Fundação de Amparo à Pesquisa do Estado de São Paulo (FAPESP)Conselho Nacional de Desenvolvimento Científico e Tecnológico (CNPq)Traditional machine learning algorithms very often assume statistically independent data samples. However, this is clearly not the case in remote sensing image applications, in which pixels present spatial and/or temporal dependencies. In this work, it has been presented an approach to improve land cover image classification using a contextual approach based on optimum-path forest (OPF) and the well-known Markov random fields (MRFs), hereinafter called OPF-MRF. In addition, it is also introduced a framework to the optimization of the amount of contextual information used by OPF-MRF. Experiments over high- and medi...
This data set includes yearly maps of land cover classification for the state of Mato Grosso, Brasil...
The Volta Grande do Xingu (VGX) in the Amazon Forest of Brazil was chosen to analyze the land use an...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Land cover classification has been paramount in the last years. Since the amount of information acqu...
Classification of land cover is one of the most important tasks and one of the primary objectives in...
The results obtained with a machine learning method to classify satellite imagery: Random Forest an...
The main idea of this paper is to integrate the non-contextual support vector machines (SVM) classif...
Geospatial land use databases contain important information with high benefit for several users, esp...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
Abstract. One of the main applications of satellite images is the characterization of terrestrial co...
Abstract. One of the main applications of satellite images is the characterization of terrestrial co...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
Abstract. In several real-world applications the objective of land-cover classification is actually ...
Abstract. In the context of Landsat TM images forest stands are a cluster of homogeneous pixels. Con...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
This data set includes yearly maps of land cover classification for the state of Mato Grosso, Brasil...
The Volta Grande do Xingu (VGX) in the Amazon Forest of Brazil was chosen to analyze the land use an...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Land cover classification has been paramount in the last years. Since the amount of information acqu...
Classification of land cover is one of the most important tasks and one of the primary objectives in...
The results obtained with a machine learning method to classify satellite imagery: Random Forest an...
The main idea of this paper is to integrate the non-contextual support vector machines (SVM) classif...
Geospatial land use databases contain important information with high benefit for several users, esp...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
Abstract. One of the main applications of satellite images is the characterization of terrestrial co...
Abstract. One of the main applications of satellite images is the characterization of terrestrial co...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
Abstract. In several real-world applications the objective of land-cover classification is actually ...
Abstract. In the context of Landsat TM images forest stands are a cluster of homogeneous pixels. Con...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
This data set includes yearly maps of land cover classification for the state of Mato Grosso, Brasil...
The Volta Grande do Xingu (VGX) in the Amazon Forest of Brazil was chosen to analyze the land use an...
Classification of multispectral optical satellite data using machine learning techniques to derive l...