Convolutional Neural Network-Based Deep Learning Approach for Automatic Flood Mapping Using NovaSAR-1 and Sentinel-1 Data

Ogbaje Andrew, A. Apan, D. R. Paudyal, Kithsiri Perera
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引用次数: 3

Abstract

The accuracy of most SAR-based flood classification and segmentation derived from semi-automated algorithms is often limited due to complicated radar backscatter. However, deep learning techniques, now widely applied in image classifications, have demonstrated excellent potential for mapping complex scenes and improving flood mapping accuracy. Therefore, this study aims to compare the image classification accuracy of three convolutional neural network (CNN)-based encoder–decoders (i.e., U-Net, PSPNet and DeepLapV3) by leveraging the end-to-end ArcGIS Pro workflow. A specific objective of this method consists of labelling and training each CNN model separately on publicly available dual-polarised pre-flood data (i.e., Sentinel-1 and NovaSAR-1) based on the ResNet convolutional backbone via a transfer learning approach. The neural network results were evaluated using multiple model training trials, validation loss, training loss and confusion matrix from test datasets. During testing on the post-flood data, the results revealed that U-Net marginally outperformed the other models. In this study, the overall accuracy and F1-score reached 99% and 98% on the test data, respectively. Interestingly, the segmentation results showed less use of manual cleaning, thus encouraging the use of open-source image data for the rapid, accurate and continuous monitoring of floods using the CNN-based approach.
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基于卷积神经网络的基于NovaSAR-1和Sentinel-1数据的洪水自动测绘方法
由于复杂的雷达后向散射,大多数基于sar的半自动化洪水分类和分割算法的精度往往受到限制。然而,深度学习技术现在广泛应用于图像分类,在绘制复杂场景和提高洪水绘制精度方面表现出了良好的潜力。因此,本研究旨在利用端到端的ArcGIS Pro工作流程,比较三种基于卷积神经网络(CNN)的编码器(即U-Net、PSPNet和DeepLapV3)的图像分类精度。该方法的具体目标包括通过迁移学习方法,在基于ResNet卷积主干的公开双极化洪水前数据(即Sentinel-1和NovaSAR-1)上分别标记和训练每个CNN模型。使用多个模型训练试验、验证损失、训练损失和来自测试数据集的混淆矩阵对神经网络结果进行评估。在对洪水后数据的测试中,结果显示U-Net略微优于其他模型。在本研究中,测试数据的总体准确率和F1-score分别达到99%和98%。有趣的是,分割结果显示较少使用人工清洗,从而鼓励使用开源图像数据,使用基于cnn的方法快速,准确和连续地监测洪水。
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