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arxiv: 1509.05998 · v2 · pith:WXCX3YXPnew · submitted 2015-09-20 · ⚛️ physics.optics · physics.data-an· physics.ins-det

Gaussian mixture model for event recognition in optical time-domain reflectometry based sensing systems

classification ⚛️ physics.optics physics.data-anphysics.ins-det
keywords recognitionsignalsclasseseventsgaussianmixturemodeloptical
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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.

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