DeepSARFlood: Rapid and automated SAR-based flood inundation mapping using vision transformer-based deep ensembles with uncertainty estimates

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Nirdesh Kumar Sharma , Manabendra Saharia
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引用次数: 0

Abstract

Rapid and automated flood inundation mapping is critical for disaster management. While optical satellites provide valuable data on flood extent and impact, their real-time usage is limited by challenges such as cloud cover, limited vegetation penetration, and the inability to operate at night, making real-time flood assessments difficult. Synthetic Aperture Radar (SAR) satellites can overcome these limitations, allowing for high-resolution flood mapping. However, SAR data remains underutilized due to less availability of training data, and reliance on labor-intensive manual or semi-automated change detection methods. This study introduces a novel end-to-end methodology for generating SAR-based flood inundation maps, by training deep learning models on weak flood labels generated from concurrent optical imagery. These labels are used to train deep learning models based on Convolutional Neural Networks (CNN) and Vision Transformer (ViT) architectures, optimized through multitask learning and model soups. Additionally, we develop a novel gain algorithm to identify diverse ensemble members and estimate uncertainty through deep ensembles. Our results show that ViT-based and CNN-ViT hybrid architectures significantly outperform traditional CNN models, achieving a state-of-the-art Intersection over Union (IoU) score of 0.72 on the Sen1Floods11 test dataset, while also providing uncertainty quantification. These models have been integrated into an open-source and fully automated, Python-based tool called DeepSARFlood, and demonstrated for the Pakistan floods of 2022 and Assam (India) floods of 2020. With its high accuracy, processing speed, and ability to estimate uncertainty, DeepSARFlood is optimized for real-time deployment, processing a 1° × 1° (12,100 km2) area in under 40 s, and will complement upcoming SAR missions like NISAR and Sentinel 1-C for flood mapping.
DeepSARFlood:快速、自动化的基于sar的洪水淹没测绘,使用基于视觉转换器的深度集成和不确定性估计
快速和自动化的洪水淹没测绘对于灾害管理至关重要。虽然光学卫星提供了有关洪水范围和影响的宝贵数据,但它们的实时使用受到云层覆盖、植被覆盖有限以及无法在夜间运行等挑战的限制,使得实时洪水评估变得困难。合成孔径雷达(SAR)卫星可以克服这些限制,实现高分辨率的洪水测绘。然而,由于训练数据的可用性较低,以及依赖于劳动密集型的手动或半自动变化检测方法,SAR数据仍未得到充分利用。本研究引入了一种新的端到端方法,通过对由并发光学图像生成的弱洪水标签进行深度学习模型训练,生成基于sar的洪水淹没地图。这些标签用于训练基于卷积神经网络(CNN)和视觉变压器(ViT)架构的深度学习模型,并通过多任务学习和模型汤进行优化。此外,我们开发了一种新的增益算法来识别不同的集成成员,并通过深度集成估计不确定性。我们的研究结果表明,基于vit的和CNN- vit混合架构明显优于传统的CNN模型,在Sen1Floods11测试数据集上实现了最先进的交汇(IoU)分数0.72,同时还提供了不确定性量化。这些模型已经集成到一个开源的、完全自动化的、基于python的工具DeepSARFlood中,并在2022年巴基斯坦洪水和2020年印度阿萨姆邦洪水中进行了演示。凭借其高精度、处理速度和估计不确定性的能力,DeepSARFlood针对实时部署进行了优化,可在40秒内处理1°× 1°(12,100平方公里)的区域,并将补充即将到来的SAR任务,如NISAR和Sentinel 1- c,用于洪水测绘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
12.20
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