Semi-supervised rotation forest based on ensemble margin theory for the classification of hyperspectral image with limited training data

W Feng, Y Quan, G Dauphin, Q Li, L Gao, W Huang… - Information …, 2021 - Elsevier
W Feng, Y Quan, G Dauphin, Q Li, L Gao, W Huang, J Xia, W Zhu, M Xing
Information Sciences, 2021Elsevier
In this paper, an adaptive semi-supervised rotation forest (SSRoF) algorithm is proposed for
the classification of hyperspectral images with limited training data. Our proposition is based
on Rotation Forest (RoF), a classifying technique that has proved to be remarkably accurate
in the context of high-dimensional data. It is adapted to the semi-supervised context, by
increasing the number of training instances in the learning stage, with high-quality
unlabeled samples mined using ensemble margin. SMOTE is adopted to overcome the …
Abstract
In this paper, an adaptive semi-supervised rotation forest (SSRoF) algorithm is proposed for the classification of hyperspectral images with limited training data. Our proposition is based on Rotation Forest (RoF), a classifying technique that has proved to be remarkably accurate in the context of high-dimensional data. It is adapted to the semi-supervised context, by increasing the number of training instances in the learning stage, with high-quality unlabeled samples mined using ensemble margin. SMOTE is adopted to overcome the class imbalance problem. Out-Of-Bag (OOB) instances are used in a second phase to figure out the optimal number of samples to be added to the training set.
Five ensemble methods and five semi-supervised methods are employed as comparisons. The results on three real hyperspectral remote sensing datasets demonstrate the effectiveness of the proposed method.
Elsevier
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