柑橘黄龙病检测:将特征波段选择与机器学习算法相结合的高光谱数据驱动模型

IF 2.5 2区 农林科学 Q1 AGRONOMY
Kangting Yan , Xiaobing Song , Jing Yang , Junqi Xiao , Xidan Xu , Jun Guo , Hongyun Zhu , Yubin Lan , Yali Zhang
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引用次数: 0

摘要

这项研究探索了柑橘黄龙病(HLB)的快速检测技术,这种病害严重影响全球柑橘生产。基于高光谱技术的方法与机器学习算法相结合,为快速识别 HLB 提供了新思路。算法选择对于处理效率和高光谱数据解读至关重要。使用高光谱仪采集了健康、轻度 HLB 感染和黄斑(与 HLB 无关)柑橘叶片的高光谱数据,并进行了 qPCR 验证。选择了三种预处理方法对光谱数据进行预处理。采用竞争性自适应重加权采样(CARS)和连续投影算法(SPA)从高光谱数据中提取特征带,过滤后的特征带数量占全光谱带的百分比范围分别为 22.87%-28.31% 和 3.27%-4.17% 。然后采用五种不同的算法构建分类模型。经过评估,SPA-STD-SVM 算法组合被证明是最有效的,准确率为 97.46%,召回率为 98.55%。结果表明,合适的机器学习算法可以有效地对柑橘叶片的高光谱数据进行健康、轻度 HLB 感染和黄斑三种不同状态的分类。这为利用高光谱数据区分柑橘黄龙病提供了一种有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Citrus huanglongbing detection: A hyperspectral data-driven model integrating feature band selection with machine learning algorithms
This study explored rapid detection techniques for citrus Huanglongbing (HLB), a disease that severely impacts global citrus production. The method based on hyperspectral technology combined with machine learning algorithms provides new ideas for rapid HLB identification. Algorithm selection is crucial for processing efficiency and hyperspectral data interpretation. Hyperspectral data from healthy, mild HLB-infected, and macular (not related to HLB) citrus leaves were captured using a hyperspectrometer, with qPCR validation. Three preprocessing methods were selected to preprocess the spectral data. Competitive Adaptive Reweighted Sampling (CARS) and Successive Projections Algorithm (SPA) were used to extract feature bands from the hyperspectral data, and the range of the number of filtered feature bands as a percentage of the full band was 22.87%–28.31% and 3.27%–4.17%, respectively. Five distinct algorithms were then employed to construct classification models. Upon evaluation, the SPA-STD-SVM algorithm combination proved most effective, boasting a 97.46% accuracy and a 98.55% recall rate. The results demonstrate that suitable machine learning algorithms can effectively classify the hyperspectral data of citrus leaves in three different states: healthy, mild HLB-infected, and macular. This provides an effective approach for using hyperspectral data to differentiate citrus Huanglongbing.
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来源期刊
Crop Protection
Crop Protection 农林科学-农艺学
CiteScore
6.10
自引率
3.60%
发文量
200
审稿时长
29 days
期刊介绍: The Editors of Crop Protection especially welcome papers describing an interdisciplinary approach showing how different control strategies can be integrated into practical pest management programs, covering high and low input agricultural systems worldwide. Crop Protection particularly emphasizes the practical aspects of control in the field and for protected crops, and includes work which may lead in the near future to more effective control. The journal does not duplicate the many existing excellent biological science journals, which deal mainly with the more fundamental aspects of plant pathology, applied zoology and weed science. Crop Protection covers all practical aspects of pest, disease and weed control, including the following topics: -Abiotic damage- Agronomic control methods- Assessment of pest and disease damage- Molecular methods for the detection and assessment of pests and diseases- Biological control- Biorational pesticides- Control of animal pests of world crops- Control of diseases of crop plants caused by microorganisms- Control of weeds and integrated management- Economic considerations- Effects of plant growth regulators- Environmental benefits of reduced pesticide use- Environmental effects of pesticides- Epidemiology of pests and diseases in relation to control- GM Crops, and genetic engineering applications- Importance and control of postharvest crop losses- Integrated control- Interrelationships and compatibility among different control strategies- Invasive species as they relate to implications for crop protection- Pesticide application methods- Pest management- Phytobiomes for pest and disease control- Resistance management- Sampling and monitoring schemes for diseases, nematodes, pests and weeds.
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