Bayesian retrieval of optically relevant properties from hyperspectral water-leaving reflectances

Appl Opt. 2020 Aug 10;59(23):6902-6917. doi: 10.1364/AO.398043.

Abstract

Current methods to retrieve optically relevant properties from ocean color observations do not explicitly make use of prior knowledge about property distributions. Here we implement a simplified Bayesian approach that takes into account prior probability distributions on two sets of five optically relevant parameters, and conduct a retrieval of these parameters using hyperspectral simulated water-leaving reflectances. We focus specifically on the ability of the model to distinguish between two optically similar phytoplankton taxa, diatoms and Noctiluca scintillans. The inversion retrieval gives most-likely concentrations and uncertainty estimates, and we find that the model is able to probabilistically predict the occurrence of Noctiluca scintillans blooms using these metrics. We discuss how this method can be expanded to include a priori covariances between different parameters, and show the effect of varying measurement uncertainty and spectral resolution on Noctiluca scintillans bloom predictions.

MeSH terms

  • Algorithms
  • Bayes Theorem*
  • Diatoms*
  • Dinoflagellida* / growth & development
  • Eutrophication
  • Phytoplankton / classification
  • Probability
  • Remote Sensing Technology / methods
  • Scattering, Radiation*
  • Seawater*
  • Spectrum Analysis / methods
  • Sunlight*