Comparing Qualitative Raster Maps

Comparing Qualitative Raster Maps

WIECZOREK Małgorzata, PRZYBYŁ Wojciech

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Abstract. Spatial diversity of the natural environment can be presented using raster qualitative data. They can be the result of collecting field data or be the result of stochastic modelling of a certain complexity of the environment. One example of such modelling is the determination of similar elements of relief forms on the basis of morphometric variables. The use of unsupervised methods for clustering raster data in modelling can produce different maps. It is necessary to assess the compatibility of the obtained maps in order to assess how significant the differences between them are. The article presents selected stochastic and deterministic methods for assessing the spatial distribution of data. Exemplary methods of measuring variability at the global and local level were discussed.

Raster Maps, Validation, Filters

Published online 9/1/2023, 10 pages
Copyright © 2023 by the author(s)
Published under license by Materials Research Forum LLC., Millersville PA, USA

Citation: WIECZOREK Małgorzata, PRZYBYŁ Wojciech, Comparing Qualitative Raster Maps, Materials Research Proceedings, Vol. 34, pp 364-373, 2023


The article was published as article 42 of the book Quality Production Improvement and System Safety

Content from this work may be used under the terms of the Creative Commons Attribution 3.0 license. Any further distribution of this work must maintain attribution to the author(s) and the title of the work, journal citation and DOI.

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