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Hierarchical decomposition of variance with applications in environmental mapping based on satellite images
Authors:Ferenc Csillag and Sándor Kabos
Institution:(1) Department of Geography and Institute for Land Information Management, University of Toronto, Erindale College, Mississauga, Ontario, Canada;(2) Institute of Sociology, Eötvös Loránd University, Budapest, Hungary
Abstract:A quadtree-based image segmentation procedure (HQ) is presented to map complex environmental conditions. It applies a hierarchical nested analysis of variance within the framework of multiresolution wavelet approximation. The procedure leads to an optimal solution for determining mapping units based on spatial variability with constraints on the arrangement and shape of the units. Linkages to geostatisiics are pointed out, but the HQ decomposition algorithm does not require any homogeneity criteria. The computer implementation can be parameterized by either the number of required mapping units or the maximum within-unit variance, or it can provide a ldquospectrumrdquo of significances of nested ANOVA. The detailed mathematical background and methodology is illustrated by a salt-affected grassland mapping study (Hortobágy, Hungary), where heterogeneous environmental characteristics have been sampled and predicted based on remotely sensed images using these principles.
Keywords:multiresolution approximation  nested analysis of variance  sampling  quadtrees  remote sensing  geostatistics  environmental mapping
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