Region-based classification potential for land-cover classification with very high spatial resolution satellite data

Abstract Since 1999, Very High spatial Resolution satellite data (Ikonos-2, QuickBird and OrbView-3) represent the surface of the Earth with more detail. However, information extraction by multispectral pixel-based classification proves to have become more complex owing to the internal variability increase in the land-cover units and to the weakness of spectral resolution. Therefore, one possibility is to consider the internal spectral variability of land-cover classes as a valuable source of spatial information that can be used as an additional clue in characterizing and identifying land cove... Mehr ...

Verfasser: Carleer, Alexandre
Dokumenttyp: doctoralThesis
Erscheinungsdatum: 2006
Verlag/Hrsg.: Universite Libre de Bruxelles
Schlagwörter: Sciences exactes et naturelles / Agronomie générale / Remote-sensing images -- Belgium / Aerial photography in land use -- Belgium / Land use -- Classification -- Belgium / Images-satellite -- Belgique / Photographie aérienne en utilisation du sol -- Belgique / Sol / Utilisation du -- Classification -- Belgique / very high spatial resolution / VHR data / region-based classification / remote sensing
Sprache: Französisch
Permalink: https://search.fid-benelux.de/Record/base-26980730
Datenquelle: BASE; Originalkatalog
Powered By: BASE
Link(s) : http://hdl.handle.net/2013/ULB-DIPOT:oai:dipot.ulb.ac.be:2013/210852

Abstract Since 1999, Very High spatial Resolution satellite data (Ikonos-2, QuickBird and OrbView-3) represent the surface of the Earth with more detail. However, information extraction by multispectral pixel-based classification proves to have become more complex owing to the internal variability increase in the land-cover units and to the weakness of spectral resolution. Therefore, one possibility is to consider the internal spectral variability of land-cover classes as a valuable source of spatial information that can be used as an additional clue in characterizing and identifying land cover. Moreover, the spatial resolution gap that existed between satellite images and aerial photographs has strongly decreased, and the features used in visual interpretation transposed to digital analysis (texture, morphology and context) can be used as additional information on top of spectral features for the land cover classification. The difficulty of this approach is often to transpose the visual features to digital analysis. To overcome this problem region-based classification could be used. Segmentation, before classification, produces regions that are more homogeneous in themselves than with nearby regions and represent discrete objects or areas in the image. Each region becomes then a unit analysis, which makes it possible to avoid much of the structural clutter and allows to measure and use a number of features on top of spectral features. These features can be the surface, the perimeter, the compactness, the degree and kind of texture. Segmentation is one of the only methods which ensures to measure the morphological features (surface, perimeter.) and the textural features on non-arbitrary neighbourhood. In the pixel-based methods, texture is calculated with mobile windows that smooth the boundaries between discrete land cover regions and create between-class texture. This between-class texture could cause an edge-effect in the classification. In this context, our research focuses on the potential of land cover ...