Application of computer intensive data analysis methods to the analysis of digital images and spatial data

Computer-intensive methods for data analysis in a traditional setting has developed rapidly in the last decade. The application of and adaption of some of these methods to the analysis of multivariate digital images and spatial data are explored, evaluated and compared to well established classical...

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Main Author: Windfeld, Kristian
Format: Book
Language:English
Published: 1992
Subjects:
Online Access:https://orbit.dtu.dk/en/publications/ad0095cf-f87d-4c4c-b5a0-953e6b5b91a7
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spelling ftdtupubl:oai:pure.atira.dk:publications/ad0095cf-f87d-4c4c-b5a0-953e6b5b91a7 2023-05-15T16:30:15+02:00 Application of computer intensive data analysis methods to the analysis of digital images and spatial data Windfeld, Kristian 1992 https://orbit.dtu.dk/en/publications/ad0095cf-f87d-4c4c-b5a0-953e6b5b91a7 eng eng info:eu-repo/semantics/restrictedAccess Windfeld , K 1992 , Application of computer intensive data analysis methods to the analysis of digital images and spatial data . IMSOR-PHD-1992-62 , no. 1992-62 . book 1992 ftdtupubl 2022-08-14T07:59:19Z Computer-intensive methods for data analysis in a traditional setting has developed rapidly in the last decade. The application of and adaption of some of these methods to the analysis of multivariate digital images and spatial data are explored, evaluated and compared to well established classical linear methods. Different strategies for selecting projections (linear combinations) of multivariate images are presented. An exploratory, iterative method for finding interesting projections originated in data analysis is compared to principal components. A method for introducing spatial context into the projection pursuit is presented. Examples from remote sensing are given. The ACE algorithm for computing non-linear transformations for maximizing correlation is extended and applied to obtain a non-linear transformation that maximizes autocorrelation or 'signal' in a multivariate image. This is a generalization of the minimum /maximum autocorrelation factors (MAF's) which is a linear method. The non-linear method is compared to the linear method when analyzing a multivariate TM image from Greenland. The ACE method is shown to give a more detailed decomposition of the image than the MAF-transformation and there is a good agreement between the ACEMAF's and geological structures known in the area studied. Geological units are easily recognized even at macro scale, implying potential use in geological mapping. Also the ACE algorithm is modified to finding transformations that minimize correlation which is of interest in change detection studies from two different images of the same area recorded at different time points. An example is given using a TM summer scene and a TM winter scene of an area in Spain. The non-parametric CART classification method is integrated with traditional geostatistical methods in computing structural images for heavy minerals based on irregularly sampled geochemical data. This methodology has proven useful in producing images that reflect real geological structures with potential application ... Book Greenland Technical University of Denmark: DTU Orbit Greenland
institution Open Polar
collection Technical University of Denmark: DTU Orbit
op_collection_id ftdtupubl
language English
description Computer-intensive methods for data analysis in a traditional setting has developed rapidly in the last decade. The application of and adaption of some of these methods to the analysis of multivariate digital images and spatial data are explored, evaluated and compared to well established classical linear methods. Different strategies for selecting projections (linear combinations) of multivariate images are presented. An exploratory, iterative method for finding interesting projections originated in data analysis is compared to principal components. A method for introducing spatial context into the projection pursuit is presented. Examples from remote sensing are given. The ACE algorithm for computing non-linear transformations for maximizing correlation is extended and applied to obtain a non-linear transformation that maximizes autocorrelation or 'signal' in a multivariate image. This is a generalization of the minimum /maximum autocorrelation factors (MAF's) which is a linear method. The non-linear method is compared to the linear method when analyzing a multivariate TM image from Greenland. The ACE method is shown to give a more detailed decomposition of the image than the MAF-transformation and there is a good agreement between the ACEMAF's and geological structures known in the area studied. Geological units are easily recognized even at macro scale, implying potential use in geological mapping. Also the ACE algorithm is modified to finding transformations that minimize correlation which is of interest in change detection studies from two different images of the same area recorded at different time points. An example is given using a TM summer scene and a TM winter scene of an area in Spain. The non-parametric CART classification method is integrated with traditional geostatistical methods in computing structural images for heavy minerals based on irregularly sampled geochemical data. This methodology has proven useful in producing images that reflect real geological structures with potential application ...
format Book
author Windfeld, Kristian
spellingShingle Windfeld, Kristian
Application of computer intensive data analysis methods to the analysis of digital images and spatial data
author_facet Windfeld, Kristian
author_sort Windfeld, Kristian
title Application of computer intensive data analysis methods to the analysis of digital images and spatial data
title_short Application of computer intensive data analysis methods to the analysis of digital images and spatial data
title_full Application of computer intensive data analysis methods to the analysis of digital images and spatial data
title_fullStr Application of computer intensive data analysis methods to the analysis of digital images and spatial data
title_full_unstemmed Application of computer intensive data analysis methods to the analysis of digital images and spatial data
title_sort application of computer intensive data analysis methods to the analysis of digital images and spatial data
publishDate 1992
url https://orbit.dtu.dk/en/publications/ad0095cf-f87d-4c4c-b5a0-953e6b5b91a7
geographic Greenland
geographic_facet Greenland
genre Greenland
genre_facet Greenland
op_source Windfeld , K 1992 , Application of computer intensive data analysis methods to the analysis of digital images and spatial data . IMSOR-PHD-1992-62 , no. 1992-62 .
op_rights info:eu-repo/semantics/restrictedAccess
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