Improving location of recording classification using Electric Network Frequency (ENF) analysis

Zeljana Saric, Anastazia Žunić, Tijana Zrnic, Milivoje Knezevic, Danica Despotovic, Tijana Delic
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引用次数: 4

Abstract

Recently the Electric Network Frequency (ENF), one of the main traits of a power grid, had become increasingly popular in forensics since it is considered as a signature in multimedia recordings. By analyzing the ENF, it is possible to determine the time and location of a recording. In this paper, the ENF signals were classified using five different machine learning algorithms in order to detect the region of the origin of the ENF signals extracted from power and audio recordings coming from 10 different electric networks. Three sets of novel signal features are introduced and compared with the ones previously discussed in the literature. The improvement in the classification accuracy when a combination of the referent and novel feature sets was used ranges from 3% to 19% for the ENF signals extracted from power and audio recordings, respectively. Finally, the classifier with the highest achieved average accuracy was found to be Random Forest.
利用网络频率(ENF)分析改进录音分类的定位
电力网频率(ENF)作为电网的主要特征之一,被认为是多媒体记录的一个特征,近年来在取证中越来越受欢迎。通过分析ENF,可以确定录音的时间和位置。在本文中,使用五种不同的机器学习算法对ENF信号进行分类,以检测从来自10个不同电网的电力和音频记录中提取的ENF信号的起源区域。介绍了三组新的信号特征,并与之前文献中讨论的特征进行了比较。当使用参考特征集和新特征集的组合时,从电源和音频记录中提取的ENF信号的分类准确率分别提高了3%到19%。最后,我们发现平均准确率最高的分类器是Random Forest。
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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