Abstract :
The classification of multisensor data sets, consisting of multitemporal synthetic aperture radar data and optical imagery, is addressed. The concept is based on the decision fusion of different outputs. Each data source is treated separately and classified by a support vector machine (SVM). Instead of fusing the final classification outputs (i.e., land cover classes), the original outputs of each SVM discriminant function are used in the subsequent fusion process. This fusion is performed by another SVM, which is trained on the a priori outputs. In addition, two voting schemes are applied to create the final classification results. The results are compared with well-known parametric and nonparametric classifier methods, i.e., decision trees, the maximum-likelihood classifier, and classifier ensembles. The proposed SVM-based fusion approach outperforms all other approaches and significantly improves the results of a single SVM, which is trained on the whole multisensor data set.
Keywords :
geophysical signal processing; geophysical techniques; optical radar; pattern classification; sensor fusion; support vector machines; synthetic aperture radar; SVM based fusion approach; SVM discriminant function; classifier ensembles; decision fusion; decision trees; maximum likelihood classifier; multisensor data classification; multitemporal synthetic aperture radar data; optical imagery; support vector machine fusion; voting schemes; Data fusion; multisensor imagery; multispectral data; support vector machines (SVM); synthetic aperture radar (SAR) data;