基于乘法嵌入模型的小波域音频隐写分析

Yin-Cheng Qi, Liang Ye, Chong Liu
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引用次数: 19

摘要

隐写分析是对隐写术的一种对抗手段,是对给定介质中隐藏的数据进行检测和解码。针对加性嵌入模型的音频隐写分析已经取得了不少成果。然而,当他们区分带有乘性噪声的掩蔽音频信号和隐声音频信号时,结果令人失望。提出了一种基于乘性嵌入模型的小波域音频隐写分析方法。首先计算测试音频信号的绝对值和对数。乘性噪声变为加性噪声。然后提取特征。最后,利用支持向量机(SVM)作为分类器对覆盖音频信号和隐写音频信号进行区分。仿真结果表明,该方法的检测率大于94%,是有效的。
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Wavelet domain audio steganalysis for multiplicative embedding model
Steganalysis is taken as a countermeasure to steganography and is detecting and decoding hidden data within a given media. There has been quite some effort in audio steganalysis for additive embedding model. However, when they distinguish the cover-audio signal with multiplicative noise and the stego-audio signal, results are disappointing. In this paper, a wavelet domain audio steganalysis method for multiplicative embedding model is proposed. The test audio signal is firstly calculated its absolute value and logarithm. Multiplicative noise is changed to additive noise. Then features are extracted. At last, support vector machine (SVM) is utilized as a classifier to distinguish the cover-audio signal and the stego-audio signal. Simulation results show that the detection rates are greater than 94% and the method is effective.
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