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Location Identification Using Power and Audio Data Based on Temporal Variation of Electric Network Frequency and Its Harmonics

机译:基于电网频率的时间变化及其谐波的电源和音频数据使用电源和音频数据的位置识别

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During the past decade electric network frequency(ENF) is being exploited in forensic research. In this paper, spatio-temporal variation of the electric network frequency which is the supply frequency of a power distribution line (50 or 60 Hz), is efficiently utilized to develop an authentic region-of-recording identification scheme. The ENF data extracted from power grids vary with respect to time-stamp and location-stamp because of load fluctuations in different locations. These ENF variations hold some recognizable patterns of a specific grid. In the proposed work, a precise method of ENF detection from the raw power and audio signals is presented based on Root MUSIC algorithm. Moreover, various spectro-temporal features are extracted from the extracted ENF and its harmonics. Finally a set of features is proposed to utilize in multi-stage supervised classification scheme with a binary support vector machine classifier. The classification performance is tested on power and audio data collected from nine grids corresponding to different countries and a very satisfactory classification performance is obtained.
机译:在过去的十年期间,电网频率(ENF)正在被利用在法医研究中。本文有效地利用了作为配电线路(50或60Hz)的电源频率的电网频率的时空变化,以开发出现真实的记录区域识别方案。由于不同位置的负载波动,从电网中提取的ENF数据相对于时间戳和位置标记而变化。这些ENF变化保持了特定网格的一些可识别模式。在所提出的工作中,基于根部音乐算法,提出了一种从原始电源和音频信号的ENF检测的精确方法。此外,从提取的ENF提取各种光谱 - 时间特征及其谐波。最后提出了一组特征来利用具有二进制支持向量机分类器的多级监督分类方案。对从与不同国家的九个网格收集的电源和音频数据测试分类性能,并获得了非常令人满意的分类性能。

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