Academic Journal

Early Labeled and Small Loss Selection Semi-Supervised Learning Method for Remote Sensing Image Scene Classification

Bibliographic Details
Title: Early Labeled and Small Loss Selection Semi-Supervised Learning Method for Remote Sensing Image Scene Classification
Authors: Ye Tian, Yuxin Dong, Guisheng Yin
Superior Title: Remote Sensing, Vol 13, Iss 20, p 4039 (2021)
Publisher Information: MDPI AG, 2021.
Publication Year: 2021
Collection: LCC:Science
Subject Terms: remote sensing images, scene classification, semi-supervised classification, small loss selection, Science
Description: The classification of aerial scenes has been extensively studied as the basic work of remote sensing image processing and interpretation. However, the performance of remote sensing image scene classification based on deep neural networks is limited by the number of labeled samples. In order to alleviate the demand for massive labeled samples, various methods have been proposed to apply semi-supervised learning to train the classifier using labeled and unlabeled samples. However, considering the complex contextual relationship and huge spatial differences, the existing semi-supervised learning methods bring different degrees of incorrectly labeled samples when pseudo-labeling unlabeled data. In particular, when the number of labeled samples is small, it affects the generalization performance of the model. In this article, we propose a novel semi-supervised learning method with early labeled and small loss selection. First, the model learns the characteristics of simple samples in the early stage and uses multiple early models to screen out a small number of unlabeled samples for pseudo-labeling based on this characteristic. Then, the model is trained in a semi-supervised manner by combining labeled samples, pseudo-labeled samples, and unlabeled samples. In the training process of the model, small loss selection is used to further eliminate some of the noisy labeled samples to improve the recognition accuracy of the model. Finally, in order to verify the effectiveness of the proposed method, it is compared with several state-of-the-art semi-supervised classification methods. The results show that when there are only a few labeled samples in remote sensing image scene classification, our method is always better than previous methods.
Document Type: article
File Description: electronic resource
Language: English
ISSN: 2072-4292
Relation: https://www.mdpi.com/2072-4292/13/20/4039; https://doaj.org/toc/2072-4292
DOI: 10.3390/rs13204039
Access URL: https://doaj.org/article/0149a9d2cab84fe5bd703d0693745dad
Accession Number: edsdoj.0149a9d2cab84fe5bd703d0693745dad
Database: Directory of Open Access Journals
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