Publication | Closed Access
Contextual techniques for classification of high and low resolution remote sensing data
27
Citations
16
References
1994
Year
High ResolutionHigh Resolution ImagesEngineeringLand CoverImage AnalysisData SciencePattern RecognitionLow Resolution RemoteSatellite ImagingMachine VisionSynthetic Aperture RadarSpectral ImagingGeographyEarth Observation DataGaussian Maximum LikelihoodHyperspectral ImagingLand Cover MapComputer VisionContextual TechniquesRemote SensingRemote Sensing Sensor
Abstract Conventional classification techniques, both supervised and non-supervised, are used for the classification of remote sensing data on the basis of spectral signatures of the classes of interest, and, contextual techniques use both spectral and spatial information to improve the classification accuracies. This paper reviews some of the recent contextual classification techniques and proposes two methods. One method is meant for low resolution and the other for high resolution images. Test results for both the methods of two sets of data, corresponding to low resolution and high resolution, respectively, are compared with Gaussian Maximum Likelihood (GML) results and presented in the paper.
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