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An Improved Design Scheme for Perceptual Hashing Based on CNN for Digital Watermarking

机译:一种基于CNN的数字水印感知哈希改进设计方案

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Digital watermarking technology is used extensively in the field of digital rights management. However, there are a few problems when it comes to making effective use of digital watermarking. First, for conventional digital watermarking, a digital image is used only as a carrier for embedded watermarking information, and as this information may be diverted to other images, the watermark information needs to be generated based on the original image. Second, after the original image is modified/edited, the watermark information needs to prove that it is from the original image. Third, multiple digital watermarks need to be stored and managed without depending on trusted third parties. In an earlier work, we proposed a digital rights management system based on digital watermarking, blockchain, and perceptual hashing to resolve these issues. However, because we used conventional perceptual hashing, we could not draw sufficient conclusions about the first and second problems. In order to obtain a stable digest message of an image for digital watermarking, we here propose a new construction method for perceptual hashing using a convolutional neural network (CNN). In the proposed method, we first construct a machine-learned CNN for accepting an image that we want to take the perceptual hash value. The perceptual hash value is the cryptographic hash value of the weights that make up the CNN. We then verify that the reconstructed CNN can guarantee the hash value used when obtaining the hash value, and confirm that the image to be verified is accepted and is the perceptual hash value of this image.
机译:数字水印技术被广泛用于数字版权管理领域。但是,在有效利用数字水印方面存在一些问题。首先,对于常规的数字水印,数字图像仅用作嵌入的水印信息的载体,并且由于该信息可能被转移到其他图像,因此需要基于原始图像来生成水印信息。其次,在原始图像被修改/编辑之后,水印信息需要证明它来自原始图像。第三,需要存储和管理多个数字水印,而不依赖于受信任的第三方。在较早的工作中,我们提出了一种基于数字水印,区块链和感知哈希的数字版权管理系统,以解决这些问题。但是,由于我们使用常规的感知哈希,因此无法得出有关第一个和第二个问题的足够结论。为了获得用于数字水印的图像的稳定摘要消息,我们在此提出一种使用卷积神经网络(CNN)进行感知哈希的新构造方法。在提出的方法中,我们首先构造一个机器学习的CNN,用于接受要获取感知哈希值的图像。感知哈希值是组成CNN的权重的加密哈希值。然后,我们验证重构的CNN可以保证在获得哈希值时使用的哈希值,并确认要验证的图像已被接受并且是该图像的感知哈希值。

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