首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Urban flood mapping with an active self-learning convolutional neural network based on TerraSAR-X intensity and interferometric coherence
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Urban flood mapping with an active self-learning convolutional neural network based on TerraSAR-X intensity and interferometric coherence

机译:城市洪水映射与基于Terrasa-x强度和干涉式连贯性的主动自学卷积神经网络

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摘要

Synthetic Aperture Radar (SAR) remote sensing has been widely used for flood mapping and monitoring. Nevertheless, flood detection in urban areas still proves to be particularly challenging by using SAR. In this paper, we assess the roles of SAR intensity and interferometric coherence in urban flood detection using multi-temporal TerraSAR-X data. We further introduce an active self-learning convolution neural network (A-SL CNN) framework to alleviate the effect of a limited annotated training dataset. The proposed framework selects informative unlabeled samples based on a temporal-ensembling CNN model. These samples are subsequently pseudo-labeled by a multi-scale spatial filter. Consistency regularization is introduced to penalize incorrect labels caused by pseudo-labeling. We show results for a case study that is centered on flooded areas in Houston, USA, during hurricane Harvey in August 2017. Our experiments show that multi-temporal intensity (pre- and coevent) plays the most important role in urban flood detection. Adding multi-temporal coherence can increase the reliability of the inundation map considerably. Meanwhile, encouraging results are achieved by the proposed A-SL CNN framework: the kappa statistic is improved from 0.614 to 0.686 in comparison to its supervised counterpart.
机译:合成孔径雷达(SAR)遥感已广泛用于洪水映射和监控。尽管如此,通过使用SAR,城市地区的防洪仍然被证明是特别具有挑战性。在本文中,我们评估了使用多时间的Terrasar-X数据在城市洪水检测中的SAR强度和干涉式一致性的作用。我们进一步介绍了一个主动自学习卷积神经网络(A-SL CNN)框架,以减轻有限的注释训练数据集的效果。所提出的框架基于时间合奏的CNN模型选择信息性未标记的样本。随后通过多尺度空间滤波器伪标记这些样品。介绍了一致性规范化以惩罚由伪标签引起的不正确的标签。我们展示了案例研究的案例研究,该研究是在2017年8月飓风哈维飓风哈维休斯顿的洪水地区。我们的实验表明,多时间强度(预参数)在城市洪水检测中发挥着最重要的作用。添加多时间相干性可以显着提高淹没映射的可靠性。同时,令人鼓舞的结果是通过拟议的A-SL CNN框架实现:与其监督对应物相比,Kappa统计数据从0.614提高到0.686。

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