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A New Watermarking Algorithm based on Slowly Feature Analysis

机译:一种基于慢特征分析的水印算法

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摘要

Recently, Blind Source Separate (BSS) technique has been extended to digital watermarking field. Slowly Feature Analysis (SFA)-a kind of BSS technique-is a new unsupervised learning algorithm to learn nonlinear functions that extract slowly varying signals out of the input data. It expediently can be used to extract image feature and separate the mixed signals. Making use of the advantages of SFA, in this paper, we propose a watermarking scheme based on SFA. In the experiments, we compare our scheme with other watermarking algorithm which has been used to digital watermarking field especially wavelets. Results indicate that our scheme has not only better invisibility and good robustness to different kinds of attacks but also ease the conflicts between them.
机译:最近,盲源分离(BSS)技术已经扩展到数字水印领域。缓慢特征分析(SFA)是一种BSS技术,是一种新的无监督学习算法,用于学习从输入数据中提取缓慢变化的信号的非线性函数。方便地,它可以用于提取图像特征并分离混合信号。利用SFA的优势,本文提出了一种基于SFA的水印方案。在实验中,我们将我们的方案与其他已用于数字水印领域(尤其是小波)的水印算法进行了比较。结果表明,我们的方案不仅对不同类型的攻击具有更好的隐身性和鲁棒性,而且还缓解了它们之间的冲突。

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