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Statements

Subject Item
n2:90197
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n14:EPrint bibo:Article n14:ConferenceItemEPrint bibo:AcademicArticle
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n11:978-3-030-16841-4_27
dcterms:title
A Semi-supervised Deep Rule-Based Approach for Remote Sensing Scene Classification
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dcterms:date
2019-04-18
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bibo:abstract
This paper proposes a new approach that is based on the recently introduced semi-supervised deep rule-based classifier for remote sensing scene classification. The proposed approach employs a pre-trained deep convoluational neural network as the feature descriptor to extract high-level discriminative semantic features from the sub-regions of the remote sensing images. This approach is able to self-organize a set of prototype-based IF...THEN rules from few labeled training images through an efficient supervised initialization process, and continuously self-updates the rule base with the unlabeled images in an unsupervised, autonomous, transparent and human-interpretable manner. Highly accurate classification on the unlabeled images is performed at the end of the learning process. Numerical examples demonstrate that the proposed approach is a strong alternative to the state-of-the-art ones.
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1