This paper proposes a novel cost-sensitive active learning (CSAL) technique for the classification of remote sensing images with Support Vector Machines. The proposed technique assumes that the labeling cost of samples during ground survey depends on both the samples accessibility and the traveling time to the considered locations. Thus, it is not equal for the samples on the ground. Accordingly, the proposed method aims at selecting the most informative (the most uncertain and diverse) as well as cost-efficient samples at each iteration of the active learning process. This is accomplished according to three steps. In the first step the most uncertain unlabeled samples are selected by using the multiclass-level uncertainty technique. In the second step, the small (and important) portion of the image, in which the highest density of the most informative samples exists, is selected to effectively limit the study area. The objective of restricting the study area to a small portion of the ...

A Genetic Algorithm Based Cost-Sensitive Active Learning Technique for Classification of Remote Sensing Images

Demir, Begum;Bruzzone, Lorenzo
2012-01-01

Abstract

This paper proposes a novel cost-sensitive active learning (CSAL) technique for the classification of remote sensing images with Support Vector Machines. The proposed technique assumes that the labeling cost of samples during ground survey depends on both the samples accessibility and the traveling time to the considered locations. Thus, it is not equal for the samples on the ground. Accordingly, the proposed method aims at selecting the most informative (the most uncertain and diverse) as well as cost-efficient samples at each iteration of the active learning process. This is accomplished according to three steps. In the first step the most uncertain unlabeled samples are selected by using the multiclass-level uncertainty technique. In the second step, the small (and important) portion of the image, in which the highest density of the most informative samples exists, is selected to effectively limit the study area. The objective of restricting the study area to a small portion of the ...
2012
Tyrrhenian Workshop 2012 on Advances in Radar and Remote Sensing
USA
IEEE
9781467324434
Demir, Begum; L., Minello; Bruzzone, Lorenzo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/96621
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