Publication: Identification of dominant features in spatial data
Identification of dominant features in spatial data
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Flury, R., Gerber, F., Schmid, B., & Furrer, R. (2021). Identification of dominant features in spatial data. Spatial Statistics, 41, 100483. https://doi.org/10.1016/j.spasta.2020.100483
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Dominant features of spatial data are connected structures or patterns that emerge from location-based variation and manifest at specific scales or resolutions. To identify dominant features, we propose a sequential application of multiresolution decomposition and variogram function estimation. Multiresolution decomposition separates data into additive components, and in this way enables the recognition of their dominant features. A dedicated multiresolution decomposition method is developed for arbitrary gridded spatial data, where t
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Flury, R., Gerber, F., Schmid, B., & Furrer, R. (2021). Identification of dominant features in spatial data. Spatial Statistics, 41, 100483. https://doi.org/10.1016/j.spasta.2020.100483