Feature extraction from millimetre wave radar images

This thesis describes research performed into the segmentation and classification of features on images of wound terrain generated from an airborne millimetre wave radar. The principles of operation of the radar are established and it is shown how an image is produced from this particular radar. The...

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Main Author: Jolly, Alistair Duncan
Published: University of Central Lancashire 1992
Subjects:
Online Access:https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.721699
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spelling ndltd-bl.uk-oai-ethos.bl.uk-7216992019-01-29T03:27:40ZFeature extraction from millimetre wave radar imagesJolly, Alistair Duncan1992This thesis describes research performed into the segmentation and classification of features on images of wound terrain generated from an airborne millimetre wave radar. The principles of operation of the radar are established and it is shown how an image is produced from this particular radar. The parameters such as wavelength, antenna size and pulse length are related to the images and a mathematical description of the radar data is given. The effectiveness of established image processing techniques is reviewed when applied to millimetre wave radar images and a statistical classification technique is seen to yield encouraging results. This method of segmentation and classification is then extended to make optimal use of the available information from the radar. An orthogonal expansion of the Poincaré sphere representation of polarised radiation is established and it is shown how different terrain types cluster in the eigenspace of these spherical harmonics. Segmentation then follows from the clustering properties of pixels within this multidimensional eigenspace and classification from the locations of the clusters.621.384Marine radarUniversity of Central Lancashirehttps://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.721699http://clok.uclan.ac.uk/19034/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 621.384
Marine radar
spellingShingle 621.384
Marine radar
Jolly, Alistair Duncan
Feature extraction from millimetre wave radar images
description This thesis describes research performed into the segmentation and classification of features on images of wound terrain generated from an airborne millimetre wave radar. The principles of operation of the radar are established and it is shown how an image is produced from this particular radar. The parameters such as wavelength, antenna size and pulse length are related to the images and a mathematical description of the radar data is given. The effectiveness of established image processing techniques is reviewed when applied to millimetre wave radar images and a statistical classification technique is seen to yield encouraging results. This method of segmentation and classification is then extended to make optimal use of the available information from the radar. An orthogonal expansion of the Poincaré sphere representation of polarised radiation is established and it is shown how different terrain types cluster in the eigenspace of these spherical harmonics. Segmentation then follows from the clustering properties of pixels within this multidimensional eigenspace and classification from the locations of the clusters.
author Jolly, Alistair Duncan
author_facet Jolly, Alistair Duncan
author_sort Jolly, Alistair Duncan
title Feature extraction from millimetre wave radar images
title_short Feature extraction from millimetre wave radar images
title_full Feature extraction from millimetre wave radar images
title_fullStr Feature extraction from millimetre wave radar images
title_full_unstemmed Feature extraction from millimetre wave radar images
title_sort feature extraction from millimetre wave radar images
publisher University of Central Lancashire
publishDate 1992
url https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.721699
work_keys_str_mv AT jollyalistairduncan featureextractionfrommillimetrewaveradarimages
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