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- Title
Semi-supervised classification framework of hyperspectral images based on the fusion evidence entropy.
- Authors
Wang, Chunyang; Xu, Zhifang; Wang, Shuangting; Zhang, Hebing
- Abstract
Increasing attention is being paid to the classification of ground objects using hyperspectral spectrometer images. A key challenge of most hyperspectral classifications is the cost of training samples. It is difficult to acquire enough effective marked label sets using classification model frameworks. In this paper, a semi-supervised classification framework of hyperspectral images is proposed to better solve problems associated with hyperspectral image classification. The proposed method is based on an iteration process, making full use of the small amount of labeled data in a sample set. In addition, a new unlabeled data trainer in the self-training semi-supervised learning framework is explored and implemented by estimating the fusion evidence entropy of unlabeled samples using the minimum trust evaluation and maximum uncertainty. Finally, we employ different machine learning classification methods to compare the classification performance of different hyperspectral images. The experimental results indicate that the proposed approach outperforms traditional state-of-the-art methods in terms of low classification errors and better classification charts using few labeled samples.
- Subjects
HYPERSPECTRAL imaging systems; CLASSIFICATION algorithms; IMAGE analysis; VECTOR graphics; ENTROPY
- Publication
Multimedia Tools & Applications, 2018, Vol 77, Issue 9, p10615
- ISSN
1380-7501
- Publication type
Article
- DOI
10.1007/s11042-017-4686-x