Please use this identifier to cite or link to this item: https://hdl.handle.net/10316/101317
Title: Automatic Extraction and Filtering of OpenStreetMap Data to Generate Training Datasets for Land Use Land Cover Classification
Authors: Fonte, Cidália C. 
Patriarca, Joaquim 
Jesus, Ismael 
Duarte, Diogo 
Keywords: land use land cover; training data; OpenStreetMap; Sentinel-2; COS (Carta de Ocupação do Solo); volunteered geographical information (VGI)
Issue Date: 2020
Project: FCT - grant SFRH/BSAB/150463/2019 
FCT - UID/MULTI/00308/2019 
project EPSSI-Exploring the Potential of the Sentinel missions Satellite Imagery (FR015), funded by the Institute for Systems Engineering and Computers at Coimbra (INESC Coimbra) 
metadata.degois.publication.title: Remote Sensing
metadata.degois.publication.volume: 12
metadata.degois.publication.issue: 20
Abstract: This paper tests an automated methodology for generating training data from OpenStreetMap (OSM) to classify Sentinel-2 imagery into Land Use/Land Cover (LULC) classes. Di erent sets of training data were generated and used as inputs for the image classification. Firstly, OSM data was converted into LULC maps using the OSM2LULC_4T software package. The Random Forest classifier was then trained to classify a time-series of Sentinel-2 imagery into 8 LULC classes with samples extracted from: (1) The LULC maps produced by OSM2LULC_4T (TD0); (2) the TD1 dataset, obtained after removing mixed pixels from TD0; (3) the TD2 dataset, obtained by filtering TD1 using radiometric indices. The classification results were generalized using a majority filter and hybrid maps were created by merging the classification results with the OSM2LULC outputs. The accuracy of all generated maps was assessed using the 2018 o cial “Carta de Ocupação do Solo” (COS). The methodology was applied to two study areas with di erent characteristics. The results show that in some cases the filtering procedures improve the training data and the classification results. This automated methodology allowed the production of maps with overall accuracy between 55% and 78% greater than that of COS, even though the used nomenclature includes classes that can be easily confused by the classifiers.
URI: https://hdl.handle.net/10316/101317
ISSN: 2072-4292
DOI: 10.3390/rs12203428
Rights: openAccess
Appears in Collections:FCTUC Matemática - Artigos em Revistas Internacionais
I&D INESCC - Artigos em Revistas Internacionais
FCTUC Eng.Informática - Artigos em Revistas Internacionais

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