Abstract

Unmanned aerial vehicle (UAV)-based remote sensing has limitations in acquiring images before a forest fire, although burn severity can be analyzed by comparing images before and after a fire. Determining the burned surface area is a challenging class in the analysis of burn area severity because it looks unburned in images from aircraft or satellites. This study analyzes the availability of multispectral UAV images that can be used to classify burn severity, including the burned surface class. RedEdge multispectral UAV image was acquired after a forest fire, which was then processed into a mosaic reflectance image. Hundreds of samples were collected for each burn severity class, and they were used as training and validation samples for classification. Maximum likelihood (MLH), spectral angle mapper (SAM), and thresholding of a normalized difference vegetation index (NDVI) were used as classifiers. In the results, all classifiers showed high overall accuracy. The classifiers also showed high accuracy for classification of the burned surface, even though there was some confusion among spectrally similar classes, unburned pine, and unburned deciduous. Therefore, multispectral UAV images can be used to analyze burn severity after a forest fire. Additionally, NDVI thresholding can also be an easy and accurate method, although thresholds should be generalized in the future.

Highlights

  • A fire is a primary disaster in forests, disturbing biodiversity and forest wealth

  • Spectral reflectance curves were plotted for training samples; those are the mean reflectance of each band (Figure 8)

  • This study focuses on unburned pine and burned surface classifications

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Summary

Introduction

A fire is a primary disaster in forests, disturbing biodiversity and forest wealth. Forest fires sometimes destroy human settlements and cause loss of life and property. Korea occur mainly in the dry season (from winter to spring), and are mostly caused by humans. As a forest fire burns off vegetation, soil, organic matter, and moisture, there is a danger of landslides or other secondary disasters during the summer rainy season. In the Republic of Korea, there were. 6,588 forest fires from 2004 to 2018. The total area affected was 11,065 hectares, and the damage amounted to US$ 252 million [1]

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