Framework for Hiding Information in Audio Sub-signals by Using Singular Spectrum Analysis with Psychoacoustic Model

Ratthamontree Burimas, Tidanat Kumpuak, Mongkonchai Intarauksorn, Kasorn Galajit, P. Aimmanee, Jessada Karnjana
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Abstract

This paper proposes a method for hiding information in audio signals by using singular spectrum analysis (SSA) with a psychoacoustic model to enhance the sound quality of a watermarked signal from our previous work. In this framework, an original signal is decomposed into many sub-signals by applying the combination of the SSA-based method and the psychoacoustic model. The sub-signals to be embedded are chosen using signal analysis based on human perception. The watermark bits are embedded into selected sub-signals by modifying some parts of their singular spectra according to an embedding rule. Then, the accuracy of extracted watermark bits and the sound quality of the watermarked signal, compared with that of the original one, are used to verify the performance of our framework. The experimental results show that the proposed framework satisfies the evaluation criteria in terms of inaudibility and robustness. However, it has a significant trade-off between them.
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基于心理声学模型奇异谱分析的音频子信号信息隐藏框架
本文提出了一种基于心理声学模型的奇异频谱分析(SSA)方法来隐藏音频信号中的信息,以提高水印信号的音质。在该框架中,将基于ssa的方法与心理声学模型相结合,将原始信号分解成许多子信号。利用基于人类感知的信号分析选择要嵌入的子信号。根据嵌入规则修改子信号奇异谱的一部分,将水印位嵌入到选定的子信号中。然后,将提取的水印位的精度和水印信号的音质与原始信号的音质进行比较,验证该框架的性能。实验结果表明,该框架在不听性和鲁棒性方面满足评价标准。然而,它们之间有一个重要的权衡。
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