隐藏一个标志水印到多小波域使用神经网络

Jun Zhang, Nengchao Wang, Feng Xiong
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引用次数: 33

摘要

本文提出了一种新的图像水印方案,利用神经网络将水印嵌入到图像的多小波域中。多小波域为我们提供了像标量小波一样的图像的多分辨率表示。然而,在多小波域的最粗层有四个子块,而在标量小波域的最粗层只有一个子块,并且这些子块之间有很大的相似性。根据多小波域的这些特征,我们通过调整一个子块的系数与其他三个子块对应系数均值的极性来嵌入水印。此外,我们使用反向传播神经网络(BPN)来学习水印与被水印图像之间的关系特征。由于BPN的学习和自适应能力,训练后的BPN可以大大降低水印的假恢复。实验结果表明,该方法对常用的图像处理算子具有良好的隐蔽性和较高的鲁棒性。
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Hiding a logo watermark into the multiwavelet domain using neural networks
This paper proposes a novel watermarking scheme for an image, in which a logo watermark is embedded into the multiwavelet domain of the image using neural networks. The multiwavelet domain provides us with a multiresolution representation of the image like the scalar wavelet case. However, there are four subblocks in the coarsest level of the multiwavelet domain, where there is only one in that of the scalar wavelet domain, and also there is a great similarity among these subblocks. According to these characteristics of the multiwavelet domain, we embed a bit of the watermark by adjusting the polarity between the coefficient in one subblock and the mean value of the corresponding coefficients in other three subblocks. Furthermore, we use a back-propagation neural network (BPN) to learn the characteristics of relationship between the watermark and the watermarked image. Due to the learning and adaptive capabilities of the BPN, the false recovery of the watermark can be greatly reduced by the trained BPN. Experimental results show that the proposed method has good imperceptibility and high robustness to common image processing operators.
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