Relationships of Fire Rate of Spread with Spectral and Geometric Features Derived from UAV-Based Photogrammetric Point Clouds

Fire Pub Date : 2024-04-11 DOI:10.3390/fire7040132
J. P. Carbonell-Rivera, Christopher J. Moran, Carl A. Seielstad, Russell A. Parsons, Valentijn Hoff, Luis A. Ruiz, Jesús Torralba, Javier Estornell
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Abstract

Unmanned aerial vehicles (UAVs) equipped with RGB, multispectral, or thermal cameras have demonstrated their potential to provide high-resolution data before, during, and after wildfires and prescribed burns. Pre-burn point clouds generated through the photogrammetric processing of UAV images contain geometrical and spectral information of vegetation, while active fire imagery allows for deriving fire behavior metrics. This paper focuses on characterizing the relationship between the fire rate of spread (RoS) in prescribed burns and a set of independent geometrical, spectral, and neighborhood variables extracted from UAV-derived point clouds. For this purpose, different flights were performed before and during the prescribed burning in seven grasslands and open forest plots. Variables extracted from the point cloud were interpolated to a grid, which was sized according to the RoS semivariogram. Random Forest regressions were applied, obtaining up to 0.56 of R2 in the different plots studied. Geometric variables from the point clouds, such as planarity and the spectral normalized blue–red difference index (NBRDI), are related to fire RoS. In analyzing the results, the minimum value of the eigenentropy (Eigenentropy_MIN), the mean value of the planarity (Planarity_MEAN), and percentile 75 of the NBRDI (NBRDI_P75) obtained the highest feature importance. Plot-specific analyses unveiled distinct combinations of geometric and spectral features, although certain features, such as Planarity_MEAN and the mean value of the grid obtained from the standard deviation of the distance between points (Dist_std_MEAN), consistently held high importance across all plots. The relationships between pre-burning UAV data and fire RoS can complement meteorological and topographic variables, enhancing wildfire and prescribed burn models.
从基于无人机的摄影测量点云得出的火力蔓延率与光谱和几何特征的关系
配备了 RGB、多光谱或热像仪的无人飞行器(UAV)已经证明了其在野火和规定燃烧之前、期间和之后提供高分辨率数据的潜力。通过对无人机图像进行摄影测量处理而生成的燃烧前点云包含植被的几何和光谱信息,而主动火灾图像可用于推导火灾行为指标。本文的重点是描述规定燃烧中的火灾蔓延速度(RoS)与从无人机点云中提取的一组独立几何、光谱和邻域变量之间的关系。为此,在七块草地和疏林地的规定焚烧之前和期间进行了不同的飞行。从点云中提取的变量被插值到网格中,网格大小根据 RoS 半变量图确定。应用随机森林回归法,在研究的不同地块中获得了高达 0.56 的 R2。来自点云的几何变量,如平面度和光谱归一化蓝红差异指数(NBRDI),与火灾 RoS 有关。在对结果进行分析时,特征熵最小值(Eigenentropy_MIN)、平面度平均值(Planarity_MEAN)和 NBRDI 百分位数 75(NBRDI_P75)的特征重要性最高。针对具体地块的分析揭示了几何特征和光谱特征的不同组合,但某些特征,如平面度_MEAN 和根据点间距标准偏差得出的网格平均值(Dist_std_MEAN),在所有地块中始终具有较高的重要性。燃烧前无人机数据与火灾 RoS 之间的关系可以补充气象和地形变量,从而改进野火和规定燃烧模型。
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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