Title :
Supervised Classification of Remotely Sensed Imagery Using a Modified
-NN Technique
Author :
Samaniego, Luis ; Bárdossy, András ; Schulz, Karsten
Author_Institution :
UFZ-Helmholtz-Centre for Environ. Res., Leipzig
fDate :
7/1/2008 12:00:00 AM
Abstract :
Nearest neighbor (NN) techniques are commonly used in remote sensing, pattern recognition, and statistics to classify objects into a predefined number of categories based on a given set of predictors. These techniques are particularly useful in those cases exhibiting a highly nonlinear relationship between variables. In most studies, the distance measure is adopted a priori. In contrast, we propose a general procedure to find Euclidean metrics in a low-dimensional space (i.e., one in which the number of dimensions is less than the number of predictor variables) whose main characteristic is to minimize the variance of a given class label of all those pairs of points whose distance is less than a predefined value. k-NN is used in each embedded space to determine the possibility that a query belongs to a given class label. The class estimation is carried out by an ensemble of predictions. To illustrate the application of this technique, a typical land cover classification using a Landsat-5 Thematic Mapper scene is presented. Experimental results indicate substantial improvement with regard to the classification accuracy as compared with approaches such as maximum likelihood, linear discriminant analysis, standard k-NN, and adaptive quasi-conformal kernel k-NN.
Keywords :
geophysical techniques; geophysics computing; image classification; learning (artificial intelligence); remote sensing; Euclidean metrics; Landsat-5 Thematic Mapper scene; adaptive quasi-conformal kernel k-NN approach; land cover classification; linear discriminant analysis; maximum likelihood approach; modified k-NN technique; nearest neighbor techniques; objects classification; pattern recognition; remotely sensed imagery; standard k-NN approach; statistics; supervised classification; $k$-nearest neighbors (NNs); $k$-nearest neighbors (NNs); Dimensionality reduction; ensemble prediction; land cover classification; simulated annealing (SA);
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2008.916629