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Semi-supervised co-training and active learning framework for hyperspectral image classification

41

Citations

10

References

2015

Year

Abstract

Hyperspectral imaging enables detailed ground cover classification with hundreds of spectral bands at each pixel. Rich spectral information can be a drawback since supervised classification of a hyperspectral image requires a balance between the number of training samples and its dimension. Achieving this balance requires a large number of training or ground truth samples, which is generally difficult, expensive and time-consuming. This led researchers to explore the use of semi-supervised learning techniques where new training samples (unlabeled) are obtained from a small set of available labeled samples without significant effort. In this paper, we propose a semi-supervised approach which adapts active learning to a co-training framework in which the algorithm automatically selects new training samples from abundant unlabeled pixels. Efficacy of the proposed approach is validated using a probabilistic support vector machine classifier. Our experimental results with an Indian Pines hyperspectral image collected by the National Aeronautics and Space Administration Jet Propulsion Laboratory's Airborne Visible-Infrared Imaging Spectrometer indicate that the use of this co-training based approach represents promising strategy in the context of hyperspectral image classification.

References

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