Mixed spectral-structural classification of very high resolution images with summation kernels


Autoria(s): Tuia D.; Ratle F.; Bruzzone L. (ed.); Notarnicola C. (ed.); Posa F. (ed.)
Data(s)

2008

Resumo

In this paper, mixed spectral-structural kernel machines are proposed for the classification of very-high resolution images. The simultaneous use of multispectral and structural features (computed using morphological filters) allows a significant increase in classification accuracy of remote sensing images. Subsequently, weighted summation kernel support vector machines are proposed and applied in order to take into account the multiscale nature of the scene considered. Such classifiers use the Mercer property of kernel matrices to compute a new kernel matrix accounting simultaneously for two scale parameters. Tests on a Zurich QuickBird image show the relevance of the proposed method : using the mixed spectral-structural features, the classification accuracy increases of about 5%, achieving a Kappa index of 0.97. The multikernel approach proposed provide an overall accuracy of 98.90% with related Kappa index of 0.985.

Identificador

http://serval.unil.ch/?id=serval:BIB_EFDDDDA9D497

doi:10.1117/12.799860

Idioma(s)

en

Fonte

Proceedings of SPIE: Image and signal processing for remote sensing XIV, Dresden, Germany, 23 - 26 September

Tipo

info:eu-repo/semantics/conferenceObject

inproceedings