Detection Model and Spectral Disease Indices for Poplar (Populus L.) Anthracnose Based on Hyperspectral Reflectance

Forests Pub Date : 2024-07-26 DOI:10.3390/f15081309
Zhicheng Jia, Qifeng Duan, Yue Wang, Ke Wu, Hongzhe Jiang
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Abstract

Poplar (Populus L.) anthracnose is an infectious disease that seriously affects the growth and yields of poplar trees, and large-scale poplar infections have led to huge economic losses in the Chinese poplar industry. To efficiently and accurately detect poplar anthracnose for improved prevention and control, this study collected hyperspectral data from the leaves of four types of poplar trees, namely healthy trees and those with black spot disease, early-stage anthracnose, and late-stage anthracnose, and constructed a poplar anthracnose detection model based on machine learning and deep learning. We then comprehensively analyzed poplar anthracnose using advanced hyperspectral-based plant disease detection methodologies. Our research focused on establishing a detection model for poplar anthracnose based on small samples, employing the Design of Experiments (DoE)-based entropy weight method to obtain the best preprocessing combination to improve the detection model’s overall performance. We also analyzed the spectral characteristics of poplar anthracnose by comparing typical feature extraction methods (principal component analysis (PCA), variable combination population analysis (VCPA), and the successive projection algorithm (SPA)) with the vegetation index (VI) method (spectral disease indices (SDIs)) for data dimensionality reduction. The results showed notable improvements in the SDI-based model, which achieved 89.86% accuracy. However, this was inferior to the model based on typical feature extraction methods. Nevertheless, it achieved 100% accuracy for early-stage anthracnose and black spot disease in a controlled environment respectively. We conclude that the SDI-based model is suitable for low-cost detection tasks and is the best poplar anthracnose detection model. These findings contribute to the timely detection of poplar growth and will greatly facilitate the forestry sector’s development.
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基于超光谱反射的杨树炭疽病检测模型和光谱病害指数
杨树炭疽病是一种严重影响杨树生长和产量的传染性病害,大面积的杨树炭疽病给中国杨树产业造成了巨大的经济损失。为了高效、准确地检测杨树炭疽病,提高防控水平,本研究采集了健康杨树、黑斑病杨树、炭疽病早期杨树和炭疽病晚期杨树四种杨树叶片的高光谱数据,构建了基于机器学习和深度学习的杨树炭疽病检测模型。然后,我们利用先进的基于高光谱的植物病害检测方法全面分析了杨树炭疽病。我们的研究重点是建立基于小样本的杨树炭疽病检测模型,采用基于实验设计(DoE)的熵权方法来获得最佳预处理组合,以提高检测模型的整体性能。我们还通过比较典型的特征提取方法(主成分分析法(PCA)、变量组合群体分析法(VCPA)和连续投影算法(SPA))和用于降低数据维度的植被指数(VI)方法(光谱病害指数(SDI)),分析了杨树炭疽病的光谱特征。结果表明,基于 SDI 的模型有显著改进,准确率达到 89.86%。然而,这还不如基于典型特征提取方法的模型。尽管如此,在受控环境下,该模型对早期炭疽病和黑斑病的准确率分别达到了 100%。我们的结论是,基于 SDI 的模型适用于低成本检测任务,是最佳的杨树炭疽病检测模型。这些发现有助于及时发现杨树的生长情况,并将极大地促进林业部门的发展。
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