In this paper, a novel context-sensitive classification technique based on Support Vector Machines (CS-SVM) is proposed. This technique aims at exploiting the promising SVM method for classification of 2-D (or n-D) scenes by considering the spatial-context information of the pixel to be analyzed. In greater detail, the proposed architecture properly exploits the spatial-context information for: i) increasing the robustness of the learning procedure of SVMs to the noise present in the training set (mislabeled training samples); ii) regularizing the classification maps. The first property is achieved by introducing a context-sensitive term in the objective function to be minimized for defining the decision hyperplane in the SVM kernel space. The second property is obtained including in the classification procedure of a generic pattern the information of neighboring pixels. Experiments carried out on very high geometrical resolution images confirm the validity of the proposed technique.

A Novel Context-Sensitive SVM for Classification of Remote Sensing Images / Bovolo, Francesca; Bruzzone, Lorenzo; Marconcini, Mattia; Persello, Claudio. - STAMPA. - (2006), pp. 1-14.

A Novel Context-Sensitive SVM for Classification of Remote Sensing Images

Bovolo, Francesca;Bruzzone, Lorenzo;Marconcini, Mattia;Persello, Claudio
2006-01-01

Abstract

In this paper, a novel context-sensitive classification technique based on Support Vector Machines (CS-SVM) is proposed. This technique aims at exploiting the promising SVM method for classification of 2-D (or n-D) scenes by considering the spatial-context information of the pixel to be analyzed. In greater detail, the proposed architecture properly exploits the spatial-context information for: i) increasing the robustness of the learning procedure of SVMs to the noise present in the training set (mislabeled training samples); ii) regularizing the classification maps. The first property is achieved by introducing a context-sensitive term in the objective function to be minimized for defining the decision hyperplane in the SVM kernel space. The second property is obtained including in the classification procedure of a generic pattern the information of neighboring pixels. Experiments carried out on very high geometrical resolution images confirm the validity of the proposed technique.
2006
Trento
Università degli Studi di Trento - Dipartimento di Informatica e Telecomunicazioni
Bovolo, Francesca; Bruzzone, Lorenzo; Marconcini, Mattia; Persello, Claudio
A Novel Context-Sensitive SVM for Classification of Remote Sensing Images / Bovolo, Francesca; Bruzzone, Lorenzo; Marconcini, Mattia; Persello, Claudio. - STAMPA. - (2006), pp. 1-14.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/23178
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