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MEO based secured robust high capacity and perceptual quality image watermarking in DWT-SVD domain

机译:DWT-SVD域中基于MEO的安全鲁棒高容量和可感知质量的图像水印

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摘要

The aim of this paper is to present multiobjective evolutionary optimizer (MEO) based highly secured and strongly robust image watermarking technique using discrete wavelet transform (DWT) and singular value decomposition (SVD). Many researchers have failed to achieve optimization of perceptual quality and robustness with high capacity watermark embedding. Here, we achieved optimized peak signal to noise ratio (PSNR) and normalized correlation (NC) using MEO. Strong security is implemented through eight different security levels including watermark scrambling by Fibonacci-Lucas transformation (FLT). Haar wavelet is selected for DWT decomposition to compare practical performance of wavelets from different wavelet families. The technique is non-blind and tested with cover images of size 512x512 and grey scale watermark of size 256x256. The achieved perceptual quality in terms of PSNR is 79.8611dBs for Lena, 87.8446 dBs for peppers and 93.2853 dBs for lake images by varying scale factor K1 from 1 to 5. All candidate images used for testing namely Lena, peppers and lake images show exact recovery of watermark giving NC equals to 1. The robustness is tested against variety of attacks on watermarked image. The experimental demonstration proved that proposed method gives NC more than 0.96 for majority of attacks under consideration. The performance evaluation of this technique is found superior to all existing hybrid image watermarking techniques under consideration.
机译:本文的目的是提出一种使用离散小波变换(DWT)和奇异值分解(SVD)的基于多目标进化优化器(MEO)的高度安全和强健的图像水印技术。许多研究人员未能通过高容量水印嵌入来实现感知质量和鲁棒性的优化。在这里,我们使用MEO实现了优化的峰值信噪比(PSNR)和归一化相关(NC)。通过八个不同的安全级别来实现强大的安全性,包括通过斐波那契-卢卡斯变换(FLT)进行水印加扰。选择Haar小波进行DWT分解,以比较不同小波族的小波的实际性能。该技术是非盲的,并使用尺寸为512x512的封面图像和尺寸为256x256的灰度水印进行了测试。通过将比例因子K1从1更改为5,可以达到的PSNR感知质量为Lena为79.8611dBs,胡椒为87.8446 dBs,湖泊图像为93.2853 dBs。用于测试的所有候选图像,即Lena,胡椒和湖泊图像均显示出精确的恢复给定NC的水印数量等于1。针对各种对水印图像的攻击,对鲁棒性进行了测试。实验证明,该方法在考虑中的大多数攻击情况下,NC均大于0.96。发现该技术的性能评估优于正在考虑的所有现有混合图像水印技术。

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