Title
Semi-Supervised Hyperspectral Image Classification via Spatial-Regulated Self-Training.
Abstract
Because there are many unlabeled samples in hyperspectral images and the cost of manual labeling is high, this paper adopts semi-supervised learning method to make full use of many unlabeled samples. In addition, those hyperspectral images contain much spectral information and the convolutional neural networks have great ability in representation learning. This paper proposes a novel semi-supervised hyperspectral image classification framework which utilizes self-training to gradually assign highly confident pseudo labels to unlabeled samples by clustering and employs spatial constraints to regulate self-training process. Spatial constraints are introduced to exploit the spatial consistency within the image to correct and re-assign the mistakenly classified pseudo labels. Through the process of self-training, the sample points of high confidence are gradually increase, and they are added to the corresponding semantic classes, which makes semantic constraints gradually enhanced. At the same time, the increase in high confidence pseudo labels also contributes to regional consistency within hyperspectral images, which highlights the role of spatial constraints and improves the HSIc efficiency. Extensive experiments in HSIc demonstrate the effectiveness, robustness, and high accuracy of our approach.
Year
DOI
Venue
2020
10.3390/rs12010159
REMOTE SENSING
Keywords
Field
DocType
hyperspectral images,semantic constraints,spatial constrain,self-training
Hyperspectral image classification,Computer vision,Artificial intelligence,Geology,Self training
Journal
Volume
Issue
Citations 
12
1
1
PageRank 
References 
Authors
0.40
0
6
Name
Order
Citations
PageRank
Yue Wu111.07
Guifeng Mu210.40
Can Qin310.40
Qiguang Miao435549.69
Wen-Ping Ma550352.88
Xiangrong Zhang649348.70