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Papers/Change Guiding Network: Incorporating Change Prior to Guid...

Change Guiding Network: Incorporating Change Prior to Guide Change Detection in Remote Sensing Imagery

Chengxi Han, Chen Wu, HaoNan Guo, Meiqi Hu, Jiepan Li, Hongruixuan Chen

2024-04-14Edge DetectionChange Detection
PaperPDFCode(official)

Abstract

The rapid advancement of automated artificial intelligence algorithms and remote sensing instruments has benefited change detection (CD) tasks. However, there is still a lot of space to study for precise detection, especially the edge integrity and internal holes phenomenon of change features. In order to solve these problems, we design the Change Guiding Network (CGNet), to tackle the insufficient expression problem of change features in the conventional U-Net structure adopted in previous methods, which causes inaccurate edge detection and internal holes. Change maps from deep features with rich semantic information are generated and used as prior information to guide multi-scale feature fusion, which can improve the expression ability of change features. Meanwhile, we propose a self-attention module named Change Guide Module (CGM), which can effectively capture the long-distance dependency among pixels and effectively overcome the problem of the insufficient receptive field of traditional convolutional neural networks. On four major CD datasets, we verify the usefulness and efficiency of the CGNet, and a large number of experiments and ablation studies demonstrate the effectiveness of CGNet. We're going to open-source our code at https://github.com/ChengxiHAN/CGNet-CD.

Results

TaskDatasetMetricValueModel
Change DetectionSYSU-CDF179.92CGNet
Change DetectionSYSU-CDIoU66.55CGNet
Change DetectionSYSU-CDKC74.31CGNet
Change DetectionSYSU-CDOA91.19CGNet
Change DetectionSYSU-CDPrecision86.37CGNet
Change DetectionSYSU-CDRecall74.37CGNet
Change DetectionGoogleGZ-CDF185.89CGNet
Change DetectionGoogleGZ-CDIoU75.27CGNet
Change DetectionGoogleGZ-CDKC81.45CGNet
Change DetectionGoogleGZ-CDOveral Accuracy93.23CGNet
Change DetectionGoogleGZ-CDPrecision88.07CGNet
Change DetectionGoogleGZ-CDRecall83.82CGNet
Change DetectionLEVIR+F183.68CGNet
Change DetectionLEVIR+IoU71.94CGNet
Change DetectionLEVIR+KC82.97CGNet
Change DetectionLEVIR+OA98.63CGNet
Change DetectionLEVIR+Prcision81.46CGNet
Change DetectionLEVIR+Recall86.02CGNet
Change DetectionDSIFN-CDF160.19CGNet
Change DetectionDSIFN-CDIoU43.05CGNet
Change DetectionDSIFN-CDKC49.34CGNet
Change DetectionDSIFN-CDOverall Accuracy81.71CGNet
Change DetectionDSIFN-CDPrecision47.75CGNet
Change DetectionDSIFN-CDRecall81.38CGNet
Change DetectionWHU-CDF192.59CGNet
Change DetectionWHU-CDIoU86.21CGNet
Change DetectionWHU-CDKC92.33CGNet
Change DetectionWHU-CDOverall Accuracy99.48CGNet
Change DetectionWHU-CDPrecision94.47CGNet
Change DetectionWHU-CDRecall90.79CGNet
Change DetectionLEVIR-CDF192.01CGNet
Change DetectionLEVIR-CDF1-score92.01CGNet
Change DetectionLEVIR-CDIoU85.21CGNet
Change DetectionLEVIR-CDOverall Accuracy99.2CGNet
Change DetectionLEVIR-CDPrecision93.15CGNet
Change DetectionLEVIR-CDRecall90.9CGNet
Change DetectionS2LookingF1-Score64.33CGNet
Change DetectionS2LookingIoU47.41CGNet
Change DetectionS2LookingKC63.93CGNet
Change DetectionS2LookingOA99.2CGNet
Change DetectionS2LookingPrecision70.18CGNet
Change DetectionS2LookingRecall59.38CGNet
Change DetectionCDD Dataset (season-varying)F194.73CGNet
Change DetectionCDD Dataset (season-varying)F1-Score94.73CGNet
Change DetectionCDD Dataset (season-varying)IoU90CGNet
Change DetectionCDD Dataset (season-varying)KC94.02CGNet
Change DetectionCDD Dataset (season-varying)Overall Accuracy98.74CGNet
Change DetectionCDD Dataset (season-varying)Precision93.67CGNet
Change DetectionCDD Dataset (season-varying)Recall95.82CGNet

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