Spatial information plays a fundamental role in building high-level content models for supporting analysts' interpretations and automating geospatial intelligence. We describe a framework for modeling directional spatial relationships among objects and using this information for contextual classification and retrieval. The proposed model first identifies image areas that have a high degree of satisfaction of a spatial relation with respect to several reference objects. Then, this information is incorporated into the Bayesian decision rule as spatial priors for contextual classification. The model also supports dynamic queries by using directional relationships as spatial constraints to enable object detection based on the properties of indi...
In spatial data mining, a common task is the discovery of spatial association rules from spatial dat...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
that aims at the discovery of associations within data sets. The analysis of geo-referenced data d...
Spatial information plays a fundamental role in building high-level content models for supporting an...
Abstract—Spatial information plays a fundamental role in building high-level content models for supp...
Spatial information plays a very important role in high-level image understanding tasks. Contextual ...
Abstract—High level image understanding and content extraction requires image regions analysis to re...
Voluminous geographic data have been, and continue to be, collected with modern data acquisition tec...
Recent developments in sensor technology are contributing toward the tremendous growth of remote sen...
Remote sensing and mobile devices nowadays collect a huge amount of spatial data which have to be a...
Spatial data mining is the quantitative study of phenomena that are located in space. This paper in...
We describe a new image representation using spatial relationship histograms that extend our earlier...
The process of knowledge discovery in databases aims at the discovery of associations within data se...
Modeling spatial context (e.g., autocorrelation) is a key challenge in classification problems that ...
Remote sensing and mobile devices nowadays collect a huge amount of spatial data, which have to be a...
In spatial data mining, a common task is the discovery of spatial association rules from spatial dat...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
that aims at the discovery of associations within data sets. The analysis of geo-referenced data d...
Spatial information plays a fundamental role in building high-level content models for supporting an...
Abstract—Spatial information plays a fundamental role in building high-level content models for supp...
Spatial information plays a very important role in high-level image understanding tasks. Contextual ...
Abstract—High level image understanding and content extraction requires image regions analysis to re...
Voluminous geographic data have been, and continue to be, collected with modern data acquisition tec...
Recent developments in sensor technology are contributing toward the tremendous growth of remote sen...
Remote sensing and mobile devices nowadays collect a huge amount of spatial data which have to be a...
Spatial data mining is the quantitative study of phenomena that are located in space. This paper in...
We describe a new image representation using spatial relationship histograms that extend our earlier...
The process of knowledge discovery in databases aims at the discovery of associations within data se...
Modeling spatial context (e.g., autocorrelation) is a key challenge in classification problems that ...
Remote sensing and mobile devices nowadays collect a huge amount of spatial data, which have to be a...
In spatial data mining, a common task is the discovery of spatial association rules from spatial dat...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
that aims at the discovery of associations within data sets. The analysis of geo-referenced data d...