通过完全二叉树遍历和小波变换实现音频累进置乱

Twe Ta Oo, T. Onoye
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引用次数: 2

摘要

本文首先提出了一种有效的音频置乱方法,该方法基于时间域完全二叉树的预序遍历。该方法快速、简便,置乱效果好。然后,为了增强抗解密能力,我们提出了一种基于小波域的方案,该方案既考虑了前序加扰,又考虑了后序加扰方法。首先,对音频信号进行小波分解,提取小波系数层。然后,从三种方法中随机选择一种方法对每一层的系数进行置乱。任何不知道正确的小波分解参数和每层使用的加扰方法的人都无法成功地解扰信号。此外,该方案还实现了累进置乱,可以根据需要控制置乱程度,从而产生不同质量水平的音频输出。
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Progressive audio scrambling via complete binary tree's traversal and wavelet transform
In this paper, we firstly propose an effective audio scrambling method based on the pre-order traversal of a complete binary tree in time domain. The proposed method is fast, simple and has good scrambling effect. Then, with the aim of strengthening the anti-decryption capability, we present a wavelet-domain based scheme by considering not only the pre-order but also the in-/post-order based scrambling methods. First, an audio signal is wavelet-decomposed and retrieves the layers of wavelet coefficients. Then, the coefficients in each layer are scrambled by randomly chosen one out of the three methods. Anyone without knowledge of the correct wavelet decomposition parameters and the scrambling method used for each layer will never be able to descramble the signal successfully. Moreover, the new scheme also achieves progressive scrambling that enables to generate the audio outputs with different quality levels by controlling the scrambling degree as required.
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