A Robust Audio Watermarking Scheme Using Mean Quantization in the Wavelet Transform Domain

N. Kalantari, S. Ahadi, A. Kashi
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引用次数: 15

Abstract

In this paper, we present a mean quantization based audio watermarking scheme in the wavelet transform domain. The watermark data was embedded by quantizing the means of two selected bands of the wavelet transform of the original audio signal. One of the bands was in the lower frequency and the other one in the higher frequency ranges. Adaptive step sizes were used to achieve robustness and good transparency. As a result of selecting high and low frequency bands, this scheme is robust to both high- pass and low-pass attacks. The decoder detects the watermark data without any need to the original signal. The simulation results show that this watermarking scheme performs better than many recently proposed methods regarding robustness against common attacks such as MP3 compression, adding white Gaussian noise, filtering, resampling, etc.
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一种基于小波变换域均值量化的鲁棒音频水印方案
本文提出了一种基于小波变换域均值量化的音频水印方案。通过对原始音频信号进行小波变换,选取两个波段的均值进行量化,嵌入水印数据。其中一个波段在较低的频率范围内,另一个波段在较高的频率范围内。采用自适应步长实现鲁棒性和良好的透明性。由于选择了高频段和低频段,该方案对高通和低通攻击都具有较强的鲁棒性。解码器在不需要原始信号的情况下检测水印数据。仿真结果表明,该水印方案在抗MP3压缩、加高斯白噪声、滤波、重采样等常见攻击方面的鲁棒性优于目前提出的许多方法。
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