Title :
Bayesian classification and class area estimation of satellite images using stratification
Author :
Gorte, Ben ; Stein, Alfred
Author_Institution :
Int. Inst. for Aerosp. Survey & Earth Sci., Enschede, Netherlands
fDate :
5/1/1998 12:00:00 AM
Abstract :
The paper describes an iterative extension to maximum a posteriori (MAP) supervised classification methods. A posteriori probabilities per class are used for classification as well as to obtain class area estimates. From these, an updated set of prior probabilities is calculated and used in the next iteration. The process converges to statistically correct area estimates. The iterative process can be combined effectively with a stratification of the image, which is made on the basis of additional map data. Moreover, it relies on the sample sets being representative. Therefore, the method is shown to be well applicable in combination with an existing GIS. The paper gives a description of the procedure and provides a mathematical foundation. An example is presented to distinguish residential, industrial, and greenhouse classes. A significant improvement of the classification was obtained
Keywords :
Bayes methods; geophysical signal processing; geophysical techniques; image classification; maximum likelihood estimation; remote sensing; Bayes method; Bayesian classification; MAP; class area estimation; geophysical measurement technique; image classification; image processing; iterative method; land surface imaging; land use mapping; maximum a posteriori; prior probabilities; remote sensing; satellite image; stratification; supervised classification method; terrain mapping; Bayesian methods; Digital images; Geographic Information Systems; Image classification; Image converters; Iterative methods; Pattern recognition; Probability; Remote sensing; Satellites;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on