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A learning-based audio watermarking scheme using kernel Fisher discriminant analysis

机译:基于核Fisher判别分析的基于学习的音频水印方案

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摘要

A novel learning-based audio watermarking scheme using kernel Fisher discriminant analysis (KFDA) is proposed in this paper. Two techniques, down-sampling technique and energy relationship modulation technique, are developed in order to guarantee good fidelity of the watermarked audio signal. At the same time, local energy relationship between audio sub-frames is hid in the watermarked audio signal with watermark embedding. Moreover, a learning-based watermark detector using the KFDA is exploited and it extracts the watermark by learning the local energy relationship hid in the watermarked audio signal. Due to powerful non-linear learning ability and good generalization ability of the KFDA, the learning-based watermark detector can exhibit high robustness against common audio signal processing or attacks compared with other audio watermarking methods. In addition, it also has simple implementation and lower computation complexity.
机译:提出了一种基于核Fisher判别分析(KFDA)的基于学习的新型音频水印方案。为了保证水印音频信号的良好保真度,开发了两种技术,即下采样技术和能量关系调制技术。同时,音频子帧之间的局部能量关系被隐藏在带有水印嵌入的水印音频信号中。此外,还开发了一种使用KFDA的基于学习的水印检测器,它通过学习隐藏在带水印的音频信号中的局部能量关系来提取水印。由于KFDA的强大的非线性学习能力和良好的泛化能力,与其他音频水印方法相比,基于学习的水印检测器对常见的音频信号处理或攻击表现出很高的鲁棒性。另外,它还具有实现简单,计算复杂度低的优点。

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