Utilize este identificador para referenciar este registo: https://hdl.handle.net/10316/101249
Título: POI Mining for Land Use Classification: A Case Study
Autor: Andrade, Renato 
Alves, Ana 
Bento, Carlos 
Palavras-chave: data mining; machine learning; land use classification; points of interest; smart cities
Data: 2020
Projeto: Portugal Global—Trade & Investment Agency (AICEP) 
Título da revista, periódico, livro ou evento: ISPRS International Journal of Geo-Information
Volume: 9
Número: 9
Resumo: The modern planning and management of urban spaces is an essential topic for smart cities and depends on up-to-date and reliable information on land use and the functional roles of the places that integrate urban areas. In the last few years, driven by the increased availability of geo-referenced data from social media, embedded sensors, and remote sensing images, various techniques have become popular for land use analysis. In this paper, we first highlight and discuss the di erent data types and methods usually adopted in this context, as well as their purposes. Then, based on a systematic state-of-the-art study, we focused on exploring the potential of points of interest (POIs) for land use classification, as one of the most common categories of crowdsourced data. We developed an application to automatically collect POIs for the study area, creating a dataset that was used to generate a large number of features. We used a ranking technique to select, among them, the most suitable features for classifying land use. As ground truth data, we used CORINE Land Cover (CLC), which is a solid and reliable dataset available for the whole European territory. It was used an artificial neural network (ANN) in di erent scenarios and our results reveal values of more than 90% for the accuracy and F-score in one experiment performed. Our analysis suggests that POI data have promising potential to characterize geographic spaces. The work described here aims to provide an alternative to the current methodologies for land use and land cover (LULC) classification, which are usually time-consuming and depend on expensive data types.
URI: https://hdl.handle.net/10316/101249
ISSN: 2220-9964
DOI: 10.3390/ijgi9090493
Direitos: openAccess
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