DocumentCode :
987955
Title :
A detailed comparison of backpropagation neural network and maximum-likelihood classifiers for urban land use classification
Author :
Paola, Justin D. ; Schowengerdt, Robert A.
Author_Institution :
Dept. of Electr. & Comput. Eng., Arizona Univ., Tucson, AZ, USA
Volume :
33
Issue :
4
fYear :
1995
fDate :
7/1/1995 12:00:00 AM
Firstpage :
981
Lastpage :
996
Abstract :
A detailed comparison of the backpropagation neural network and maximum-likelihood classifiers for urban land use classification is presented. Landsat Thematic Mapper images of Tucson, Arizona, and Oakland, California, were used for this comparison. For the Tucson image, the percentage of matching pixels in the two classification maps was only 64.5%, while for the Oakland image it was 83.3%. Although the test site accuracies of the two Tucson maps were similar, the map produced by the neural network was visually more accurate; this difference is explained by examining class regions and density plots in the decision space and the continuous likelihood values produced by both classifiers. For the Oakland scene, the two maps were visually and numerically similar, although the neural network was superior in suppression of mixed pixel classification errors. From this analysis, the authors conclude that the neural network is more robust to training site heterogeneity and the use of class labels for land use that are mixtures of land cover spectral signatures. The differences between the two algorithms may be viewed, in part, as the differences between nonparametric (neural network) and parametric (maximum-likelihood) classifiers. Computationally, the backpropagation neural network is at a serious disadvantage to maximum-likelihood, taking nearly an order of magnitude more computing time when implemented on a serial workstation
Keywords :
backpropagation; feedforward neural nets; geophysical signal processing; geophysical techniques; image classification; maximum likelihood estimation; optical information processing; remote sensing; Arizona; Landsat Thematic Mapper; Oakland California; Tucson; United States USA; backpropagation neural network; geophysical measurement technique; image classification; maximum-likelihood classifier; mixed pixel classification error; neural net; optical imaging; remote sensing; terrain mapping land surface; urban land use; Backpropagation; Computer networks; Error analysis; Layout; Neural networks; Pixel; Remote sensing; Robustness; Satellites; Testing;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/36.406684
Filename :
406684
Link To Document :
بازگشت