SPLGSDASMLDec 18, 2019

Location Forensics Analysis Using ENF Sequences Extracted from Power and Audio Recordings

arXiv:1912.09428v14 citations
Originality Incremental advance
AI Analysis

This work addresses location forensics for multimedia signals, providing a method to verify recording origins, but it appears incremental as it builds on existing ENF analysis techniques.

The paper tackled the problem of localizing multimedia recordings by analyzing electrical network frequency (ENF) sequences extracted from power and audio recordings, using a multi-class SVM classification model to validate location authenticity with affirmed efficacy.

Electrical network frequency (ENF) is the signature of a power distribution grid which represents the nominal frequency (50 or 60 Hz) of a power system network. Due to load variations in a power grid, ENF sequences experience fluctuations. These ENF variations are inherently located in a multimedia signal which is recorded close to the grid or directly from the mains power line. Therefore, a multimedia recording can be localized by analyzing the ENF sequences of that signal in absence of the concurrent power signal. In this paper, a novel approach to analyze location forensics using ENF sequences extracted from a number of power and audio recordings is proposed. The digital recordings are collected from different grid locations around the world. Potential feature components are determined from the ENF sequences. Then, a multi-class support vector machine (SVM) classification model is developed to validate the location authenticity of the recordings. The performance assessments affirm the efficacy of the presented work.

Foundations

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