The applications of object-based image analysis (OBIA) in remote sensing studies have received a considerable amount of attention over the recent decade due to dramatically increasing of the spatial resolution of satellite imaging sensors for earth observation. In this study, an unsupervised methodology based on OBIA paradigm for the estimation of multi-scale training sets for land cover classification is proposed. The proposed method con- sists of selection of valid region of interests in an unsupervised way and its characterization using some attributes in order to form meaningful and reliable training sets for supervised classification of different land covers of a satellite image. Multi-scale image segmentation is a prerequisite step fo...
Object based image analysis (OBIA) is a relatively new form of remote sensing which aims to overcome...
Sentinel-2 images are expected to improve global crop monitoring even in challenging tropical small ...
Satellite scene classification is challenging because of the high variability inherent in satellite ...
High-spatial-resolution images play an important role in land cover classification, and object-based...
Overrecentdecades,remotesensinghasemergedasaneffectivetoolforimprov- ing agriculture productivity. I...
In order to adapt different scale land cover segmentation, an optimized approach under the guidance ...
Accurate and timely collection of urban land use and land cover information is crucial for many aspe...
In this paper a new object-based framework is developed for automate scale selection in image segmen...
Geographic object-based image analysis (GEOBIA) has been widely used in the remote sensing of agricu...
Image segmentation is a key prerequisite for object-based classification. However, it is often diffi...
Abstract. Land use mapping is one of the major applications of remote sensing. While most studies fo...
Using object-based image analysis (OBIA) techniques for land use-land cover classification (LULC) ha...
We present an approach for classification of remotely sensed imagery using spatial information extra...
The first Sentinel-2 satellite was sent to orbit in 2015 as part of the European Copernicus program....
International audienceThe Object-Based Image Analysis (OBIA) paradigm strongly relies on the concept...
Object based image analysis (OBIA) is a relatively new form of remote sensing which aims to overcome...
Sentinel-2 images are expected to improve global crop monitoring even in challenging tropical small ...
Satellite scene classification is challenging because of the high variability inherent in satellite ...
High-spatial-resolution images play an important role in land cover classification, and object-based...
Overrecentdecades,remotesensinghasemergedasaneffectivetoolforimprov- ing agriculture productivity. I...
In order to adapt different scale land cover segmentation, an optimized approach under the guidance ...
Accurate and timely collection of urban land use and land cover information is crucial for many aspe...
In this paper a new object-based framework is developed for automate scale selection in image segmen...
Geographic object-based image analysis (GEOBIA) has been widely used in the remote sensing of agricu...
Image segmentation is a key prerequisite for object-based classification. However, it is often diffi...
Abstract. Land use mapping is one of the major applications of remote sensing. While most studies fo...
Using object-based image analysis (OBIA) techniques for land use-land cover classification (LULC) ha...
We present an approach for classification of remotely sensed imagery using spatial information extra...
The first Sentinel-2 satellite was sent to orbit in 2015 as part of the European Copernicus program....
International audienceThe Object-Based Image Analysis (OBIA) paradigm strongly relies on the concept...
Object based image analysis (OBIA) is a relatively new form of remote sensing which aims to overcome...
Sentinel-2 images are expected to improve global crop monitoring even in challenging tropical small ...
Satellite scene classification is challenging because of the high variability inherent in satellite ...