Mixture Regression for Sea Ice Segmentation
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Date
2022-12-23
Authors
Manning, Max
Advisor
Clausi, David
Xu, Linlin
Xu, Linlin
Journal Title
Journal ISSN
Volume Title
Publisher
University of Waterloo
Abstract
The classification of sea ice in SAR imagery is complicated by statistical nonstationarity.
Incidence angle effects, heterogeneous ice conditions and other confounding variables contribute to spatial and temporal variability in the appearance of sea ice. I explore a family
of models called mixture regressions which address this issue by endowing mixture distributions with class-dependent trends. I introduce mixture regression as a general technique
for unsupervised clustering on nonstationary datasets and propose techniques to improve
its robustness in the presence of noise and outliers. I then develop region-based mixture
regression models for sea ice segmentation, focusing on the modeling of SAR backscatter
intensities under the influence of incidence angle effects. Experiments are conducted on
various extensions to the approach including the use of robust estimation to improve model
convergence, the incorporation of Markov random fields for contextual smoothing, and the
combination of mixture regression with supervised classifiers. Performance is evaluated
for ice-water classification on a set of dual-polarized RADARSAT-2 images taken over the
Beaufort Sea. Results show that mixture regression achieves accuracy of 92.8% in the
unsupervised setting and 97.5% when integrated with a supervised convolutional neural
network.
This work improves on existing techniques for sea ice segmentation which enable operational ice mapping and environmental monitoring applications. The presented techniques
may also be useful for the segmentation of nonstationary images obtained from other remote sensing techniques or in other domains such as medical imaging.
Description
Keywords
sea ice, image segmentation, nonstationary imagery, mixture models, mixture regression