Exposing digital audio forgeries in time domain by using singularity analysis with wavelets

Jiaorong Chen, Shijun Xiang, Weiping Liu, Hongbin Huang
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引用次数: 12

Abstract

Exposing digital audio forgeries in time domain is a significant research issue in the audio forensics community. In this paper, we develop an audio forensics method to detect and locate audio forgeries in time domain (including deletion, insertion, substitution and splicing) by analyzing singularity points of audio signals after performing discrete wavelet packet decomposition. Firstly, we observe and point out that a forgery operation in time domain will often generate a singularity point because the correlation property of those samples close to the tampering position has been degraded. Furthermore, we investigate and find that the singularity point resulted from a tampering operation often stays alone while those inherent singularity points in the original signal usually staying in the form of group. Finally, we propose an approach to expose audio forgeries in time domain by introducing Mallat et al.'s wavelet singularity analysis method and making a difference between a forged point and the inherent singularity points. Extensive experimental results have shown that the proposed scheme can better identify whether a given speech file has been tampered (e.g., part of the content deleted or replaced) previously and further locate the forged positions in time domain.
利用小波奇异性分析在时域上揭露数字音频伪造
在时域上暴露数字音频伪造是音频取证界的一个重要研究课题。在本文中,我们开发了一种音频取证方法,通过分析音频信号在进行离散小波包分解后的奇异点,在时域(包括删除,插入,替换和拼接)检测和定位音频伪造。首先,我们观察并指出,在时域中,由于篡改位置附近的样本的相关性下降,伪造操作往往会产生一个奇异点。进一步研究发现,由于篡改操作而产生的奇异点往往是单独存在的,而原始信号中固有的奇异点通常以群的形式存在。最后,通过引入Mallat等人的小波奇异点分析方法,并在伪造点和固有奇异点之间进行区分,提出了一种在时域上暴露音频伪造的方法。大量的实验结果表明,该方案可以更好地识别给定语音文件之前是否被篡改(例如,部分内容被删除或替换),并进一步在时域上定位伪造位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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