6533b839fe1ef96bd12a5c31
RESEARCH PRODUCT
Learning the relevant image features with multiple kernels
Mikhail KanevskiGiona MatasciGustau Camps-vallsDevis Tuiasubject
Image classificationComputer scienceFeature extractionComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONImage processingMachine learningcomputer.software_genreKernel (linear algebra)Robustness (computer science)Multiple kernel learning (MKL)Contextual image classificationbusiness.industryModel selectionPattern recognitionSupport vector machineComputingMethodologies_PATTERNRECOGNITIONKernel (image processing)Feature (computer vision)SimpleMKLKernel alignmentSupport vector machine (SVM)Artificial intelligencebusinessGradient descentcomputerdescription
This paper proposes to learn the relevant features of remote sensing images for automatic spatio-spectral classification with the automatic optimization of multiple kernels. The method consists of building dedicated kernels for different sets of bands, contextual or textural features. The optimal linear combination of kernels is optimized through gradient descent on the support vector machine (SVM) objective function. Since a na¨ive implementation is computationally demanding, we propose an efficient model selection procedure based on kernel alignment. The result is a weight — learned from the data — for each kernel where both relevant and meaningless image features emerge after training. Excellent results are observed in both multi and hyperspec-tral image classification, improving standard SVM and other spatio-spectral formulations.
year | journal | country | edition | language |
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2009-01-01 | 2009 IEEE International Geoscience and Remote Sensing Symposium |