Classification of remotely sensed images into land cover or land use is highly dependent on geographical information at least at two levels. First, land cover classes are observed in a spatially smooth domain separated by sharp region boundaries. Second, land classes and observation scale are also tightly intertwined: they tend to be consistent within areas of homogeneous appearance, or regions, in the sense that all pixels within a roof should be classified as roof, independently on the spatial support used for the classification. In this paper, we follow these two observations and encode them as priors in an energy minimization framework based on conditional random fields (CRFs), where classification results obtained at pixel and region l...
Feature fusion of remote sensing images and LiDAR points cloud data, which have strong complementari...
Developing a complex region detection algorithm that is aware of its contextual relations with sever...
Fusion of remote sensing images and LiDAR data provides complimentary information for the remote sen...
Classification of remotely sensed images into land cover or land use is highly dependent on geograph...
Land cover / land use classification of remotely sensed images is inherently geographical. The use o...
Automatic image classification is of major importance for a wide range of applications and is suppor...
This paper proposes a two-layer Conditional Random Field model for simultaneous classification of la...
ABSTRACT: This paper discusses random field based image classification methods, and in particular co...
This paper proposes a two-layer Conditional Random Field model for simultaneous classification of la...
Land cover and land use exhibit strong contextual dependencies. We propose a novel approach for the ...
Geospatial land use databases contain important information with high benefit for several users, esp...
Spatial information is important for remote sensing image classification. How to extract spatial inf...
Fusion of remote sensing images and LiDAR data provides complimentary information for the remote sen...
Land cover classification plays a key role for various geo-based applications. Numerous approaches f...
The interpretation of land use and land cover (LULC) is an important issue in the fields of high-res...
Feature fusion of remote sensing images and LiDAR points cloud data, which have strong complementari...
Developing a complex region detection algorithm that is aware of its contextual relations with sever...
Fusion of remote sensing images and LiDAR data provides complimentary information for the remote sen...
Classification of remotely sensed images into land cover or land use is highly dependent on geograph...
Land cover / land use classification of remotely sensed images is inherently geographical. The use o...
Automatic image classification is of major importance for a wide range of applications and is suppor...
This paper proposes a two-layer Conditional Random Field model for simultaneous classification of la...
ABSTRACT: This paper discusses random field based image classification methods, and in particular co...
This paper proposes a two-layer Conditional Random Field model for simultaneous classification of la...
Land cover and land use exhibit strong contextual dependencies. We propose a novel approach for the ...
Geospatial land use databases contain important information with high benefit for several users, esp...
Spatial information is important for remote sensing image classification. How to extract spatial inf...
Fusion of remote sensing images and LiDAR data provides complimentary information for the remote sen...
Land cover classification plays a key role for various geo-based applications. Numerous approaches f...
The interpretation of land use and land cover (LULC) is an important issue in the fields of high-res...
Feature fusion of remote sensing images and LiDAR points cloud data, which have strong complementari...
Developing a complex region detection algorithm that is aware of its contextual relations with sever...
Fusion of remote sensing images and LiDAR data provides complimentary information for the remote sen...