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Fuzzy Superpixels based Semi-supervised Similarity-constrained CNN for PolSAR Image Classification

Guo, Yuwei; Sun, Zhuangzhuang; Qu, Rong; Jiao, Licheng; Liu, Fang; Zhang, Xiangrong

Fuzzy Superpixels based Semi-supervised Similarity-constrained CNN for PolSAR Image Classification Thumbnail


Authors

Yuwei Guo

Zhuangzhuang Sun

Licheng Jiao

Fang Liu

Xiangrong Zhang



Abstract

Recently, deep learning has been highly successful in image classification. Labeling the PolSAR data, however, is time-consuming and laborious and in response semi-supervised deep learning has been increasingly investigated in PolSAR image classification. Semi-supervised deep learning methods for PolSAR image classification can be broadly divided into two categories, namely pixels-based methods and superpixels-based methods. Pixels-based semi-supervised methods are liable to be affected by speckle noises and have a relatively high computational complexity. Superpixels-based methods focus on the superpixels and ignore tiny detail-preserving represented by pixels. In this paper, a Fuzzy superpixels based Semi-supervised Similarity-constrained CNN (FS-SCNN) is proposed. To reduce the effect of speckle noises and preserve the details, FS-SCNN uses a fuzzy superpixels algorithm to segment an image into two parts, superpixels and undetermined pixels. Moreover, the fuzzy superpixels algorithm can also reduce the number of mixed superpixels and improve classification performance. To exploit unlabeled data effectively, we also propose a Similarity-constrained Convolutional Neural Network (SCNN) model to assign pseudo labels to unlabeled data. The final training set consists of the initial labeled data and these pseudo labeled data. Three PolSAR images are used to demonstrate the excellent classification performance of the FS-SCNN method with data of limited labels.

Citation

Guo, Y., Sun, Z., Qu, R., Jiao, L., Liu, F., & Zhang, X. (2020). Fuzzy Superpixels based Semi-supervised Similarity-constrained CNN for PolSAR Image Classification. Remote Sensing, 12(10), Article 1694. https://doi.org/10.3390/rs12101694

Journal Article Type Article
Acceptance Date May 22, 2020
Online Publication Date May 25, 2020
Publication Date May 25, 2020
Deposit Date May 27, 2020
Publicly Available Date May 27, 2020
Journal Remote Sensing
Electronic ISSN 2072-4292
Publisher MDPI
Peer Reviewed Peer Reviewed
Volume 12
Issue 10
Article Number 1694
DOI https://doi.org/10.3390/rs12101694
Public URL https://nottingham-repository.worktribe.com/output/4517026
Publisher URL https://www.mdpi.com/2072-4292/12/10/1694

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