MARIO
CHICA OLMO
Chercheur dans le période 2003-2024
University of Southampton
Southampton, Reino UnidoPublications en collaboration avec des chercheurs de University of Southampton (11)
2018
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Feature selection approaches for predictive modelling of groundwater nitrate pollution: An evaluation of filters, embedded and wrapper methods
Science of the Total Environment, Vol. 624, pp. 661-672
2015
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Machine learning predictive models for mineral prospectivity: An evaluation of neural networks, random forest, regression trees and support vector machines
Ore Geology Reviews, Vol. 71, pp. 804-818
2014
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Categorical indicator kriging for assessing the risk of groundwater nitrate pollution: The case of Vega de Granada aquifer (SE Spain)
Science of the Total Environment, Vol. 470-471, pp. 229-239
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Predictive modeling of groundwater nitrate pollution using Random Forest and multisource variables related to intrinsic and specific vulnerability: A case study in an agricultural setting (Southern Spain)
Science of the Total Environment, Vol. 476-477, pp. 189-206
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Regression trees for modeling geochemical data-An application to Late Jurassic carbonates (Ammonitico Rosso)
Computers and Geosciences, Vol. 73, pp. 198-207
2012
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Random Forest classification of Mediterranean land cover using multi-seasonal imagery and multi-seasonal texture
Remote Sensing of Environment, Vol. 121, pp. 93-107
2011
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Image fusion by spatially adaptive filtering using downscaling cokriging
ISPRS Journal of Photogrammetry and Remote Sensing, Vol. 66, Núm. 3, pp. 337-346
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Incorporating spatial variability measures in land-cover classification using Random Forest
Procedia Environmental Sciences
2010
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DSCOKRI: A library of computer programs for downscaling cokriging in support of remote sensing applications
Computers and Geosciences, Vol. 36, Núm. 7, pp. 881-894
2008
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Downscaling cokriging for super-resolution mapping of continua in remotely sensed images
IEEE Transactions on Geoscience and Remote Sensing
2006
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Downscaling cokriging for image sharpening
Remote Sensing of Environment, Vol. 102, Núm. 1-2, pp. 86-98