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A self-synchronization digital audio watermarking based on support vector regression

机译:基于支持向量回归的自同步数字音频水印

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Synchronization attack is one of the key issues of digital audio watermarking. It is a challenging work to design a robust audio watermarking scheme against de-synchronization attacks. In this paper, a robust digital audio watermarking algorithm is presented, which can resist synchronization attack effectively. The features of the algorithm are as follows: (1) More steady features extraction and new embedded strategy are adopted to resist the synchronization attack effectively. (2) The candidate audio segments for embedding watermark are defined by using the feature points. (3) The digital watermark is embedded into a host audio by modulating the statistics average value of audio samples. (4) The algorithm can extract the watermark without the help of the original audio signal. (5) In digital watermark detection, the feature points are selected by the same technique as the embedding, and the digital watermark is extracted from the watermarked audio after the feature Points. Experimental results show that our synchronization audio watermarking scheme is not only inaudible and robust against various common signal processing (such as noise adding, resampling, re-quantization and MP3 compression and so on), but also robust against de-synchronization attacks such as random cropping, amplitude variation, time-scale modification, and jittering etc.
机译:同步攻击是数字音频水印的关键问题之一。设计一种强大的音频水印方案以应对非同步攻击是一项艰巨的工作。本文提出了一种鲁棒的数字音频水印算法,该算法可以有效地抵抗同步攻击。该算法的特点如下:(1)采用更稳定的特征提取和新的嵌入式策略来有效地抵抗同步攻击。 (2)通过使用特征点来定义用于嵌入水印的候选音频片段。 (3)通过调制音频样本的统计平均值,将数字水印嵌入到主机音频中。 (4)该算法无需原始音频信号即可提取水印。 (5)在数字水印检测中,通过与嵌入相同的技术来选择特征点,并且从特征点之后的带水印的音频中提取数字水印。实验结果表明,我们的同步音频水印方案不仅对各种常见信号处理(如噪声添加,重采样,重新量化和MP3压缩等)听不见且鲁棒,而且对诸如随机噪声之类的去同步攻击也很鲁棒。裁剪,幅度变化,时标修改和抖动等。

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