METHODS FOR MONITORING THE DETECTION OF MULTI-TEMPORAL LAND USE CHANGE THROUGH THE CLASSIFICATION OF URBAN AREAS

Urban areas are complicated due to the mix of man-made features and natural features. A higher level of structural information plays an important role in land cover/use classification of urban areas. Additional spatial indicators have to be extracted based on structural analysis in order to understa...

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Main Authors: B. I. Alhaddad, M. C. Burns, J. Roca
Format: Article
Language:English
Published: Copernicus Publications 2011-08-01
Series:The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Online Access:http://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XXXVIII-4-C21/83/2011/isprsarchives-XXXVIII-4-C21-83-2011.pdf
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spelling doaj-457133d5fa01410a82cd534bfabc96682020-11-24T20:49:15ZengCopernicus PublicationsThe International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences1682-17502194-90342011-08-01XXXVIII-4/C21838810.5194/isprsarchives-XXXVIII-4-C21-83-2011METHODS FOR MONITORING THE DETECTION OF MULTI-TEMPORAL LAND USE CHANGE THROUGH THE CLASSIFICATION OF URBAN AREASB. I. Alhaddad0M. C. Burns1J. Roca2CPSV, Dept. of Architectonic Construction 1, Polytechnic University of Catalonia (UPC) 08028 Barcelona, SpainCPSV, Dept. of Architectonic Construction 1, Polytechnic University of Catalonia (UPC) 08028 Barcelona, SpainCPSV, Dept. of Architectonic Construction 1, Polytechnic University of Catalonia (UPC) 08028 Barcelona, SpainUrban areas are complicated due to the mix of man-made features and natural features. A higher level of structural information plays an important role in land cover/use classification of urban areas. Additional spatial indicators have to be extracted based on structural analysis in order to understand and identify spatial patterns or the spatial organization of features, especially for man-made feature. It’s very difficult to extract such spatial patterns by using only classification approaches. Clusters of urban patterns which are integral parts of other uses may be difficult to identify. A lot of public resources have been directed towards seeking to develop a standardized classification system and to provide as much compatibility as possible to ensure the widespread use of such categorized data obtained from remote sensor sources. <br><br> In this paper different methods applied to understand the change in the land use areas by understanding and monitoring the change in urban areas and as its hard to apply those methods to classification results for high elements quantities, dusts and scratches (Roca and Alhaddad, 2005). This paper focuses on a methodology developed based relation between urban elements and how to join this elements in zones or clusters have commune behaviours such as form, pattern, size. The main objective is to convert urban class category in to various structure densities depend on conjunction of pixel and shortest distance between them, Delaunay triangulation has been widely used in spatial analysis and spatial modelling. To identify these different zones, a spatial density-based clustering technique was adopted. In highly urban zones, the spatial density of the pixels is high, while in sparsely areas the density of points is much lower. Once the groups of pixels are identified, the calculation of the boundaries of the areas containing each group of pixels defines the new regions indicate the different contains inside such as high or low urban areas. Multi-temporal datasets from 1986, 1995 and 2004 used to urban region centroid to be our reference in this study which allow us to follow the urban movement, increase and decrease by the time. Kernel Density function used to Calculates urban magnitude, Voronoi algorithm is proposed for deriving explicit boundaries between objects units. To test the approach, we selected a site in a suburban area in Barcelona Municipality, the Spain.http://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XXXVIII-4-C21/83/2011/isprsarchives-XXXVIII-4-C21-83-2011.pdf
collection DOAJ
language English
format Article
sources DOAJ
author B. I. Alhaddad
M. C. Burns
J. Roca
spellingShingle B. I. Alhaddad
M. C. Burns
J. Roca
METHODS FOR MONITORING THE DETECTION OF MULTI-TEMPORAL LAND USE CHANGE THROUGH THE CLASSIFICATION OF URBAN AREAS
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
author_facet B. I. Alhaddad
M. C. Burns
J. Roca
author_sort B. I. Alhaddad
title METHODS FOR MONITORING THE DETECTION OF MULTI-TEMPORAL LAND USE CHANGE THROUGH THE CLASSIFICATION OF URBAN AREAS
title_short METHODS FOR MONITORING THE DETECTION OF MULTI-TEMPORAL LAND USE CHANGE THROUGH THE CLASSIFICATION OF URBAN AREAS
title_full METHODS FOR MONITORING THE DETECTION OF MULTI-TEMPORAL LAND USE CHANGE THROUGH THE CLASSIFICATION OF URBAN AREAS
title_fullStr METHODS FOR MONITORING THE DETECTION OF MULTI-TEMPORAL LAND USE CHANGE THROUGH THE CLASSIFICATION OF URBAN AREAS
title_full_unstemmed METHODS FOR MONITORING THE DETECTION OF MULTI-TEMPORAL LAND USE CHANGE THROUGH THE CLASSIFICATION OF URBAN AREAS
title_sort methods for monitoring the detection of multi-temporal land use change through the classification of urban areas
publisher Copernicus Publications
series The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
issn 1682-1750
2194-9034
publishDate 2011-08-01
description Urban areas are complicated due to the mix of man-made features and natural features. A higher level of structural information plays an important role in land cover/use classification of urban areas. Additional spatial indicators have to be extracted based on structural analysis in order to understand and identify spatial patterns or the spatial organization of features, especially for man-made feature. It’s very difficult to extract such spatial patterns by using only classification approaches. Clusters of urban patterns which are integral parts of other uses may be difficult to identify. A lot of public resources have been directed towards seeking to develop a standardized classification system and to provide as much compatibility as possible to ensure the widespread use of such categorized data obtained from remote sensor sources. <br><br> In this paper different methods applied to understand the change in the land use areas by understanding and monitoring the change in urban areas and as its hard to apply those methods to classification results for high elements quantities, dusts and scratches (Roca and Alhaddad, 2005). This paper focuses on a methodology developed based relation between urban elements and how to join this elements in zones or clusters have commune behaviours such as form, pattern, size. The main objective is to convert urban class category in to various structure densities depend on conjunction of pixel and shortest distance between them, Delaunay triangulation has been widely used in spatial analysis and spatial modelling. To identify these different zones, a spatial density-based clustering technique was adopted. In highly urban zones, the spatial density of the pixels is high, while in sparsely areas the density of points is much lower. Once the groups of pixels are identified, the calculation of the boundaries of the areas containing each group of pixels defines the new regions indicate the different contains inside such as high or low urban areas. Multi-temporal datasets from 1986, 1995 and 2004 used to urban region centroid to be our reference in this study which allow us to follow the urban movement, increase and decrease by the time. Kernel Density function used to Calculates urban magnitude, Voronoi algorithm is proposed for deriving explicit boundaries between objects units. To test the approach, we selected a site in a suburban area in Barcelona Municipality, the Spain.
url http://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XXXVIII-4-C21/83/2011/isprsarchives-XXXVIII-4-C21-83-2011.pdf
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