论文标题
空中图像中洪水区域分类的机器学习方法的跨理概括
Cross-Geography Generalization of Machine Learning Methods for Classification of Flooded Regions in Aerial Images
论文作者
论文摘要
识别受洪水影响的地区是更好地计划和管理后迪沙斯特救济和救援工作所需的重要信息。传统上,分析遥感图像以确定洪水造成的损害程度。分析从板上观察卫星的传感器中获取的数据以检测洪水区域,这些区域可能会受到低空间和时间分辨率的影响。但是,近年来,从无人驾驶汽车(UAV)中获得的图像也已用于评估污水爆炸后损害。实际上,可以通过定制的飞行计划和对地面基础设施的最小依赖来迅速部署基于无人机的平台。这项工作提出了两种方法,用于识别无人机空中图像中洪水泛滥的地区。第一种方法利用基于纹理的无监督分段来检测被洪水泛滥的区域,而第二种方法使用纹理特征上的人工神经网络将图像分类为被洪水泛滥和未渗入的图像。与现有的作品不同,在同一地理区域的图像上对模型进行了训练和测试,这项工作研究了拟议模型在识别跨地理区域淹没地区的性能。使用拟议的基于分割的方法获得的F1得分为0.89,该方法高于现有分类器。拟议方法的鲁棒性表明,可以将其用于识别任何最小或没有用户干预的地区的洪水区域。
Identification of regions affected by floods is a crucial piece of information required for better planning and management of post-disaster relief and rescue efforts. Traditionally, remote sensing images are analysed to identify the extent of damage caused by flooding. The data acquired from sensors onboard earth observation satellites are analyzed to detect the flooded regions, which can be affected by low spatial and temporal resolution. However, in recent years, the images acquired from Unmanned Aerial Vehicles (UAVs) have also been utilized to assess post-disaster damage. Indeed, a UAV based platform can be rapidly deployed with a customized flight plan and minimum dependence on the ground infrastructure. This work proposes two approaches for identifying flooded regions in UAV aerial images. The first approach utilizes texture-based unsupervised segmentation to detect flooded areas, while the second uses an artificial neural network on the texture features to classify images as flooded and non-flooded. Unlike the existing works where the models are trained and tested on images of the same geographical regions, this work studies the performance of the proposed model in identifying flooded regions across geographical regions. An F1-score of 0.89 is obtained using the proposed segmentation-based approach which is higher than existing classifiers. The robustness of the proposed approach demonstrates that it can be utilized to identify flooded regions of any region with minimum or no user intervention.