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Identifying microphone from noisy recordings by using representative instance one class-classification approach

journal contribution
posted on 2012-06-01, 00:00 authored by Huy Quan Vu, Shaowu Liu, X Yang, Z Li, Yongli Ren
Rapid growth of technical developments has created huge challenges for microphone forensics - a sub-category of audio forensic science, because of the availability of numerous digital recording devices and massive amount of recording data. Demand for fast and efficient methods to assure integrity and authenticity of information is becoming more and more important in criminal investigation nowadays. Machine learning has emerged as an important technique to support audio analysis processes of microphone forensic practitioners. However, its application to real life situations using supervised learning is still facing great challenges due to expensiveness in collecting data and updating system. In this paper, we introduce a new machine learning approach which is called One-class Classification (OCC) to be applied to microphone forensics; we demonstrate its capability on a corpus of audio samples collected from several microphones. In addition, we propose a representative instance classification framework (RICF) that can effectively improve performance of OCC algorithms for recording signal with noise. Experiment results and analysis indicate that OCC has the potential to benefit microphone forensic practitioners in developing new tools and techniques for effective and efficient analysis.

History

Journal

Journal of networks

Volume

7

Issue

6

Pagination

908 - 917

Publisher

Academy Publisher

Location

Oulu, Finland

ISSN

1796-2056

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2012, Academy Publishers

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