Article (Scientific journals)
Cloud and Cloud-Shadow Detection for Applications in Mapping Small-Scale Mining in Colombia Using Sentinel-2 Imagery
Ibrahim, Elsy; Jiang, Jingyi; Lema, Luisa et al.
2021In Remote Sensing, 13 (4 736)
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Keywords :
cloud; cloud shadow; classification; satellite; multispectral; mining
Abstract :
[en] Small-scale placer mining in Colombia takes place in rural areas and involves excavations resulting in large footprints of bare soil and water ponds. Such excavated areas comprise a mosaic of challenging terrains for cloud and cloud-shadow detection of Sentinel-2 (S2A and S2B) data used to identify, map, and monitor these highly dynamic activities. This paper uses an efficient two-step machine-learning approach using freely available tools to detect clouds and shadows in the context of mapping small-scale mining areas, one which places an emphasis on the reduction of misclassification of mining sites as clouds or shadows. The first step is comprised of a supervised support-vector-machine classification identifying clouds, cloud shadows, and clear pixels. The second step is a geometry-based improvement of cloud-shadow detection where solar-cloud-shadow-sensor geometry is used to exclude commission errors in cloud shadows. The geometry-based approach makes use of sun angles and sensor view angles available in Sentinel-2 metadata to identify potential directions of cloud shadow for each cloud projection. The approach does not require supplementary data on cloud-top or bottom heights nor cloud-top ruggedness. It assumes that the location of dense clouds is mainly impacted by meteorological conditions and that cloud-top and cloud-base heights vary in a predefined manner. The methodology has been tested over an intensively excavated and well-studied pilot site and shows 50% more detection of clouds and shadows than Sen2Cor. Furthermore, it has reached a Specificity of 1 in the correct detection of mining sites and water ponds, proving itself to be a reliable approach for further related studies on the mapping of small-scale mining in the area. Although the methodology was tailored to the context of small-scale mining in the region of Antioquia, it is a scalable approach and can be adapted to other areas and conditions.
Disciplines :
Engineering, computing & technology: Multidisciplinary, general & others
Author, co-author :
Ibrahim, Elsy ;  Université de Liège - ULiège > Département ArGEnCo > Géoressources minérales & Imagerie géologique
Jiang, Jingyi
Lema, Luisa
Barnabé, Pierre ;  Université de Liège - ULiège > Département ArGEnCo > Géoressources minérales & Imagerie géologique
Giuliani, Gregory
Lacroix, Pierre
Pirard, Eric  ;  Université de Liège - ULiège > Département ArGEnCo > Géoressources minérales & Imagerie géologique
Language :
English
Title :
Cloud and Cloud-Shadow Detection for Applications in Mapping Small-Scale Mining in Colombia Using Sentinel-2 Imagery
Publication date :
2021
Journal title :
Remote Sensing
eISSN :
2072-4292
Publisher :
Multidisciplinary Digital Publishing Institute (MDPI), Basel, Switzerland
Volume :
13
Issue :
4 736
Peer reviewed :
Peer Reviewed verified by ORBi
Name of the research project :
CopX/EOAllert
Funders :
EIT Rawmaterials / DG-GROW (Rawmatcop Program)
Available on ORBi :
since 02 March 2021

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