Spectral possibility distribution of closed connected water and remote
sensing statistical inference for lacustrine yellow substance
Abstract
The traditional ocean color remote sensing usually focuses on using
optical inversion models to estimate the properties of in-water
components from the above-surface spectra, so we call it the
spectrum-concentration (SC) scheme. Unlike the SC scheme, this study
proposed a new research scheme, distribution-distribution (DD) scheme,
which uses statistical inference models to estimate the possibility
distribution of these in-water components, based on the possibility
distribution of the observed spectra. The DD scheme has the advantages
that (1) it can rapidly give the key and overview information of the
interest water, instead of using the SC scheme to compute each image
pixel, (2) it can assist the SC scheme to improve their models and
parameters, and (3) it can provide more valuable information for better
understanding and indicating the features and dynamics of aquatic
environment. In this study, based on Landsat-8 images, we analyzed the
spectral possibility distributions (SPD) of 688 global water and found
many of them were normal, lognormal, and exponential distributions, but
with diverse patterns in distribution parameters such as the mean,
standard deviation, skewness and kurtosis. Furthermore, we used
Monte-Carlo and Hydrolight simulations to study the theoretical and
statistical connections between the possibility distributions of
in-water components and SPDs. The simulation results were basically
consistent with the observations on the real water. Then by using the
simulation and field measured data, we proposed a bootstrap-based DD
scheme and developed some simple statistical inference models to
estimate the distribution parameters of yellow substance in lakes. Since
DD scheme is still on its early stage, we also suggested some potential
and useful topics for the future work.