This paper presents an object-based approach to mapping a set of landforms located in the fluvio-eolian plain of Rio Dulce and alluvial plain of Rio Salado (Dry Chaco, Argentina), with two Landsat 8 images collected in summer and winter combined with topographic data. The research was conducted in two stages. The first stage focused on basic-spectral landform classifications where both pixel- and object-based image analyses were tested with five classification algorithms: Mahalanobis Distance (MD), Spectral Angle Mapper (SAM), Maximum Likelihood (ML), Support Vector Machine (SVM) and Decision Tree (DT). The results obtained indicate that object-based analyses clearly outperform pixel-based classifications, with an increase in accuracy of up...
Inventories of past and present land cover changes form the basis of future conservation and landsca...
Remote sensing-based approaches to lithological mapping are traditionally pixel-oriented, with class...
Remotely sensed imagery has been widely used for land use/cover classification thanks to the periodi...
This paper presents an object-based approach to mapping a set of landforms located in the fluvio-eol...
The objective of this work was to evaluate the performance of SVM and K-NN digital classifiers for t...
ABSTRACT: The traditional per-pixel classification methods consider only spectral information, and m...
The research presented in the paper has been aimed at mapping the basic types of land-use in the upp...
Tonal, textural and contextual properties are used in manual photointerpretation of remotely sensed ...
International audienceMany geomorphological maps have been produced thanks to advanc...
Remote sensing-based approaches to lithological mapping are traditionally pixel-oriented, with class...
Remote sensing data proved to be a valuable resource in a variety of earth science applications. Usi...
This research was performed to evaluate the potentials of Landsat MSS data for mapping land features...
Accurate agricultural land use (LU) map is essential for many agro-environmental applications. With ...
Inventories of past and present land cover changes form the basis for future conservation strategies...
Soil is an essential part of any terrestrial ecosystem. Scientists, technicians, and farmers have st...
Inventories of past and present land cover changes form the basis of future conservation and landsca...
Remote sensing-based approaches to lithological mapping are traditionally pixel-oriented, with class...
Remotely sensed imagery has been widely used for land use/cover classification thanks to the periodi...
This paper presents an object-based approach to mapping a set of landforms located in the fluvio-eol...
The objective of this work was to evaluate the performance of SVM and K-NN digital classifiers for t...
ABSTRACT: The traditional per-pixel classification methods consider only spectral information, and m...
The research presented in the paper has been aimed at mapping the basic types of land-use in the upp...
Tonal, textural and contextual properties are used in manual photointerpretation of remotely sensed ...
International audienceMany geomorphological maps have been produced thanks to advanc...
Remote sensing-based approaches to lithological mapping are traditionally pixel-oriented, with class...
Remote sensing data proved to be a valuable resource in a variety of earth science applications. Usi...
This research was performed to evaluate the potentials of Landsat MSS data for mapping land features...
Accurate agricultural land use (LU) map is essential for many agro-environmental applications. With ...
Inventories of past and present land cover changes form the basis for future conservation strategies...
Soil is an essential part of any terrestrial ecosystem. Scientists, technicians, and farmers have st...
Inventories of past and present land cover changes form the basis of future conservation and landsca...
Remote sensing-based approaches to lithological mapping are traditionally pixel-oriented, with class...
Remotely sensed imagery has been widely used for land use/cover classification thanks to the periodi...