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Semi-Supervised Deep Learning Classification for Hyperspectral Image Based on Dual-Strategy Sample Selection
by
Fang, Bei
, Chan, Jonathan
, Li, Ying
, Zhang, Haokui
in
Algorithms
/ Artificial intelligence
/ Artificial neural networks
/ Classification
/ co-training
/ Datasets
/ Deep learning
/ hyperspectral image classification
/ Image classification
/ Neural networks
/ Performance enhancement
/ Remote sensing
/ residual networks
/ sample selection
/ Semi-supervised learning
2018
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Semi-Supervised Deep Learning Classification for Hyperspectral Image Based on Dual-Strategy Sample Selection
by
Fang, Bei
, Chan, Jonathan
, Li, Ying
, Zhang, Haokui
in
Algorithms
/ Artificial intelligence
/ Artificial neural networks
/ Classification
/ co-training
/ Datasets
/ Deep learning
/ hyperspectral image classification
/ Image classification
/ Neural networks
/ Performance enhancement
/ Remote sensing
/ residual networks
/ sample selection
/ Semi-supervised learning
2018
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Do you wish to request the book?
Semi-Supervised Deep Learning Classification for Hyperspectral Image Based on Dual-Strategy Sample Selection
by
Fang, Bei
, Chan, Jonathan
, Li, Ying
, Zhang, Haokui
in
Algorithms
/ Artificial intelligence
/ Artificial neural networks
/ Classification
/ co-training
/ Datasets
/ Deep learning
/ hyperspectral image classification
/ Image classification
/ Neural networks
/ Performance enhancement
/ Remote sensing
/ residual networks
/ sample selection
/ Semi-supervised learning
2018
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Semi-Supervised Deep Learning Classification for Hyperspectral Image Based on Dual-Strategy Sample Selection
Journal Article
Semi-Supervised Deep Learning Classification for Hyperspectral Image Based on Dual-Strategy Sample Selection
2018
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Overview
This paper studies the classification problem of hyperspectral image (HSI). Inspired by the great success of deep neural networks in Artificial Intelligence (AI), researchers have proposed different deep learning based algorithms to improve the performance of hyperspectral classification. However, deep learning based algorithms always require a large-scale annotated dataset to provide sufficient training. To address this problem, we propose a semi-supervised deep learning framework based on the residual networks (ResNets), which use very limited labeled data supplemented by abundant unlabeled data. The core of our framework is a novel dual-strategy sample selection co-training algorithm, which can successfully guide ResNets to learn from the unlabeled data by making full use of the complementary cues of the spectral and spatial features in HSI classification. Experiments on the benchmark HSI dataset and real HSI dataset demonstrate that, with a small number of training data, our approach achieves competitive performance with maximum improvement of 41% (compare with traditional convolutional neural network (CNN) with 5 initial training samples per class on Indian Pines dataset) for HSI classification as compared with the results from those state-of-the-art supervised and semi-supervised methods.
Publisher
MDPI AG
Subject
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