Improved watermark extraction using dynamic stochastic resonance

R. Chouhan, R. K. Jha, M. Shrivastava, Apoorv Chaturvedi
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引用次数: 2

Abstract

In this paper, a dynamic stochastic resonance (DSR)-based blind watermark extraction technique has been proposed for robust extraction of a binary watermark. The watermark embedding has been done in mid-band DCT coefficients using well-known PN sequences. Dynamic stochastic resonance has been strategically used to improve the robustness of the extraction algorithm by utilizing the added noise (or degradation) during attacks itself. DSR is a converging iterative process that tunes the coefficients of the possibly attacked image so that effect of noise is suppressed and hidden information is enhanced. Resilience of this technique has been tested in the presence of various attacks such as noise attacks, geometrical distortions, enhancement, compression and filtering. A simple optimization procedure has been adopted for the selection of bistable double-well system parameters in the DSR step so to achieve maximum correlation coefficient under minimum computational complexity. Using the proposed adaptive DSR-based extraction technique, a very robust extraction of watermark can be done without trading-off with visual quality of the watermarked image. When compared with the plain DCT-based technique, the proposed DSR-based DCT technique has been found to give better performance.
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改进的动态随机共振水印提取方法
本文提出了一种基于动态随机共振(DSR)的盲水印提取技术,用于二值水印的鲁棒提取。水印嵌入是在中频DCT系数中使用著名的PN序列进行的。动态随机共振已被策略性地用于提高提取算法的鲁棒性,通过利用在攻击过程中增加的噪声(或退化)。DSR是一种收敛迭代过程,它对可能被攻击的图像的系数进行调整,以抑制噪声的影响,增强隐藏信息。该技术在噪声攻击、几何扭曲、增强、压缩和滤波等各种攻击下的恢复能力已经得到了测试。为了在最小的计算复杂度下获得最大的相关系数,在DSR步骤中采用了一种简单的优化程序来选择双稳态双井系统参数。利用本文提出的基于自适应dsr的水印提取技术,可以在不牺牲水印图像视觉质量的前提下,实现非常鲁棒的水印提取。通过与普通DCT技术的比较,发现基于dsr的DCT技术具有更好的性能。
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