Preserving Texture Boundaries for SAR Sea Ice Segmentation

Texture analysis has been used extensively in the computer-assisted interpretation of SAR sea ice imagery. Provision of maps which distinguish relevant ice types is significant for monitoring global warming and ship navigation. Due to the abundance of SAR imagery available, there exists a need...

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Main Author: Jobanputra, Rishi
Format: Others
Language:en
Published: University of Waterloo 2006
Subjects:
Online Access:http://hdl.handle.net/10012/913
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spelling ndltd-WATERLOO-oai-uwspace.uwaterloo.ca-10012-9132013-01-08T18:49:01ZJobanputra, Rishi2006-08-22T13:55:23Z2006-08-22T13:55:23Z20042004http://hdl.handle.net/10012/913Texture analysis has been used extensively in the computer-assisted interpretation of SAR sea ice imagery. Provision of maps which distinguish relevant ice types is significant for monitoring global warming and ship navigation. Due to the abundance of SAR imagery available, there exists a need to develop an automated approach for SAR sea ice interpretation. Grey level co-occurrence probability (<i>GLCP</i>) texture features are very popular for SAR sea ice classification. Although these features are used extensively in the literature, they have a tendency to erode and misclassify texture boundaries. Proposed is an advancement to the <i>GLCP</i> method which will preserve texture boundaries during image segmentation. This method exploits the relationship a pixel has with its closest neighbors and weights the texture measurement accordingly. These texture features are referred to as <i>WGLCP</i> (weighted <i>GLCP</i>) texture features. In this research, the <i>WGLCP</i> and <i>GLCP</i> feature sets are compared in terms of boundary preservation, unsupervised segmentation ability, robustness to increasing boundary density and computation time. The <i>WGLCP</i> method outperforms the <i>GLCP</i> method in all aspects except for computation time, where it suffers. From the comparative analysis, an inconsistency with the <i>GLCP</i> correlation statistic was observed, which motivated an investigative study into using this statistic for image segmentation. As the overall goal of the thesis is to improve SAR sea ice segmentation accuracy, the concepts developed from the study are applied to the image segmentation problem. The results indicate that for images with high contrast boundaries, the <i>GLCP</i> correlation statistical feature decreases segmentation accuracy. When comparing <i>WGLCP</i> and <i>GLCP</i> features for segmentation, the <i>WGLCP</i> features provide higher segmentation accuracy.application/pdf26191689 bytesapplication/pdfenUniversity of WaterlooCopyright: 2004, Jobanputra, Rishi. All rights reserved.Systems DesignGrey level co-occurrence probabilitiestexture analysisimage segmentationSAR sea icetexture featuresPreserving Texture Boundaries for SAR Sea Ice SegmentationThesis or DissertationSystems Design EngineeringMaster of Applied Science
collection NDLTD
language en
format Others
sources NDLTD
topic Systems Design
Grey level co-occurrence probabilities
texture analysis
image segmentation
SAR sea ice
texture features
spellingShingle Systems Design
Grey level co-occurrence probabilities
texture analysis
image segmentation
SAR sea ice
texture features
Jobanputra, Rishi
Preserving Texture Boundaries for SAR Sea Ice Segmentation
description Texture analysis has been used extensively in the computer-assisted interpretation of SAR sea ice imagery. Provision of maps which distinguish relevant ice types is significant for monitoring global warming and ship navigation. Due to the abundance of SAR imagery available, there exists a need to develop an automated approach for SAR sea ice interpretation. Grey level co-occurrence probability (<i>GLCP</i>) texture features are very popular for SAR sea ice classification. Although these features are used extensively in the literature, they have a tendency to erode and misclassify texture boundaries. Proposed is an advancement to the <i>GLCP</i> method which will preserve texture boundaries during image segmentation. This method exploits the relationship a pixel has with its closest neighbors and weights the texture measurement accordingly. These texture features are referred to as <i>WGLCP</i> (weighted <i>GLCP</i>) texture features. In this research, the <i>WGLCP</i> and <i>GLCP</i> feature sets are compared in terms of boundary preservation, unsupervised segmentation ability, robustness to increasing boundary density and computation time. The <i>WGLCP</i> method outperforms the <i>GLCP</i> method in all aspects except for computation time, where it suffers. From the comparative analysis, an inconsistency with the <i>GLCP</i> correlation statistic was observed, which motivated an investigative study into using this statistic for image segmentation. As the overall goal of the thesis is to improve SAR sea ice segmentation accuracy, the concepts developed from the study are applied to the image segmentation problem. The results indicate that for images with high contrast boundaries, the <i>GLCP</i> correlation statistical feature decreases segmentation accuracy. When comparing <i>WGLCP</i> and <i>GLCP</i> features for segmentation, the <i>WGLCP</i> features provide higher segmentation accuracy.
author Jobanputra, Rishi
author_facet Jobanputra, Rishi
author_sort Jobanputra, Rishi
title Preserving Texture Boundaries for SAR Sea Ice Segmentation
title_short Preserving Texture Boundaries for SAR Sea Ice Segmentation
title_full Preserving Texture Boundaries for SAR Sea Ice Segmentation
title_fullStr Preserving Texture Boundaries for SAR Sea Ice Segmentation
title_full_unstemmed Preserving Texture Boundaries for SAR Sea Ice Segmentation
title_sort preserving texture boundaries for sar sea ice segmentation
publisher University of Waterloo
publishDate 2006
url http://hdl.handle.net/10012/913
work_keys_str_mv AT jobanputrarishi preservingtextureboundariesforsarseaicesegmentation
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