Object Depth Profile and Reflectivity Restoration from Sparse Single-Photon Data Acquired in Underwater Environments
Abderrahim Halimi, Aurora Maccarone, Aongus McCarthy, Steve, McLaughlin, Gerald S. Buller

TL;DR
This paper introduces two algorithms for joint depth and reflectivity restoration from sparse single-photon data in underwater environments, addressing low photon counts and high attenuation, with one method optimized for faster computation.
Contribution
The paper proposes a Bayesian framework with MRF priors and develops two algorithms, one using MCMC and the other a faster coordinate descent, for improved underwater depth and reflectivity imaging.
Findings
Enhanced depth and reflectivity image quality in underwater data
MCMC algorithm provides accurate estimations but is computationally intensive
Coordinate descent algorithm offers a faster alternative with good results
Abstract
This paper presents two new algorithms for the joint restoration of depth and reflectivity (DR) images constructed from time-correlated single-photon counting (TCSPC) measurements. Two extreme cases are considered: (i) a reduced acquisition time that leads to very low photon counts and (ii) a highly attenuating environment (such as a turbid medium) which makes the reflectivity estimation more difficult at increasing range. Adopting a Bayesian approach, the Poisson distributed observations are combined with prior distributions about the parameters of interest, to build the joint posterior distribution. More precisely, two Markov random field (MRF) priors enforcing spatial correlations are assigned to the DR images. Under some justified assumptions, the restoration problem (regularized likelihood) reduces to a convex formulation with respect to each of the parameters of interest. This…
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