Title :
A Bayesian classification model for sea ice roughness from scatterometer data
Author :
Similä, Markku ; Arjas, Elja ; Mäkynen, Marko ; Hallikainen, Martti T.
Author_Institution :
Finnish Inst. of Marine Res., Helsinki, Finland
fDate :
7/1/2001 12:00:00 AM
Abstract :
For sea ice in the Baltic Sea, surface scattering can be regarded as the dominant scattering mechanism at C-band. In this paper, a new statistical method is introduced for making statistical inferences about the underlying ice surface roughness on the basis of one-dimensional (1D) scatterometer data y. The central parameter in the hierarchical model applied in the context is a mixture parameter p, which indicates the degree of surface roughness in ice surface. Several questions related to the occurrence of different ice classes on a transect can be solved with the aid of the posterior distribution [p|y]. An empirical approximation for the posterior distribution is computed by using Markov Chain Monte Carlo methodology. The efficiency of the suggested approach is investigated by analyzing a C-band HH-polarization helicopter-borne HUTSCAT scatterometer data. The results provided by the statistical model show good agreement with a video-based ice type classification
Keywords :
Bayes methods; oceanographic techniques; radar cross-sections; radar theory; remote sensing by radar; sea ice; surface topography measurement; Baltic Sea; Bayes method; Bayesian classification model; C-band; HH-polarization; Markov Chain Monte Carlo method; empirical approximation; hierarchical model; measurement technique; ocean; one-dimensional data; posterior distribution; radar remote sensing; radar scatterometry; roughness; sea ice; statistical inference; statistical method; statistical model; surface scattering; Bayesian methods; Context modeling; Ice surface; Radar measurements; Rough surfaces; Scattering; Sea ice; Sea surface; Statistical analysis; Surface roughness;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on