Article

Semi-supervised hyperspectral image classification using soft sparse multinomial logistic regression

IEEE Geoscience and Remote Sensing Letters

Jun ; José Manuel Bioucas Dias; Antonio  j. Plaza2012

Key information

Authors:

Jun (Jun Li); José Manuel Bioucas Dias (José Manuel Bioucas Dias); Antonio  j. Plaza

Published in

2012

Abstract

In this letter, we propose a new semisupervised learning (SSL) algorithm for remotely sensed hyperspectral image classification. Our main contribution is the development of a new soft sparse multinomial logistic regression model which exploits both hard and soft labels. In our terminology, these labels respectively correspond to labeled and unlabeled training samples. The proposed algorithm represents an innovative contribution with regard to conventional SSL algorithms that only assign hard labels to unlabeled samples. The effectiveness of our proposed method is evaluated via experiments with real hyperspectral images, in which comparisons with conventional semisupervised self-learning algorithms with hard labels are carried out. In such comparisons, our method exhibits state-of-the-art performance.

Publication details

Authors in the community:

Title of the publication container

IEEE Geoscience and Remote Sensing Letters

First page or article number

318

Last page

322

Volume

10

Issue

2

Fields of Science and Technology (FOS)

electrical-engineering-electronic-engineering-information-engineering - Electrical engineering, electronic engineering, information engineering

Publication language (ISO code)

eng - English

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