Krüger Marvin, Zemanek Thomas, Wuttke Dominik, Dinkel Maximilian, Serfling Albrecht, Böckmann Elias
Julius Kühn-Institute, Federal Research Center for Cultivated Plants, Institute for Plant Protection in Horticulture and Urban Green, Braunschweig, Germany.
Wolution GmbH & Co. KG, Planegg, Germany.
Plant Methods. 2024 Oct 3;20(1):156. doi: 10.1186/s13007-024-01273-5.
The automation of pest monitoring is highly important for enhancing integrated pest management in practice. In this context, advanced technologies are becoming increasingly explored. Hyperspectral imaging (HSI) is a technique that has been used frequently in recent years in the context of natural science, and the successful detection of several fungal diseases and some pests has been reported. Various automated measures and image analysis methods offer great potential for enhancing monitoring in practice.
In this study, the use of hyperspectral imaging over a wide spectrum from 400 to 2500 nm is investigated for noninvasive identification and the distinction of healthy plants and plants infested with Myzus persicae (Sulzer) and Frankliniella occidentalis (Pergande) on bell peppers. Pest infestations were carried out in netted areas, and images of single plants and dissected leaves were used to train the decision algorithm. Additionally, a specially modified spraying robot was converted into an autonomous platform used to carry the hyperspectral imaging system to take images under greenhouse conditions. The algorithm was developed via the XGBoost framework with gradient-boosted trees. Signals from specific wavelengths were found to be associated with the damage patterns of different insects. Under confined conditions, M. persicae and F. occidentalis infestations were distinguished from each other and from the uninfested control for single leaves. Differentiation was still possible when small whole plants were used. However, application under greenhouse conditions did not result in a good fit compared to the results of manual monitoring.
Hyperspectral images can be used to distinguish sucking pests on bell peppers on the basis of single leaves and intact potted bell pepper plants under controlled conditions. Wavelength reduction methods offer options for multispectral camera usage in high-grown vegetable greenhouses. The application of automated platforms similar to the one tested in this study could be possible, but for successful pest detection under greenhouse conditions, algorithms should be further developed fully considering real-world conditions.
害虫监测自动化对于在实践中加强综合害虫管理至关重要。在这种背景下,人们越来越多地探索先进技术。高光谱成像(HSI)是近年来在自然科学领域经常使用的一种技术,已有报道成功检测到几种真菌病害和一些害虫。各种自动化措施和图像分析方法为在实践中加强监测提供了巨大潜力。
在本研究中,研究了使用400至2500 nm宽光谱的高光谱成像对甜椒上健康植株以及感染桃蚜(Sulzer)和西花蓟马(Pergande)的植株进行非侵入性识别和区分。在网罩区域进行害虫侵染,并使用单株植物和解剖叶片的图像来训练决策算法。此外,将一个经过特殊改装的喷雾机器人改造成一个自主平台,用于搭载高光谱成像系统在温室条件下拍摄图像。该算法是通过带有梯度提升树的XGBoost框架开发的。发现特定波长的信号与不同昆虫的损害模式相关。在受限条件下,对于单叶,能够区分桃蚜和西花蓟马的侵染以及未受侵染的对照。使用小整株植物时也仍然可以进行区分。然而,与人工监测结果相比,在温室条件下的应用效果并不理想。
在受控条件下,高光谱图像可用于基于单叶和完整盆栽甜椒植株区分甜椒上的刺吸式害虫。波长缩减方法为在高架蔬菜温室中使用多光谱相机提供了选择。类似于本研究中测试的自动化平台的应用是可行的,但为了在温室条件下成功进行害虫检测,应充分考虑实际情况进一步开发算法。