Probabilistic programming methods for reconstruction of multichannel imaging detector events: ELVES and TRACK
S.A. Sharakin, R.E. Saraev

TL;DR
This paper introduces probabilistic programming techniques for reconstructing multichannel imaging detector events, enabling detailed analysis of transient atmospheric phenomena and celestial events without data factorization.
Contribution
The paper presents a novel probabilistic modeling approach using Bayesian inference for reconstructing complex multichannel detector data, demonstrated on both simulated and real-world examples.
Findings
Successful reconstruction of lightning and aurora events using Bayesian methods.
Application of probabilistic models to satellite and ground-based detector data.
Potential for extending methods to stereo and cosmic ray detection.
Abstract
This paper proposes new methods for analyzing dynamic images registered by multichannel, highly sensitive detectors with low spatial but high temporal resolution. The principal characteristic of the approach is the absence of factorization of different types of information within the data set. For a number of rapidly changing (transient) phenomena in the Earth's atmosphere, a probabilistic model can be formulated, and the parameters of this model can be reconstructed using probabilistic programming methods (Bayesian inference based on Markov chain Monte Carlo). This paper demonstrates the aforementioned approach on a number of examples, both simulated and actually registered by the detectors of the SINP MSU. In the case of submillisecond ELVES events registered by the orbital Mini-EUSO detector on board the ISS, the probabilistic model includes the coordinates and orientation of the…
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Taxonomy
TopicsMedical Imaging Techniques and Applications
