Toward Automated Identification of Sea Surface Temperature Front Signatures in Radarsat-2 Images

Author:

Jones Chris T.1,Sikora Todd D.2,Vachon Paris W.3,Wolfe John3

Affiliation:

1. Department of Mathematics and Statistics, Dalhousie University, Halifax, Nova Scotia, Canada

2. Department of Earth Sciences, Millersville University, Millersville, Pennsylvania

3. Defence R&D Canada—Ottawa, Ottawa, Ontario, Canada

Abstract

Abstract The Canadian Forces Meteorology and Oceanography Center produces a near-daily ocean feature analysis, based on sea surface temperature (SST) images collected by spaceborne radiometers, to keep the fleet informed of the location of tactically important ocean features. Ubiquitous cloud cover hampers these data. In this paper, a methodology for the identification of SST front signatures in cloud-independent synthetic aperture radar (SAR) images is described. Accurate identification of ocean features in SAR images, although attainable to an experienced analyst, is a difficult process to automate. As a first attempt, the authors aimed to discriminate between signatures of SST fronts and those caused by all other processes. Candidate SST front signatures were identified in Radarsat-2 images using a Canny edge detector. A feature vector of textural and contextual measures was constructed for each candidate edge, and edges were validated by comparison with coincident SST images. Each candidate was classified as being an SST front signature or the signature of another process using logistic regression. The resulting probability that a candidate was correctly classified as an SST front signature was between 0.50 and 0.70. The authors concluded that improvement in classification accuracy requires a set of measures that can differentiate between signatures of SST fronts and those of certain atmospheric phenomena and that a search for such measures should include a wider range of computational methods than was considered. As such, this work represents a step toward the goal of a general ocean feature classification algorithm.

Publisher

American Meteorological Society

Subject

Atmospheric Science,Ocean Engineering

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