论文标题

基于高分辨率航空影像和DEM的洪水范围映射:隐藏的马尔可夫树方法

Flood Extent Mapping based on High Resolution Aerial Imagery and DEM: A Hidden Markov Tree Approach

论文作者

Jiang, Zhe, Sainju, Arpan Man

论文摘要

洪水范围地图在灾难管理和国家水预测中起着至关重要的作用。近年来,随着众多小型卫星和无人机的部署,高分辨率的光学图像越来越多。但是,分析此类图像数据以提取洪水范围,由于空间异质性而引起的像素类(例如,洪水,洪水,干燥)之间的障碍,障碍物(例如,树冠,云层)和光谱混乱,构成了独特的挑战。现有的机器学习技术通常集中在光谱图像中的光谱和空间特征上,而没有将地理地形完全融合到分类模型中。相比之下,我们最近提出了一种新型的机器学习模型,称为地理隐藏马尔可夫树,该模型以整体方式整合了数字高程模型(即水流方向)的像素和地形约束的光谱特征。本文通过与DEM一起对国家海洋和大气管理局(NOAA)国家大气层调查(NOAA)的高分辨率空中图像进行案例研究评估模型。在飓风马修(Matthew)洪水泛滥期间,在格莱姆斯兰(Grimesland)和金斯顿(Grimesland)和金斯顿(Kinston)城市附近的大量植被洪泛区中选择了三个场景。结果表明,提议的隐藏的马尔可夫树模型在艺术机器学习算法(例如随机森林,渐进式的模型)(例如,渐进式的模型)(例如,F-SCORE的范围均可用来的范围)(例如,F-SCORE的生产者)(例如,F-SCORE的渐进型)的几个状态以优于F-Score(例如随机森林的型号)(我们的数据集中有70%至80%至95%以上。

Flood extent mapping plays a crucial role in disaster management and national water forecasting. In recent years, high-resolution optical imagery becomes increasingly available with the deployment of numerous small satellites and drones. However, analyzing such imagery data to extract flood extent poses unique challenges due to the rich noise and shadows, obstacles (e.g., tree canopies, clouds), and spectral confusion between pixel classes (flood, dry) due to spatial heterogeneity. Existing machine learning techniques often focus on spectral and spatial features from raster images without fully incorporating the geographic terrain within classification models. In contrast, we recently proposed a novel machine learning model called geographical hidden Markov tree that integrates spectral features of pixels and topographic constraints from Digital Elevation Model (DEM) data (i.e., water flow directions) in a holistic manner. This paper evaluates the model through case studies on high-resolution aerial imagery from the National Oceanic and Atmospheric Administration (NOAA) National Geodetic Survey together with DEM. Three scenes are selected in heavily vegetated floodplains near the cities of Grimesland and Kinston in North Carolina during Hurricane Matthew floods in 2016. Results show that the proposed hidden Markov tree model outperforms several state of the art machine learning algorithms (e.g., random forests, gradient boosted model) by an improvement of F-score (the harmonic mean of the user's accuracy and producer's accuracy) from around 70% to 80% to over 95% on our datasets.

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