Multi-stage processing for effective segmentation of SAR sea ice images

Remote Sensing and Earth Observation became a reality, ever since the launch of NASA's first satellite; Landsat-1 in 1972. Subsequently, numerous other satellites were launched such as the TerraSAR, Sentinel-1 etc, which made possible to acquire High-Resolution imagery of remote areas such as t...

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Main Author: Sakhalkar, Soumitra
Format: Master Thesis
Language:unknown
Published: 2018
Subjects:
Online Access:https://doi.org/10.48730/6tb3-xs19
https://stax.strath.ac.uk/concern/theses/5d86p025z
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spelling ftunsthclydestax:oai:strathclyde:5d86p025z 2024-09-15T18:35:07+00:00 Multi-stage processing for effective segmentation of SAR sea ice images Sakhalkar, Soumitra 2018 https://doi.org/10.48730/6tb3-xs19 https://stax.strath.ac.uk/concern/theses/5d86p025z unknown https://stax.strath.ac.uk/downloads/44558d705 T15084 https://stax.strath.ac.uk/thesis_copyright_statement/ http://purl.org/coar/resource_type/c_bdcc 2018 ftunsthclydestax https://doi.org/10.48730/6tb3-xs19 2024-08-05T14:24:46Z Remote Sensing and Earth Observation became a reality, ever since the launch of NASA's first satellite; Landsat-1 in 1972. Subsequently, numerous other satellites were launched such as the TerraSAR, Sentinel-1 etc, which made possible to acquire High-Resolution imagery of remote areas such as the Arctic region. Consequently, with the accessibility to such large amounts of data, it becomes necessary to develop fast, robust and automated image segmentation algorithms to extract key information as opposed to still relying on time consuming manual expert analysis.;As a result, in this thesis, effective algorithms are proposed for efficiently segmenting and extracting information from the Synthetic Aperture Radar (SAR) Sea Ice imagery.;Initially, the contributions for improving the quality of the SAR images itself are introduced. Inspired by the advantages of the Adaptive Median filter (AMF) and the Wiener filter, the Modified Adaptive Median filter (MAMF) is proposed. The MAMF uses local image statistics to identify speckle regions and the Minimum Mean Square Error (MMSE) estimator to suppress speckle. The MAMF is applied to various image types, to test its efficiency and robustness and subsequently compared with other existing techniques such as the Bilateral and Local Sigma filters.;Furthermore, additional region-based filtering is suggested, which is based on user-defined threshold values for the quantitative parameters used to determine the performance of the filter.;Another important part of extracting key information from the SAR Sea Ice imagery is "Segmentation". A Region and Condition based post processing is proposed for the established algorithm, Kernel Graph Cuts (KGC), for acquiring further improved segmentation results. The post processing incorporates algorithms such as Skeletonisation, Morphology and Active Contours. The proposed algorithm is compared against existing techniques such as the Closeness Degree Cut (CDCut) and Level Sets with Distance Regularisation (DRLSE).;Furthermore, a novel ... Master Thesis Sea ice University of Strathclyde Glasgow: STAX
institution Open Polar
collection University of Strathclyde Glasgow: STAX
op_collection_id ftunsthclydestax
language unknown
description Remote Sensing and Earth Observation became a reality, ever since the launch of NASA's first satellite; Landsat-1 in 1972. Subsequently, numerous other satellites were launched such as the TerraSAR, Sentinel-1 etc, which made possible to acquire High-Resolution imagery of remote areas such as the Arctic region. Consequently, with the accessibility to such large amounts of data, it becomes necessary to develop fast, robust and automated image segmentation algorithms to extract key information as opposed to still relying on time consuming manual expert analysis.;As a result, in this thesis, effective algorithms are proposed for efficiently segmenting and extracting information from the Synthetic Aperture Radar (SAR) Sea Ice imagery.;Initially, the contributions for improving the quality of the SAR images itself are introduced. Inspired by the advantages of the Adaptive Median filter (AMF) and the Wiener filter, the Modified Adaptive Median filter (MAMF) is proposed. The MAMF uses local image statistics to identify speckle regions and the Minimum Mean Square Error (MMSE) estimator to suppress speckle. The MAMF is applied to various image types, to test its efficiency and robustness and subsequently compared with other existing techniques such as the Bilateral and Local Sigma filters.;Furthermore, additional region-based filtering is suggested, which is based on user-defined threshold values for the quantitative parameters used to determine the performance of the filter.;Another important part of extracting key information from the SAR Sea Ice imagery is "Segmentation". A Region and Condition based post processing is proposed for the established algorithm, Kernel Graph Cuts (KGC), for acquiring further improved segmentation results. The post processing incorporates algorithms such as Skeletonisation, Morphology and Active Contours. The proposed algorithm is compared against existing techniques such as the Closeness Degree Cut (CDCut) and Level Sets with Distance Regularisation (DRLSE).;Furthermore, a novel ...
format Master Thesis
author Sakhalkar, Soumitra
spellingShingle Sakhalkar, Soumitra
Multi-stage processing for effective segmentation of SAR sea ice images
author_facet Sakhalkar, Soumitra
author_sort Sakhalkar, Soumitra
title Multi-stage processing for effective segmentation of SAR sea ice images
title_short Multi-stage processing for effective segmentation of SAR sea ice images
title_full Multi-stage processing for effective segmentation of SAR sea ice images
title_fullStr Multi-stage processing for effective segmentation of SAR sea ice images
title_full_unstemmed Multi-stage processing for effective segmentation of SAR sea ice images
title_sort multi-stage processing for effective segmentation of sar sea ice images
publishDate 2018
url https://doi.org/10.48730/6tb3-xs19
https://stax.strath.ac.uk/concern/theses/5d86p025z
genre Sea ice
genre_facet Sea ice
op_relation https://stax.strath.ac.uk/downloads/44558d705
T15084
op_rights https://stax.strath.ac.uk/thesis_copyright_statement/
op_doi https://doi.org/10.48730/6tb3-xs19
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