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Papers/HANet: A Hierarchical Attention Network for Change Detecti...

HANet: A Hierarchical Attention Network for Change Detection With Bitemporal Very-High-Resolution Remote Sensing Images

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

2024-04-14Deep LearningChange Detection
PaperPDFCode(official)

Abstract

Benefiting from the developments in deep learning technology, deep-learning-based algorithms employing automatic feature extraction have achieved remarkable performance on the change detection (CD) task. However, the performance of existing deep-learning-based CD methods is hindered by the imbalance between changed and unchanged pixels. To tackle this problem, a progressive foreground-balanced sampling strategy on the basis of not adding change information is proposed in this article to help the model accurately learn the features of the changed pixels during the early training process and thereby improve detection performance.Furthermore, we design a discriminative Siamese network, hierarchical attention network (HANet), which can integrate multiscale features and refine detailed features. The main part of HANet is the HAN module, which is a lightweight and effective self-attention mechanism. Extensive experiments and ablation studies on two CDdatasets with extremely unbalanced labels validate the effectiveness and efficiency of the proposed method.

Results

TaskDatasetMetricValueModel
Change DetectionSYSU-CDF177.41HANet
Change DetectionSYSU-CDIoU63.14HANet
Change DetectionSYSU-CDKC70.59HANet
Change DetectionSYSU-CDOA89.52HANet
Change DetectionSYSU-CDPrecision78.71HANet
Change DetectionSYSU-CDRecall76.14HANet
Change DetectionGoogleGZ-CDF175.28HANet
Change DetectionGoogleGZ-CDIoU60.36HANet
Change DetectionGoogleGZ-CDKC67.67HANet
Change DetectionGoogleGZ-CDOveral Accuracy88.34HANet
Change DetectionGoogleGZ-CDPrecision78.58HANet
Change DetectionGoogleGZ-CDRecall72.25HANet
Change DetectionLEVIR+F177.56HANet
Change DetectionLEVIR+IoU63.34HANet
Change DetectionLEVIR+KC76.63HANet
Change DetectionLEVIR+OA98.22HANet
Change DetectionLEVIR+Prcision79.7HANet
Change DetectionLEVIR+Recall75.53HANet
Change DetectionDSIFN-CDF162.67HANet
Change DetectionDSIFN-CDIoU45.64HANet
Change DetectionDSIFN-CDKC54.01HANet
Change DetectionDSIFN-CDOverall Accuracy85.76HANet
Change DetectionDSIFN-CDPrecision56.52HANet
Change DetectionDSIFN-CDRecall70.33HANet
Change DetectionWHU-CDF188.16HANet
Change DetectionWHU-CDIoU78.82HANet
Change DetectionWHU-CDKC87.72HANet
Change DetectionWHU-CDOverall Accuracy99.16HANet
Change DetectionWHU-CDPrecision88.3HANet
Change DetectionWHU-CDRecall88.01HANet
Change DetectionLEVIR-CDF190.28HANet
Change DetectionLEVIR-CDF1-score90.28HANet
Change DetectionLEVIR-CDIoU82.27HANet
Change DetectionLEVIR-CDOverall Accuracy99.02HANet
Change DetectionLEVIR-CDPrecision91.21HANet
Change DetectionLEVIR-CDRecall89.36HANet
Change DetectionS2LookingF158.54HANet
Change DetectionS2LookingF1-Score58.54HANet
Change DetectionS2LookingIoU41.38HANet
Change DetectionS2LookingKC58.05HANet
Change DetectionS2LookingOA99.04HANet
Change DetectionS2LookingPrecision61.38HANet
Change DetectionS2LookingRecall55.94HANet
Change DetectionCDD Dataset (season-varying)F189.23HANet
Change DetectionCDD Dataset (season-varying)F1-Score89.23HANet
Change DetectionCDD Dataset (season-varying)IoU90.55HANet
Change DetectionCDD Dataset (season-varying)KC87.7HANet
Change DetectionCDD Dataset (season-varying)Overall Accuracy97.32HANet
Change DetectionCDD Dataset (season-varying)Precision92.86HANet
Change DetectionCDD Dataset (season-varying)Recall85.87HANet

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