| Literature DB >> 27036840 |
A K Fedorov1, M N Anufriev1, A A Zhirnov1, K V Stepanov1, E T Nesterov1, D E Namiot2, V E Karasik1, A B Pnev1.
Abstract
We propose a novel approach to the recognition of particular classes of non-conventional events in signals from phase-sensitive optical time-domain-reflectometry-based sensors. Our algorithmic solution has two main features: filtering aimed at the de-nosing of signals and a Gaussian mixture model to cluster them. We test the proposed algorithm using experimentally measured signals. The results show that two classes of events can be distinguished with the best-case recognition probability close to 0.9 at sufficient numbers of training samples.Year: 2016 PMID: 27036840 DOI: 10.1063/1.4944417
Source DB: PubMed Journal: Rev Sci Instrum ISSN: 0034-6748 Impact factor: 1.523