Gray scale image watermarking using fuzzy entropy and Lagrangian twin SVR in DCT domain

A. Yadav, R. Mehta, Raj Kumar
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引用次数: 5

Abstract

In this paper, the effect of low, middle and high frequency DCT coefficients are investigated onto gray scale image watermarking in terms of imperceptibility and robustness. The performance of Lagrangian twin support vector regression (LTSVR), which was successfully applied on synthetic datasets obtained from UCI repository for various kinds of regression problems by Balasundaram et al. [9], onto image watermarking problem, is validated by embedding and extracting the watermark on different standard and real world images. Also the good learning capability of image characteristics provides the good imperceptibility of the watermark and robustness against several kinds of image processing attacks verifies the high generalization performance of LTSVR. Through the experimental results, it is observed that significant amount of imperceptibility and robustness is achieved using low frequency (LF) DCT coefficients as compared to middle frequency (MF) and high frequency (HF) DCT coefficients as well as state-of-art technique.
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基于模糊熵和拉格朗日双SVR的DCT域灰度图像水印
本文研究了低、中、高频DCT系数对灰度图像水印的不可感知性和鲁棒性的影响。Lagrangian twin support vector regression (LTSVR)是Balasundaram等[9]在UCI repository中获得的各种回归问题的合成数据集上成功应用于图像水印问题的方法,通过在不同标准图像和真实世界图像上嵌入和提取水印,验证了LTSVR在图像水印问题上的性能。良好的图像特征学习能力使水印具有良好的不可感知性和对多种图像处理攻击的鲁棒性,验证了LTSVR具有较高的泛化性能。通过实验结果,可以观察到与中频(MF)和高频(HF) DCT系数以及最先进的技术相比,使用低频(LF) DCT系数实现了显著的不可感知性和鲁棒性。
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