Semi-Supervised Change Detection with Data Augmentation and Adaptive Thresholding for High-Resolution Remote Sensing Images

Change detection (CD) is an important research direction in the field of remote sensing, which aims to analyze the changes in the same area over different periods and is widely used in urban planning and environmental protection. While supervised learning methods in change detection have demonstrate...

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Main Authors: Wuxia Zhang, Xinlong Shu, Siyuan Wu, Songtao Ding
Format: Article
Language:English
Published: MDPI AG 2025-01-01
Series:Remote Sensing
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Online Access:https://www.mdpi.com/2072-4292/17/2/178
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author Wuxia Zhang
Xinlong Shu
Siyuan Wu
Songtao Ding
author_facet Wuxia Zhang
Xinlong Shu
Siyuan Wu
Songtao Ding
author_sort Wuxia Zhang
collection DOAJ
description Change detection (CD) is an important research direction in the field of remote sensing, which aims to analyze the changes in the same area over different periods and is widely used in urban planning and environmental protection. While supervised learning methods in change detection have demonstrated substantial efficacy, they are often hindered by the rising costs associated with data annotation. Semi-supervised methods have attracted increasing interest, offering promising results with limited data labeling. These approaches typically employ strategies such as consistency regularization, pseudo-labeling, and generative adversarial networks. However, they usually face the problems of insufficient data augmentation and unbalanced quality and quantity of pseudo-labeling. To address the above problems, we propose a semi-supervised change detection method with data augmentation and adaptive threshold updating (DA-AT) for high-resolution remote sensing images. Firstly, a channel-level data augmentation (CLDA) technique is designed to enhance the strong augmentation effect and improve consistency regularization so as to address the problem of insufficient feature representation. Secondly, an adaptive threshold (AT) is proposed to dynamically adjust the threshold during the training process to balance the quality and quantity of pseudo-labeling so as to optimize the self-training process. Finally, an adaptive class weight (ACW) mechanism is proposed to alleviate the impact of the imbalance between the changed classes and the unchanged classes, which effectively enhances the learning ability of the model for the changed classes. We verify the effectiveness and robustness of the proposed method on two high-resolution remote sensing image datasets, WHU-CD and LEVIR-CD. We compare our method to five state-of-the-art change detection methods and show that it achieves better or comparable results.
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spelling doaj-art-d7a8be53a46946439eedd8a285ab70be2025-01-24T13:47:38ZengMDPI AGRemote Sensing2072-42922025-01-0117217810.3390/rs17020178Semi-Supervised Change Detection with Data Augmentation and Adaptive Thresholding for High-Resolution Remote Sensing ImagesWuxia Zhang0Xinlong Shu1Siyuan Wu2Songtao Ding3School of Computer Science and Technology, Xi’an University of Posts and Telecommunications, Xi’an 710121, ChinaSchool of Computer Science and Technology, Xi’an University of Posts and Telecommunications, Xi’an 710121, ChinaSchool of Computer Science and Engineering, Xi’an University of Technology, Xi’an 710048, ChinaSchool of Computer Science and Technology, Xi’an University of Posts and Telecommunications, Xi’an 710121, ChinaChange detection (CD) is an important research direction in the field of remote sensing, which aims to analyze the changes in the same area over different periods and is widely used in urban planning and environmental protection. While supervised learning methods in change detection have demonstrated substantial efficacy, they are often hindered by the rising costs associated with data annotation. Semi-supervised methods have attracted increasing interest, offering promising results with limited data labeling. These approaches typically employ strategies such as consistency regularization, pseudo-labeling, and generative adversarial networks. However, they usually face the problems of insufficient data augmentation and unbalanced quality and quantity of pseudo-labeling. To address the above problems, we propose a semi-supervised change detection method with data augmentation and adaptive threshold updating (DA-AT) for high-resolution remote sensing images. Firstly, a channel-level data augmentation (CLDA) technique is designed to enhance the strong augmentation effect and improve consistency regularization so as to address the problem of insufficient feature representation. Secondly, an adaptive threshold (AT) is proposed to dynamically adjust the threshold during the training process to balance the quality and quantity of pseudo-labeling so as to optimize the self-training process. Finally, an adaptive class weight (ACW) mechanism is proposed to alleviate the impact of the imbalance between the changed classes and the unchanged classes, which effectively enhances the learning ability of the model for the changed classes. We verify the effectiveness and robustness of the proposed method on two high-resolution remote sensing image datasets, WHU-CD and LEVIR-CD. We compare our method to five state-of-the-art change detection methods and show that it achieves better or comparable results.https://www.mdpi.com/2072-4292/17/2/178semi-supervised change detectionpseudo-labelingadaptive thresholdunbalancedconsistency regularization
spellingShingle Wuxia Zhang
Xinlong Shu
Siyuan Wu
Songtao Ding
Semi-Supervised Change Detection with Data Augmentation and Adaptive Thresholding for High-Resolution Remote Sensing Images
Remote Sensing
semi-supervised change detection
pseudo-labeling
adaptive threshold
unbalanced
consistency regularization
title Semi-Supervised Change Detection with Data Augmentation and Adaptive Thresholding for High-Resolution Remote Sensing Images
title_full Semi-Supervised Change Detection with Data Augmentation and Adaptive Thresholding for High-Resolution Remote Sensing Images
title_fullStr Semi-Supervised Change Detection with Data Augmentation and Adaptive Thresholding for High-Resolution Remote Sensing Images
title_full_unstemmed Semi-Supervised Change Detection with Data Augmentation and Adaptive Thresholding for High-Resolution Remote Sensing Images
title_short Semi-Supervised Change Detection with Data Augmentation and Adaptive Thresholding for High-Resolution Remote Sensing Images
title_sort semi supervised change detection with data augmentation and adaptive thresholding for high resolution remote sensing images
topic semi-supervised change detection
pseudo-labeling
adaptive threshold
unbalanced
consistency regularization
url https://www.mdpi.com/2072-4292/17/2/178
work_keys_str_mv AT wuxiazhang semisupervisedchangedetectionwithdataaugmentationandadaptivethresholdingforhighresolutionremotesensingimages
AT xinlongshu semisupervisedchangedetectionwithdataaugmentationandadaptivethresholdingforhighresolutionremotesensingimages
AT siyuanwu semisupervisedchangedetectionwithdataaugmentationandadaptivethresholdingforhighresolutionremotesensingimages
AT songtaoding semisupervisedchangedetectionwithdataaugmentationandadaptivethresholdingforhighresolutionremotesensingimages