分布副本”。我们证明了Discop可以严格保持原始分布,使得对手不能比随机猜测表现得更好。此外,我们对不同数字媒体的多个生成任务进行了实验,结果表明,Discop的安全性和效率优于先前的方法。
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Discop: Provably Secure Steganography in Practice Based on "Distribution Copies"
Steganography is the act of disguising the transmission of secret information as seemingly innocent. Although provably secure steganography has been proposed for decades, it has not been mainstream in this field because its strict requirements (such as a perfect sampler and an explicit data distribution) are challenging to satisfy in traditional data environments. The popularity of deep generative models is gradually increasing and can provide an excellent opportunity to solve this problem. Several methods attempting to achieve provably secure steganography based on deep generative models have been proposed in recent years. However, they cannot achieve the expected security in practice due to unrealistic conditions, such as the balanced grouping of discrete elements and a perfect match between the message and channel distributions. In this paper, we propose a new provably secure steganography method in practice named Discop, which constructs several "distribution copies" during the generation process. At each time step of generation, the message determines from which "distribution copy" to sample. As long as the receiver agrees on some shared information with the sender, he can extract the message without error. To further improve the embedding rate, we recursively construct more "distribution copies" by creating Huffman trees. We prove that Discop can strictly maintain the original distribution so that the adversary cannot perform better than random guessing. Moreover, we conduct experiments on multiple generation tasks for diverse digital media, and the results show that Discop’s security and efficiency outperform those of previous methods.
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