Title :
Partially supervised classification of remote sensing images using SVM-based probability density estimation
Author :
Mantero, P. ; Moser, G. ; Serpico, S.B.
Author_Institution :
Dept. of Biophys. & Electron. Eng., Genoa Univ., Italy
Abstract :
A general problem of supervised remotely. sensed image classification assumes prior knowledge to be available for all thematic classes that are present in the considered data set. However, the ground truth map representing this prior knowledge usually does not really, describe all the land cover typologies in the image and the generation of a complete training set represents a time-consuming, difficult and expensive task. This problem may play a relevant role in remote sensing data analysis, since it affects the classification performances of supervised classifiers, which erroneously assign each sample drawn from an unknown class to one of the known classes. In the present paper, a classification strategy is proposed, which allows the identification of samples drawn from unknown classes, through the application of a suitable Bayesian decision rule. The proposed approach is based on support vector machines (SVMs) for the estimation of probability density, functions and on a recursive procedure to generate prior probabilities estimates for both known and unknown classes. For experimental purposes, both a synthetic data set and two real data sets are employed.
Keywords :
Bayes methods; data analysis; image classification; maximum likelihood estimation; probability; remote sensing; support vector machines; Bayesian decision rule; SVM based probability density estimation; classification performances; classification strategy; ground truth map; land cover typologies; partially supervised classification; prior knowledge; prior probabilities; recursive procedure; remote sensing data analysis; supervised classifiers; supervised remotely sensed image classification; support vector machines; Bayesian methods; Data analysis; Image classification; Probability density function; Production; Recursive estimation; Remote sensing; Support vector machine classification; Support vector machines; Training data;
Conference_Titel :
Advances in Techniques for Analysis of Remotely Sensed Data, 2003 IEEE Workshop on
Print_ISBN :
0-7803-8350-8
DOI :
10.1109/WARSD.2003.1295212