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Spatio-Spectral Remote Sensing Image Classification With Graph Kernels
This letter presents a graph kernel for spatio-spectral remote sensing image classification with support vector machines (SVMs). The method considers higher order relations in the neighborhood (beyond pairwise spatial relations) to iteratively compute a kernel matrix for SVM learning. The proposed kernel is easy to compute and constitutes a powerful alternative to existing approaches. The capabilities of the method are illustrated in several multi- and hyperspectral remote sensing images acquired over both urban and agricultural areas.
@article{6595, title = {Spatio-Spectral Remote Sensing Image Classification With Graph Kernels}, journal = {IEEE Geoscience and Remote Sensing Letters}, abstract = {This letter presents a graph kernel for spatio-spectral remote sensing image classification with support vector machines (SVMs). The method considers higher order relations in the neighborhood (beyond pairwise spatial relations) to iteratively compute a kernel matrix for SVM learning. The proposed kernel is easy to compute and constitutes a powerful alternative to existing approaches. The capabilities of the method are illustrated in several multi- and hyperspectral remote sensing images acquired over both urban and agricultural areas.}, volume = {7}, number = {4}, pages = {741-745}, organization = {Max-Planck-Gesellschaft}, school = {Biologische Kybernetik}, month = oct, year = {2010}, slug = {6595}, author = {Camps-Valls, G. and Shervashidze, N. and Borgwardt, K.}, month_numeric = {10} }