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A hybrid approach for optimizing transparency, robustness and capacity of an audio watermarking algorithm

机译:用于优化音频水印算法的透明度,鲁棒性和容量的混合方法

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In the field of digital audio watermarking, the issue of optimizing imperceptibility, robustness and payload is still a big challenge. In this paper, the problem of optimizing the design parameters has been addressed by presenting a secure, robust and imperceptible blind audio watermarking algorithm with large payload. The proposed algorithm is designed using the singular values of SVD in detailed coefficients of wavelet domain. Reference to the existing literature, embedding watermark in the singular values of SVD gives a robust algorithm and embedding in wavelet coefficients provide good transparency. The embedding quantization function is designed in such a way that it introduces minimal changes in the signal while embedding and provide opportunity to hide more watermarking data. The features of both the domains have been properly utilized to achieve robustness and imperceptibility at an acceptable level. The experimental results validate that proposed hybrid technique is robust to various signal processing attacks with good perceptual transparency at high payload. The efficiency of the proposed algorithm has been proved by simulation results. The comparison of the proposed algorithm with the existing algorithms show that proposed algorithm has good performance giving good imperceptibility and robustness at 1562.5 bps.
机译:在数字音频水印领域,优化不感知性,鲁棒性和有效载荷的问题仍然是一个巨大的挑战。在本文中,通过提出一种安全,健壮和难以察觉的,具有大有效载荷的盲音频水印算法,解决了优化设计参数的问题。该算法是基于小波域详细系数中奇异值的奇异值进行设计的。参考现有文献,将水印嵌入到SVD的奇异值中可以提供鲁棒的算法,而嵌入小波系数中则可以提供良好的透明度。嵌入量化功能的设计方式是在嵌入时将信号的变化降到最低,并提供隐藏更多水印数据的机会。两个域的特征已被适当地利用,以在可接受的水平上实现鲁棒性和不可感知性。实验结果验证了所提出的混合技术对于高有效载荷下具有良好感知透明性的各种信号处理攻击具有鲁棒性。仿真结果证明了该算法的有效性。将该算法与现有算法进行比较表明,该算法性能良好,在1562.5 bps时具有良好的不易察觉性和鲁棒性。

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