Hyperspectral image classification via contextual deep learning

被引:0
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作者
Xiaorui Ma
Jie Geng
Hongyu Wang
机构
[1] Dalian University of Technology,Faculty of Electronic Information and Electrical Engineering
关键词
Hyperspectral image classification; Contextual deep learning; Multinomial logistic regression (MLR); Supervised classification;
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摘要
Because the reliability of feature for every pixel determines the accuracy of classification, it is important to design a specialized feature mining algorithm for hyperspectral image classification. We propose a feature learning algorithm, contextual deep learning, which is extremely effective for hyperspectral image classification. On the one hand, the learning-based feature extraction algorithm can characterize information better than the pre-defined feature extraction algorithm. On the other hand, spatial contextual information is effective for hyperspectral image classification. Contextual deep learning explicitly learns spectral and spatial features via a deep learning architecture and promotes the feature extractor using a supervised fine-tune strategy. Extensive experiments show that the proposed contextual deep learning algorithm is an excellent feature learning algorithm and can achieve good performance with only a simple classifier.
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