This paper presents an analysis of active learning techniques for the classification of remote sensing images and proposes a novel active learning method based on support vector machines (SVMs). The proposed method exploits a query function for the inclusion of batches of unlabeled samples in the training set, which is based on the evaluation of two criteria: uncertainty and diversity. This query function adopts a stochastic approach to the selection of unlabeled samples, which is based on a function of uncertainty estimated from the distribution of errors on the validation set (which is assumed available for the model selection of the SVM classifier). Experimental results carried out on a very high resolution image confirm the effectiveness of the proposed active learning technique, which results more accurate than standard methods. ©2009 IEEE.

Active Learning for Classification of Remote Sensing Images

Bruzzone, Lorenzo;Persello, Claudio
2009-01-01

Abstract

This paper presents an analysis of active learning techniques for the classification of remote sensing images and proposes a novel active learning method based on support vector machines (SVMs). The proposed method exploits a query function for the inclusion of batches of unlabeled samples in the training set, which is based on the evaluation of two criteria: uncertainty and diversity. This query function adopts a stochastic approach to the selection of unlabeled samples, which is based on a function of uncertainty estimated from the distribution of errors on the validation set (which is assumed available for the model selection of the SVM classifier). Experimental results carried out on a very high resolution image confirm the effectiveness of the proposed active learning technique, which results more accurate than standard methods. ©2009 IEEE.
2009
Proc. IEEE 2009 Int. Geoscience and Remote Sensing Symposium
345 E 47TH ST, NEW YORK, NY 10017 USA
IEEE
9781424433957
Bruzzone, Lorenzo; Persello, Claudio
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/78865
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