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利用基于无人机系统的遥感和机器学习评估德克萨斯州受黄龙病影响的柑橘的黄龙病严重程度和树冠参数

Assessing Huanglongbing Severity and Canopy Parameters of the Huanglongbing-Affected Citrus in Texas Using Unmanned Aerial System-Based Remote Sensing and Machine Learning.

作者信息

Khuimphukhieo Ittipon, Chavez Jose Carlos, Yang Chuanyu, Pasupuleti Lakshmi Akhijith, Olaniyi Ismail, Ancona Veronica, Mandadi Kranthi K, Jung Jinha, Enciso Juan

机构信息

Texas A&M AgriLife Research & Extension Center, 2415 E. Highway 83, Weslaco, TX 78596, USA.

Department of Plant Production Technology, Faculty of Agricultural Technology, Kalasin University, Kalasin 46000, Thailand.

出版信息

Sensors (Basel). 2024 Nov 29;24(23):7646. doi: 10.3390/s24237646.

Abstract

Huanglongbing (HLB), also known as citrus greening disease, is a devastating disease of citrus. However, there is no known cure so far. Recently, under Section 24(c) of the Federal Insecticide, Fungicide, and Rodenticide Act (FIFRA), a special local need label was approved that allows the trunk injection of antimicrobials such as oxytetracycline (OTC) for HLB management in Florida. The objectives of this study were to use UAS-based remote sensing to assess the effectiveness of OTC on the HLB-affected citrus trees in Texas and to differentiate the levels of HLB severity and canopy health. We also leveraged UAS-based features, along with machine learning, for HLB severity classification. The results show that UAS-based vegetation indices (VIs) were not sufficiently able to differentiate the effects of OTC treatments of HLB-affected citrus in Texas. Yet, several UAS-based features were able to determine the severity levels of HLB and canopy parameters. Among several UAS-based features, the red-edge chlorophyll index (CI) was outstanding in distinguishing HLB severity levels and canopy color, while canopy cover (CC) was the best indicator in recognizing the different levels of canopy density. For HLB severity classification, a fusion of VIs and textural features (TFs) showed the highest accuracy for all models. Furthermore, random forest and eXtreme gradient boosting were promising algorithms in classifying the levels of HLB severity. Our results highlight the potential of using UAS-based features in assessing the severity of HLB-affected citrus.

摘要

黄龙病(HLB),也被称为柑橘绿变病,是一种极具毁灭性的柑橘病害。然而,目前尚无已知的治愈方法。最近,根据《联邦杀虫剂、杀菌剂和灭鼠剂法案》(FIFRA)第24(c)条,一项特殊的地方需求标签获得批准,该标签允许在佛罗里达州通过树干注射抗生素(如土霉素,OTC)来管理黄龙病。本研究的目的是利用基于无人机的遥感技术评估土霉素对德克萨斯州受黄龙病影响的柑橘树的效果,并区分黄龙病的严重程度和树冠健康状况。我们还利用基于无人机的特征,结合机器学习,对黄龙病的严重程度进行分类。结果表明,基于无人机的植被指数(VIs)不足以区分德克萨斯州受黄龙病影响的柑橘树的土霉素处理效果。然而,一些基于无人机的特征能够确定黄龙病的严重程度和树冠参数。在几个基于无人机的特征中,红边叶绿素指数(CI)在区分黄龙病严重程度和树冠颜色方面表现突出,而树冠覆盖率(CC)是识别不同树冠密度水平的最佳指标。对于黄龙病严重程度分类,植被指数和纹理特征(TFs)的融合在所有模型中显示出最高的准确率。此外,随机森林和极端梯度提升是对黄龙病严重程度进行分类的有前景的算法。我们的结果突出了利用基于无人机的特征评估受黄龙病影响的柑橘树严重程度的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9df5/11644864/61c04e386406/sensors-24-07646-g001.jpg

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