DocumentCode :
3164747
Title :
Improving spectral image classifications by incorporating context data using likelihood vectors
Author :
Gorte, B.G.H.
Author_Institution :
ITC, Enschede
fYear :
1995
fDate :
4-6 Jul 1995
Firstpage :
251
Lastpage :
255
Abstract :
Statistical pattern recognition procedures, such as maximum likelihood classification, are applied to (multi-spectral) satellite images, in order to produce thematic maps (eg. land-use/land-cover maps) in most cases. Sometimes, the purpose is to obtain estimates of the sizes of the areas covered by the different classes. Area estimates that are “easily” created by counting the numbers of pixels per class label after a maximum likelihood classification (histogram) are not reliable, since classifiers tend to be biased in favour of some classes, at the expense of others. On the other hand, knowing areas per class and using them as input for the classifier in the form of prior probabilities, can improve the classification accuracy (but still not the resulting area estimates when making a histogram afterwards: they would be different from what you input). The purpose of this paper is to find a way out of this somewhat strange situation. It presents a slightly modified k-nearest-neighbour strategy to calculate feature probability densities. Also it reviews the method of using spatially distributed prior probabilities and see how it can be perfectly combined with the proposed method
Keywords :
image classification; maximum likelihood estimation; probability; spectral analysis; area estimates; classification accuracy; context data; histogram; land-use/land-cover maps; likelihood vectors; maximum likelihood classification; multispectral satellite images; probability densities; slightly modified k-nearest-neighbour strategy; spatially distributed prior probabilities; spectral image classifications; statistical pattern recognition; thematic maps;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Image Processing and its Applications, 1995., Fifth International Conference on
Conference_Location :
Edinburgh
Print_ISBN :
0-85296-642-3
Type :
conf
DOI :
10.1049/cp:19950659
Filename :
465549
Link To Document :
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