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Papers/C2F-SemiCD: A Coarse-to-Fine Semi-Supervised Change Detect...

C2F-SemiCD: A Coarse-to-Fine Semi-Supervised Change Detection Method Based on Consistency Regularization in High-Resolution Remote Sensing Images

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

2024-04-22Semi-supervised Change DetectionChange Detection
PaperPDFCode(official)

Abstract

A high-precision feature extraction model is crucial for change detection (CD). In the past, many deep learning-based supervised CD methods learned to recognize change feature patterns from a large number of labelled bi-temporal images, whereas labelling bi-temporal remote sensing images is very expensive and often time-consuming; therefore, we propose a coarse-to-fine semi-supervised CD method based on consistency regularization (C2F-SemiCD), which includes a coarse-to-fine CD network with a multiscale attention mechanism (C2FNet) and a semi-supervised update method. Among them, the C2FNet network gradually completes the extraction of change features from coarse-grained to fine-grained through multiscale feature fusion, channel attention mechanism, spatial attention mechanism, global context module, feature refine module, initial aggregation module, and final aggregation module. The semi-supervised update method uses the mean teacher method. The parameters of the student model are updated to the parameters of the teacher Model by using the exponential moving average (EMA) method. Through extensive experiments on three datasets and meticulous ablation studies, including crossover experiments across datasets, we verify the significant effectiveness and efficiency of the proposed C2F-SemiCD method. The code will be open at: https://github.com/ChengxiHAN/C2F-SemiCDand-C2FNet.

Results

TaskDatasetMetricValueModel
Change DetectionSYSU-CDF177.97C2FNet
Change DetectionSYSU-CDIoU63.89C2FNet
Change DetectionSYSU-CDKC70.87C2FNet
Change DetectionSYSU-CDOA89.25C2FNet
Change DetectionSYSU-CDPrecision75.44C2FNet
Change DetectionSYSU-CDRecall80.67C2FNet
Change DetectionGoogleGZ-CDF186.86C2FNet
Change DetectionGoogleGZ-CDIoU76.77C2FNet
Change DetectionGoogleGZ-CDKC82.48C2FNet
Change DetectionGoogleGZ-CDOveral Accuracy93.43C2FNet
Change DetectionGoogleGZ-CDPrecision85.46C2FNet
Change DetectionGoogleGZ-CDRecall88.31C2FNet
Change DetectionLEVIR+F179.15C2FNet
Change DetectionLEVIR+IoU65.5C2FNet
Change DetectionLEVIR+KC78.25C2FNet
Change DetectionLEVIR+OA98.26C2FNet
Change DetectionLEVIR+Prcision77.19C2FNet
Change DetectionLEVIR+Recall81.22C2FNet
Change DetectionDSIFN-CDF164.03C2FNet
Change DetectionDSIFN-CDIoU47.09C2FNet
Change DetectionDSIFN-CDKC55.62C2FNet
Change DetectionDSIFN-CDOverall Accuracy86.19C2FNet
Change DetectionDSIFN-CDPrecision57.45C2FNet
Change DetectionDSIFN-CDRecall72.31C2FNet
Change DetectionWHU-CDF194.36C2FNet
Change DetectionWHU-CDIoU89.33C2FNet
Change DetectionWHU-CDKC94.14C2FNet
Change DetectionWHU-CDOverall Accuracy99.56C2FNet
Change DetectionWHU-CDPrecision96.57C2FNet
Change DetectionWHU-CDRecall92.26C2FNet
Change DetectionLEVIR-CDF191.83C2FNet
Change DetectionLEVIR-CDF1-score99.18C2FNet
Change DetectionLEVIR-CDIoU93.69C2FNet
Change DetectionLEVIR-CDOverall Accuracy90.04C2FNet
Change DetectionLEVIR-CDPrecision84.89C2FNet
Change DetectionLEVIR-CDRecall91.4C2FNet
Change DetectionS2LookingF162.83C2FNet
Change DetectionS2LookingF1-Score62.83C2FNet
Change DetectionS2LookingIoU45.8C2FNet
Change DetectionS2LookingKC62.44C2FNet
Change DetectionS2LookingOA99.22C2FNet
Change DetectionS2LookingPrecision74.84C2FNet
Change DetectionS2LookingRecall54.14C2FNet
Change DetectionCDD Dataset (season-varying)F195.93C2FNet
Change DetectionCDD Dataset (season-varying)F1-Score95.93C2FNet
Change DetectionCDD Dataset (season-varying)IoU92.18C2FNet
Change DetectionCDD Dataset (season-varying)KC95.39C2FNet
Change DetectionCDD Dataset (season-varying)Overall Accuracy99.04C2FNet
Change DetectionCDD Dataset (season-varying)Precision95.46C2FNet
Change DetectionCDD Dataset (season-varying)Recall96.41C2FNet
Change DetectionWHU - 20% labeled dataF190.07C2F-SemiCD
Change DetectionWHU - 20% labeled dataIoU81.93C2F-SemiCD
Change DetectionWHU - 20% labeled dataKC89.66C2F-SemiCD
Change DetectionWHU - 20% labeled dataOA99.23C2F-SemiCD
Change DetectionWHU - 20% labeled dataPrecision91.83C2F-SemiCD
Change DetectionWHU - 20% labeled dataRecall88.36C2F-SemiCD
Change DetectionWHU - 5% labeled dataF185.63C2F-SemiCD
Change DetectionWHU - 5% labeled dataIoU74.87C2F-SemiCD
Change DetectionWHU - 5% labeled dataKC85.04C2F-SemiCD
Change DetectionWHU - 5% labeled dataOA98.87C2F-SemiCD
Change DetectionWHU - 5% labeled dataPrecision86.51C2F-SemiCD
Change DetectionWHU - 5% labeled dataRecall84.77C2F-SemiCD
Change DetectionWHU - 10% labeled dataF186.58C2F-SemiCD
Change DetectionWHU - 10% labeled dataIoU76.33C2F-SemiCD
Change DetectionWHU - 10% labeled dataKC86.03C2F-SemiCD
Change DetectionWHU - 10% labeled dataOA98.94C2F-SemiCD
Change DetectionWHU - 10% labeled dataPrecision87.35C2F-SemiCD
Change DetectionWHU - 10% labeled dataRecall85.81C2F-SemiCD
Change DetectionWHU - 40% labeled dataF193.03C2F-SemiCD
Change DetectionWHU - 40% labeled dataIoU86.97C2F-SemiCD
Change DetectionWHU - 40% labeled dataKC92.74C2F-SemiCD
Change DetectionWHU - 40% labeled dataOA99.45C2F-SemiCD
Change DetectionWHU - 40% labeled dataPrecision93.2C2F-SemiCD
Change DetectionWHU - 40% labeled dataRecall92.86C2F-SemiCD
Change DetectionLEVIR-CD - 10% labeled dataF190.8C2F-SemiCD
Change DetectionLEVIR-CD - 10% labeled dataIoU83.15C2F-SemiCD
Change DetectionLEVIR-CD - 10% labeled dataKC90.31C2F-SemiCD
Change DetectionLEVIR-CD - 10% labeled dataOA99.08C2F-SemiCD
Change DetectionLEVIR-CD - 10% labeled dataPrecision92.44C2F-SemiCD
Change DetectionLEVIR-CD - 10% labeled dataRecall89.22C2F-SemiCD
Change DetectionLEVIR-CD - 5% labeled dataF189.97C2F-SemiCD
Change DetectionLEVIR-CD - 5% labeled dataIoU81.76C2F-SemiCD
Change DetectionLEVIR-CD - 5% labeled dataKC89.44C2F-SemiCD
Change DetectionLEVIR-CD - 5% labeled dataOA98.99C2F-SemiCD
Change DetectionLEVIR-CD - 5% labeled dataPrecision91.45C2F-SemiCD
Change DetectionLEVIR-CD - 5% labeled dataRecall88.53C2F-SemiCD
Change DetectionLEVIR-CD - 20% labeled dataF191.16C2F-SemiCD
Change DetectionLEVIR-CD - 20% labeled dataIoU83.75C2F-SemiCD
Change DetectionLEVIR-CD - 20% labeled dataKC90.69C2F-SemiCD
Change DetectionLEVIR-CD - 20% labeled dataOA99.12C2F-SemiCD
Change DetectionLEVIR-CD - 20% labeled dataPrecision93.26C2F-SemiCD
Change DetectionLEVIR-CD - 20% labeled dataRecall89.15C2F-SemiCD
Change DetectionLEVIR-CD - 40% labeled dataF191.67C2F-SemiCD
Change DetectionLEVIR-CD - 40% labeled dataIoU84.62C2F-SemiCD
Change DetectionLEVIR-CD - 40% labeled dataKC91.23C2F-SemiCD
Change DetectionLEVIR-CD - 40% labeled dataOA99.17C2F-SemiCD
Change DetectionLEVIR-CD - 40% labeled dataPrecision93.41C2F-SemiCD
Change DetectionLEVIR-CD - 40% labeled dataRecall89.99C2F-SemiCD

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