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Audio watermarking scheme robust against desynchronization attacks based on kernel clustering

机译:基于内核聚类的抗去同步攻击的音频水印方案

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摘要

In this paper, we propose an adaptive audio watermarking scheme based on kernel fuzzy c-means (KFCM) clustering algorithm, which possesses robust ability against common signal processing and desynchronization attacks. The original audio signal is partitioned into audio frames and then each audio frame is further divided as two sub-frames. In order to resist desynchronization attacks, we embed a synchronization code into first sub-frame of each audio frame by using a mean quantization technique in temporal domain. Moreover, watermark signal is hid into DWT coefficients of second sub-frame of each audio frame by using an energy quantization technique. A local audio feature data set extracted from all audio frames is used to train a KFCM. The well-trained KFCM is used to adaptively control quantization steps in above two quantization techniques. The experimental results show the proposed scheme is robust to common signal processing (such as MP3 lossy compression, noise addition, filtering, re-sampling, re-quantizing) and desynchronization attacks (random cropping, pitch shifting, amplitude variation, time-scale modification, jittering).
机译:在本文中,我们提出了一种基于内核模糊c均值(KFCM)聚类算法的自适应音频水印方案,该方案具有强大的抵抗常见信号处理和去同步攻击的能力。原始音频信号被划分为音频帧,然后每个音频帧被进一步划分为两个子帧。为了抵抗去同步攻击,我们使用时域中的均值量化技术将同步代码嵌入每个音频帧的第一子帧中。此外,通过使用能量量化技术将水印信号隐藏到每个音频帧的第二子帧的DWT系数中。从所有音频帧提取的本地音频特征数据集用于训练KFCM。训练有素的KFCM用于上述两种量化技术中的自适应控制量化步骤。实验结果表明,该方案对常见的信号处理(例如MP3有损压缩,噪声添加,滤波,重采样,重量化)和去同步攻击(随机裁剪,音高偏移,幅度变化,时标修改)具有鲁棒性。 ,抖动)。

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