Contextual classification of multispectral image data in remote sensing is discussed and concretely two improved contextual classifiers are proposed. The first is the extended adaptive classifier which partitions an image successively into homogeneously distributed square regions and applies a collective classification decision to each region. The second is the accelerated probabilistic relaxation which updates a classification result fast by adopting a pixelwise stopping rule. The evaluation experiment with a pseudo LANDSAT multispectral image shows that the proposed methods give higher classification accuracies than the compound decision method known as a standard contextual classifier
A classification algorithm incorporating contextual information in a general, statistical manner is ...
Classification of multispectral image data based on spectral information has been a common practice ...
International audienceIn this paper, we present some recent developments of Multiple Classifiers Sys...
The most common method for labeling multispectral image data classifies each pixel entirely on the b...
Nonparametric nearest neighbor classification and a post-classification contextual correction can be...
Classification of remote sensing multispectral data is important for segmenting images and thematic...
Classification of remote sensing multispectral data is important for segmenting images and thematic...
Abstract-A statistical model of spatial context is described and procedures for classifying remote s...
Recent investigations have demonstrated the effectiveness of a contextual classifier that combines s...
The aims of the project were twofold: 1) To investigate classification procedures for remotely sense...
A classification algorithm incorporating contextual information in a general, statistical manner is ...
A classification algorithm incorporating contextual information in a general, statistical manner is ...
A statistical model of spatial context is described and procedures for classifying remote sensing da...
A statistical model of spatial context is described and procedures for classifying remote sensing da...
A statistical model of spatial context is described and procedures for classifying remote sensing da...
A classification algorithm incorporating contextual information in a general, statistical manner is ...
Classification of multispectral image data based on spectral information has been a common practice ...
International audienceIn this paper, we present some recent developments of Multiple Classifiers Sys...
The most common method for labeling multispectral image data classifies each pixel entirely on the b...
Nonparametric nearest neighbor classification and a post-classification contextual correction can be...
Classification of remote sensing multispectral data is important for segmenting images and thematic...
Classification of remote sensing multispectral data is important for segmenting images and thematic...
Abstract-A statistical model of spatial context is described and procedures for classifying remote s...
Recent investigations have demonstrated the effectiveness of a contextual classifier that combines s...
The aims of the project were twofold: 1) To investigate classification procedures for remotely sense...
A classification algorithm incorporating contextual information in a general, statistical manner is ...
A classification algorithm incorporating contextual information in a general, statistical manner is ...
A statistical model of spatial context is described and procedures for classifying remote sensing da...
A statistical model of spatial context is described and procedures for classifying remote sensing da...
A statistical model of spatial context is described and procedures for classifying remote sensing da...
A classification algorithm incorporating contextual information in a general, statistical manner is ...
Classification of multispectral image data based on spectral information has been a common practice ...
International audienceIn this paper, we present some recent developments of Multiple Classifiers Sys...