2D signal estimation for sparse distributed target photon counting data

Hayman, M., Stillwell, R. A., Carnes, J., Kirchhoff, G. J., Spuler, S. M., et al. (2024). 2D signal estimation for sparse distributed target photon counting data. Scientific Reports, doi:https://doi.org/10.1038/s41598-024-60464-1

Title 2D signal estimation for sparse distributed target photon counting data
Genre Article
Author(s) Matthew Hayman, Robert A. Stillwell, Joshua Carnes, G. J. Kirchhoff, Scott M. Spuler, J. P. Thayer
Abstract In this study, we explore the utilization of penalized likelihood estimation for the analysis of sparse photon counting data obtained from distributed target lidar systems. Specifically, we adapt the Poisson Total Variation processing technique to cater to this application. By assuming a Poisson noise model for the photon count observations, our approach yields denoised estimates of backscatter photon flux and related parameters. This facilitates the processing of raw photon counting signals with exceptionally high temporal and range resolutions (demonstrated here to 50 Hz and 75 cm resolutions), including data acquired through time-correlated single photon counting, without significant sacrifice of resolution. Through examination involving both simulated and real-world 2D atmospheric data, our method consistently demonstrates superior accuracy in signal recovery compared to the conventional histogram-based approach commonly employed in distributed target lidar applications.
Publication Title Scientific Reports
Publication Date May 6, 2024
Publisher's Version of Record https://doi.org/10.1038/s41598-024-60464-1
OpenSky Citable URL https://n2t.org/ark:/85065/d7zs31r5
OpenSky Listing View on OpenSky
EOL Affiliations RSF, RAF, INSTTECH

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