一种新的基于奇异值分解和在线顺序极值学习机的水印版权保护方法

Neelam Dabas, R. Singh, Geethanjali Kher, Vikash Chaudhary
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引用次数: 1

摘要

随着互联网的日益普及,保护知识产权也同样重要。为了保护版权,在小波域提出了一种基于SVD和OSELM的盲数字水印算法。在嵌入过程中,对系数块进行奇异值分解,得到小波变换域中的奇异值。通过调制奇异值将水印嵌入到主图像中。训练在线顺序极值学习机学习原始系数与相应水印版本之间的关系。在提取过程中,由于不需要原始主机图像,因此使用该训练好的OSELM对嵌入的水印进行盲提取。通过各种攻击,如模糊、噪声、锐化、旋转和裁剪,水印图像被改变。实验结果表明,所提出的水印方案对各种攻击具有较强的鲁棒性。提取的水印与原始水印有很好的相似性,可以很好地证明所有权。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel SVD and online sequential extreme learning machine based watermark method for copyright protection
For the increasing use of internet, it is equally important to protect the intellectual property. And for the protection of copyright, a blind digital watermark algorithm with SVD and OSELM in the IWT domain has been proposed. During the embedding process, SVD has been applied to the coefficient blocks to get the singular values in the IWT domain. Singular values are modulated to embed the watermark in the host image. Online sequential extreme learning machine is trained to learn the relationship between the original coefficient and the corresponding watermarked version. During the extraction process, this trained OSELM is used to extract the embedded watermark logo blindly as no original host image is required during this process. The watermarked image is altered using various attacks like blurring, noise, sharpening, rotation and cropping. The experimental results show that the proposed watermarking scheme is robust against various attacks. The extracted watermark has very much similarity with the original watermark and works good to prove the ownership.
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