This paper presents a case study on the use of features derived from remote sensing data for mapping the highly fragmented semideciduous Atlantic forest in Brazil. Innovative aspects of this research include the evaluation of different feature sets in order to improve land cover mapping. The feature sets were defined based on expert knowledge and on data mining techniques to be input to traditional and machine learning algorithms for pattern recognition, viz. maximum likelihood, univariate decision trees, multivariate decision trees, and neural networks. The results showed that the maximum likelihood classification using temporal texture descriptors as extracted with wavelet transforms was most accurate to classify the semideciduous Atlanti...
The objective of this research is to classify agricultural land use in a region of the Cerrado (Braz...
The work described in this thesis concerns the estimation of tropical forest vegetation cover in the...
Mapping large wildfires (LW) is essential for environmental applications and enhances the understand...
This paper presents a case study on the use of features derived from remote sensing data for mapping...
KEYWORDS : Landsat, time series, machine learning, semideciduous Atlantic forest, Brazil, wavelet tr...
KEYWORDS : Landsat, time series, machine learning, semideciduous Atlantic forest, Brazil, wavelet tr...
The aim of this study was to develop a methodology for mapping land use and land cover in the northe...
The Brazilian Atlantic forest is regarded as one of the hottest biodiversity hotspots in the world. ...
ABSTRACT In the state of Paraná, Brazil, there are no major changes in areas cultivated with annual ...
Quantifying and monitoring woody cover distribution in semiarid regions is challenging, due to their...
ABSTRACT Remote sensing allows for identification of regularities and irregularities in land use and...
Abstract—The objective of this paper is to study the use of a de-cision tree classifier and multisca...
Remotely sensed imagery has been widely used for land use/cover classification thanks to the periodi...
Forest covers about a third of terrestrial land surface, with tropical and subtropical zones being a...
International audienceTimely and efficient land-cover mapping is of high interest, especially in agr...
The objective of this research is to classify agricultural land use in a region of the Cerrado (Braz...
The work described in this thesis concerns the estimation of tropical forest vegetation cover in the...
Mapping large wildfires (LW) is essential for environmental applications and enhances the understand...
This paper presents a case study on the use of features derived from remote sensing data for mapping...
KEYWORDS : Landsat, time series, machine learning, semideciduous Atlantic forest, Brazil, wavelet tr...
KEYWORDS : Landsat, time series, machine learning, semideciduous Atlantic forest, Brazil, wavelet tr...
The aim of this study was to develop a methodology for mapping land use and land cover in the northe...
The Brazilian Atlantic forest is regarded as one of the hottest biodiversity hotspots in the world. ...
ABSTRACT In the state of Paraná, Brazil, there are no major changes in areas cultivated with annual ...
Quantifying and monitoring woody cover distribution in semiarid regions is challenging, due to their...
ABSTRACT Remote sensing allows for identification of regularities and irregularities in land use and...
Abstract—The objective of this paper is to study the use of a de-cision tree classifier and multisca...
Remotely sensed imagery has been widely used for land use/cover classification thanks to the periodi...
Forest covers about a third of terrestrial land surface, with tropical and subtropical zones being a...
International audienceTimely and efficient land-cover mapping is of high interest, especially in agr...
The objective of this research is to classify agricultural land use in a region of the Cerrado (Braz...
The work described in this thesis concerns the estimation of tropical forest vegetation cover in the...
Mapping large wildfires (LW) is essential for environmental applications and enhances the understand...