音频伪造检测技术:现在和过去的回顾

Prabhu R. Bevinamarad, M.S. Shirldonkar
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引用次数: 13

摘要

低成本数字录音机,移动应用程序的增加以及基于音频的物联网(IoT)的加速增长使得获取语音和音频数据变得容易,这些数据将在以后用于识别人类特征,实施语音认证系统和基于语音的嵌入式系统的开发。另一方面,免费的高级移动应用程序和音频编辑软件的可用性,如Adobe, Audition CC等,使人们能够轻松地编辑音频记录数据的有意义的内容,以便从电子服务中受益,或在法庭上以数字证据的目的制作它。也许,大多数人这样做是为了好玩,也有隐藏现实的强烈意图。此外,由于过程昂贵,现实生活中捕获的音频记录不包含用于身份验证的数字水印和签名内容。因此,近年来的研究重点是开发针对复制-移动和音频拼接伪造的有源音频伪造检测技术,对其真伪进行鉴定和验证。本文重点介绍了音频复制-移动和音频拼接伪造技术的发展现状。本文还概述了音频伪造,其分类,使用的各种后处理操作以及用于基准测试的伪造样本准备的可用音频数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Audio Forgery Detection Techniques: Present and Past Review
The increase in low cost digital audio recorders, mobile applications and accelerating growth of the audio-based Internet of Things (IoT) has initiated ease in obtaining speech and audio data which will be later used for the purpose of identifying human traits, implementing voice authentication system and development of voice based embedded systems. On the other hand, the availability of free advanced mobile applications and audio editing software like Adobe, Audition CC, etc. enabling people to edit easily the meaningful content of audio recordings data for getting benefit from e-services or producing it in a courtroom for the purpose digital proof. Perhaps, most of the people do it for fun as well as the strong intention of hiding reality present. Moreover, the audio recording captured in a real-life today does not contain digital watermarking and signature content for authentication because of expensive procedure. Therefore, in recent years the researches focused more on developing active audio forgery detection techniques for copy-move and audio splicing forgeries to authenticate and verify for its genuineness. In this paper, put an effort to describe past and present developments in audio copy-move and audio splicing forgery techniques. The paper also presents an overview of audio forgeries, its classification, various post-processing operations used and available audio dataset for forgery sample preparation for benchmark testing.
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