Progressive Cross-Attention Network for Flood Segmentation Using Multispectral Satellite Imagery

Vicky Feliren;Fithrothul Khikmah;Irfan Dwiki Bhaswara;Bahrul I. Nasution;Alex M. Lechner;Muhamad Risqi U. Saputra
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Abstract

In recent years, the integration of deep learning techniques with remote sensing technology has revolutionized the way natural hazards, such as floods, are monitored and managed. However, existing methods for flood segmentation using remote sensing data often overlook the utility of correlative features among multispectral satellite information. In this study, we introduce a progressive cross-attention network (ProCANet), a deep learning model that progressively applies both self- and cross-attention mechanisms to multispectral features, generating optimal feature combinations for flood segmentation. The proposed model was compared with state-of-the-art approaches using the Sen1Floods11 dataset and our bespoke flood data generated for the Citarum River basin, Indonesia. Our model demonstrated superior performance with the highest intersection over union (IoU) score of 0.815. Our results in this study, coupled with the ablation assessment comparing scenarios with and without attention across various modalities, open a promising path for enhancing the accuracy of flood analysis using remote sensing technology.
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基于多光谱卫星图像的逐级交叉关注网络洪水分割
近年来,深度学习技术与遥感技术的结合彻底改变了洪水等自然灾害的监测和管理方式。然而,现有的基于遥感数据的洪水分割方法往往忽略了多光谱卫星信息之间相关特征的利用。在本研究中,我们引入了一种渐进式交叉注意网络(ProCANet),这是一种深度学习模型,可逐步将自注意和交叉注意机制应用于多光谱特征,生成用于洪水分割的最佳特征组合。使用Sen1Floods11数据集和我们为印度尼西亚Citarum河流域生成的定制洪水数据,将提出的模型与最先进的方法进行了比较。我们的模型表现出优异的性能,最高的IoU分数为0.815。我们的研究结果,再加上在不同模式下比较有和没有关注的消融评估,为利用遥感技术提高洪水分析的准确性开辟了一条有希望的道路。
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