Dynamic Analysis of Early Stage Pine Wilt Disease in Pinus massoniana Using Ground-level Hyperspectral Imaging

IF 1.5 4区 农林科学 Q2 FORESTRY Forest Science Pub Date : 2023-04-25 DOI:10.1093/forsci/fxad017
Jie Pan, Tianyi Xie, Cheng You, Xiuli Xia
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Abstract

Pine wilt disease (PWD) is caused by the pine wilt nematode and is a tremendous threat to coniferous forests. Remote sensing, particularly hyperspectral remote sensing, has been utilized to identify PWD. However, most studies have focused on distinguishing the spectra between infected and healthy pine trees and ignored further visualization of spectral symptoms, which could greatly improve the pre-visual diagnosis of PWD. This research used the false color feature maps (FCFMs) synthesized using the normalized difference vegetation index (NDVI) and the ratio vegetation index (RVI) calculated from selected feature bands to analyze the changes in the spectral and image dimensions of the hyperspectral data. Our main findings were (1) the confirmed feature bands were 440, 550, 672, 752, 810, and 958 nm; and (2) NDVI (810, 440), NDVI (810, 672), NDVI (550, 672), RVI (810, 550), RVI (810, 672), and RVI (550, 672) were suitable to synthesize the FCFMs. As PWD developed, the color of the infected needles changed from blue and white to red on the NDVI-based feature maps and from blue to red on the RVI-based feature maps. Importantly, the color changes were captured by the FCFMs when the symptoms were not visible on the true color images, indicating the ability to identify PWD during the early infection stage. Study Implications: Many studies on PWD detection using remote sensing only focus on spectral information but ignore image information. In this article, a method was proposed to comprehensively utilize the spectral and image information of hyperspectral data. In addition, the ground-level imaging spectrometer was used to collected hyperspectral data of lateral branches of infected pine trees, which has rarely been the focus of other remote sensing platforms. This research helps to identify PWD as early as possible and thereby reduces the damage of PWD to pine forest resources.
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地面高光谱成像技术对马尾松早期萎蔫病的动态分析
松材萎蔫病是由松材萎蔫线虫引起的,是针叶林的一大威胁。遥感,特别是高光谱遥感,已被用于识别PWD。然而,大多数研究都集中在区分感染松树和健康松树的光谱上,而忽视了对光谱症状的进一步可视化,这可以大大提高PWD的视觉前诊断。本研究利用选择的特征波段计算归一化植被指数(NDVI)和比值植被指数(RVI)合成的假彩色特征图(FCFMs),分析高光谱数据光谱和图像维度的变化。结果表明:(1)确定的特征波段分别为440、550、672、752、810和958 nm;(2) NDVI(810、440)、NDVI(810、672)、NDVI(550、672)、RVI(810、550)、RVI(810、550)、RVI(810、672)和RVI(550、672)适合合成fcfm。随着PWD的发展,受感染针头的颜色在基于ndvi的特征图上从蓝色和白色变为红色,在基于rvi的特征图上从蓝色变为红色。重要的是,当症状在真彩色图像上不可见时,fcfm捕获了颜色变化,这表明在早期感染阶段能够识别PWD。研究启示:目前许多基于遥感的PWD检测研究只关注光谱信息,而忽略了图像信息。本文提出了一种综合利用高光谱数据的光谱和图像信息的方法。此外,利用地面成像光谱仪采集了感染松树侧枝的高光谱数据,这是其他遥感平台很少关注的。本研究有助于尽早发现PWD,从而减少PWD对松林资源的损害。
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来源期刊
Forest Science
Forest Science 农林科学-林学
CiteScore
2.80
自引率
7.10%
发文量
45
审稿时长
3 months
期刊介绍: Forest Science is a peer-reviewed journal publishing fundamental and applied research that explores all aspects of natural and social sciences as they apply to the function and management of the forested ecosystems of the world. Topics include silviculture, forest management, biometrics, economics, entomology & pathology, fire & fuels management, forest ecology, genetics & tree improvement, geospatial technologies, harvesting & utilization, landscape ecology, operations research, forest policy, physiology, recreation, social sciences, soils & hydrology, and wildlife management. Forest Science is published bimonthly in February, April, June, August, October, and December.
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