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A digital watermarking method based on NSCT transform and hybrid evolutionary algorithms with neural networks

机译:一种基于NSCT变换和Hybrid进化算法的神经网络的数字水印方法

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摘要

This study aims to determine the watermark resistance to different attacks as well as the PSNR level, both of which are essential requirements of watermarking. In our research, we came up with an intelligent design based on NSCT-SVD that fulfills these requirements to a great extent and we managed to use different-sized images for watermark instead of using logos on the host images. Yet we were able to improve PSNR levels and resistance to various attacks. In this paper an NSCT-SVD-based smart watermark model is proposed. We first compare the PSO and PSO-GA algorithms for greater stability using larger SFs obtained by the PSO-GA-AI algorithm. The resulting host image is then decomposed by NSCT transform to obtain images below the low frequency range. Stationary Wavelet Transform (SWT) is performed once on these coefficients and the low frequency coefficients are fed to SVD. Afterwards, SWT transform is performed on the watermark image and the transform is once again taken from the HL coefficients and the LL frequencies are given to the SVD conversion. The rest of image process is insertion. This insertion process dramatically increases the visual transparency and PSNR value. The experiment shows that such a model is able to resist the repeated image attacks with better visibility and power. These results are compared before and after using SWT. We have used a PSO-based algorithm for better results on the False Positive rate in the embedding phase.
机译:本研究旨在确定对不同攻击以及PSNR水平的水印阻力,这都是水印的必要要求。在我们的研究中,我们提出了一种基于NSCT-SVD的智能设计,可以在很大程度上实现这些要求,我们设法使用不同尺寸的图像来进行水印而不是在主机图像上使用徽标。然而,我们能够改善PSNR水平和对各种攻击的抵抗力。本文提出了一种基于NSCT-SVD的智能水印模型。首先,使用PSO-GA-AI算法获得的较大SFS比较PSO和PSO-GA算法以实现更大的稳定性。然后通过NSCT变换对所得到的主机图像进行分解,以获得低于低频范围以下的图像。静止小波变换(SWT)在这些系数上执行一次,并且低频系数被馈送到SVD。然后,在水印图像上执行SWT变换,并从HL系数再次从HL系数中进行变换,并且将LL频率给予SVD转换。其余的图像过程是插入的。此插入过程显着提高了视觉透明度和PSNR值。实验表明,这种模型能够以更好的可见性和功率抵抗重复的图像攻击。使用SWT之前和之后比较这些结果。我们使用了基于PSO的算法,以便更好地呈现嵌入阶段中的假阳性率。

著录项

  • 来源
    《SN Applied Sciences》 |2020年第10期|1669.1-1669.15|共15页
  • 作者

    Ali Amiri; Sattar Mirzakuchaki;

  • 作者单位

    Department of Electronic Science Qazvin Branch Islamic Azad University Qazvin Iran;

    Department of Electrical Engineering Iran University of Science and Technology Tehran Iran;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    NSCT; Neural networks; SWT; PSO; GA;

    机译:nsct;神经网络;SWT;PSO;GA.;

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