A novel context-sensitive semisupervised classification technique based on support vector machines is proposed. This technique aims at exploiting the SVM method for image classification by properly fusing spectral information with spatial-context information. This results in: i) an increased robustness to noisy training sets in the learning phase of the classifier; ii) a higher and more stable classification accuracy with respect to the specific patterns included in the training set; and iii) a regularized classification map. The main property of the proposed context sensitive semisupervised SVM (CS 4VM) is to adaptively exploit the contextual information in the training phase of the classifier, without any critical assumption on the expected labels of the pixels included in the same neighborhood system. This is done by defining a novel context-sensitive term in the objective function used in the learning of the classifier. In addition, the proposed CS4VM can be integrated with a Marko...

Fusion of Spectral and Spatial Information by a Novel SVM Classification Technique

Bruzzone, Lorenzo;Marconcini, Mattia;Persello, Claudio
2007-01-01

Abstract

A novel context-sensitive semisupervised classification technique based on support vector machines is proposed. This technique aims at exploiting the SVM method for image classification by properly fusing spectral information with spatial-context information. This results in: i) an increased robustness to noisy training sets in the learning phase of the classifier; ii) a higher and more stable classification accuracy with respect to the specific patterns included in the training set; and iii) a regularized classification map. The main property of the proposed context sensitive semisupervised SVM (CS 4VM) is to adaptively exploit the contextual information in the training phase of the classifier, without any critical assumption on the expected labels of the pixels included in the same neighborhood system. This is done by defining a novel context-sensitive term in the objective function used in the learning of the classifier. In addition, the proposed CS4VM can be integrated with a Marko...
2007
IEEE International Geoscience and Remote Sensing Symposium, 2007(IGARSS 2007)
345 E 47TH ST, NEW YORK, NY 10017 USA
IEEE
9781424412129
Bruzzone, Lorenzo; Marconcini, Mattia; Persello, Claudio
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/32068
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