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Image watermarking algorithm based on grey relational analysis and singular value decomposition in wavelet domain

机译:基于灰色关联分析和小波奇异值分解的图像水印算法

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An image watermarking algorithm based on grey relational analysis and singular value decomposition in wavelet domain is proposed. Firstly, the host image is processed with one-level of discrete wavelet transform. The low frequency coefficients LL1 can be obtained from mentioned operation, and LL1 is divided into non-overlapping blocks whose size is same as watermarking. Secondly, through the gained coefficients of each block and the given random sequence, grey relational degrees which are preserved as training sample are acquired for each block. The largest singular value which can be found from singular value decomposition for each block is preserved as training target. Thus total training samples and corresponding training targets are obtained. Then, The LS_SVR model can be obtained through the training study. Next, through feeding the trained LS-SVR with the training samples to estimate the largest singular values, watermarking bits are embedded for adjusting the largest singular values. Finally, the watermarking is extracted by the reversing steps, and the extraction algorithm belongs to non-blind watermarking because the original host image is necessary. Experimental results show that the proposed scheme not only possesses good imperceptibility, but also has fine robustness against common signal processing.
机译:提出了一种基于小波域灰度关联分析和奇异值分解的图像水印算法。首先,利用一级离散小波变换处理宿主图像。低频系数LL1可以从上述操作中获得,并且LL1被分成大小与水印相同的非重叠块。其次,通过获得的每个块的系数和给定的随机序列,为每个块获取保留为训练样本的灰色关联度。从每个块的奇异值分解中可以找到的最大奇异值被保留为训练目标。因此,获得了总训练样本和相应的训练目标。然后,可以通过训练研究获得LS_SVR模型。接下来,通过向训练有素的LS-SVR提供训练样本以估计最大奇异值,嵌入水印位以调整最大奇异值。最后,通过逆向步骤提取水印,并且该提取算法属于非盲水印,因为需要原始宿主图像。实验结果表明,该方案不仅具有良好的感知能力,而且对普通信号处理具有良好的鲁棒性。

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