Modeling spatial context (e.g., autocorrelation) is a key challenge in classification problems that arise in geospatial domains. Markov Random Fields (MRFs) is a popular model for incorporating spatial context into image segmentation and land-use classification problems. The spatial autoregression model (SAR), which is an extension of the classical regression model for incorporating spatial dependence, is popular for prediction and classification of spatial data in regional economics, natural resources, and ecological studies. There is little literature comparing these alternative approaches to facilitate the exchange of ideas (e.g., solution procedures). We argue that the SAR model makes more restrictive assumptions about the distributio...
Voluminous geographic data have been, and continue to be, collected with modern data acquisition tec...
Spatial information plays a fundamental role in building high-level content models for supporting an...
Urban and Regional Studies deal with large tables of spatial data obtained from censuses and surveys...
Geo-spatial data mining is a process to discover interesting and potentially useful spatial patterns...
Classification of land cover is one of the most important tasks and one of the primary objectives in...
Ecological data often exhibit spatial pattern, which can be modeled as autocorrelation. Conditional ...
In this dissertation we investigate a possible attempt to combine the Data Mining methods and tradit...
This article is concerned with a generative approach to supervised classification of spatio-temporal...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
Spatial autocorrelation is the correlation among data values which is strictly due to the relative s...
Only the abstract and references were published in the proceedings. There is no full text.The field ...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
Voluminous geographic data have been, and continue to be, collected with modern data acquisition tec...
Spatial information plays a fundamental role in building high-level content models for supporting an...
Urban and Regional Studies deal with large tables of spatial data obtained from censuses and surveys...
Geo-spatial data mining is a process to discover interesting and potentially useful spatial patterns...
Classification of land cover is one of the most important tasks and one of the primary objectives in...
Ecological data often exhibit spatial pattern, which can be modeled as autocorrelation. Conditional ...
In this dissertation we investigate a possible attempt to combine the Data Mining methods and tradit...
This article is concerned with a generative approach to supervised classification of spatio-temporal...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
Spatial autocorrelation is the correlation among data values which is strictly due to the relative s...
Only the abstract and references were published in the proceedings. There is no full text.The field ...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
Voluminous geographic data have been, and continue to be, collected with modern data acquisition tec...
Spatial information plays a fundamental role in building high-level content models for supporting an...
Urban and Regional Studies deal with large tables of spatial data obtained from censuses and surveys...