从重新压缩的音频记录中识别手机

Vinay Verma, Preet Khaturia, N. Khanna
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引用次数: 5

摘要

许多音频取证应用将受益于根据原始设备的特征对录音进行分类的能力,特别是在每天发布大量数据的社交媒体平台上。本文利用与录音设备相关的被动签名,在没有任何外部安全机制(如数字水印)的情况下,从录制的音频中提取与录音设备相关的被动签名,来识别录制音频的源手机。它使用存在于录制音频的低频和高频区域的设备特定信息。在该领域唯一公开可用的数据集MOBIPHONE上,所提出的系统给出了97.2%的封闭集精度,与该数据集报告的最新精度相匹配。对于经过双重压缩的音频记录,如通常发生在社交媒体上的录音,所提出的系统优于现有的方法(平均准确率提高4%)。
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Cell-Phone Identification from Recompressed Audio Recordings
Many audio forensic applications would benefit from the ability to classify audio recordings, based on characteristics of the originating device, particularly in social media platforms where an enormous amount of data is posted every day. This paper utilizes passive signatures associated with the recording devices, as extracted from recorded audio itself, in the absence of any extrinsic security mechanism such as digital watermarking, to identify the source cell-phone of recorded audio. It uses device-specific information present in low as well as high-frequency regions of the recorded audio. On the only publicly available dataset in this field, MOBIPHONE, the proposed system gives a closed set accuracy of 97.2 % which matches the state of art accuracy reported for this dataset. On audio recordings which have undergone double compression, as typically happens for a recording posted on social media, the proposed system outperforms the existing methods (4% improvement in average accuracy).
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