Testing early detection of pine processionary moth Thaumetopoea pityocampa nests using UAV-based methods

IF 3.8 2区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION
Neobiota Pub Date : 2023-05-18 DOI:10.3897/neobiota.84.95692
André Garcia, Jean-Charles Samalens, Arnaud Grillet, Paula Soares, M. Branco, I. van Halder, H. Jactel, A. Battisti
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引用次数: 1

Abstract

Early detection of insect infestation is a key to the adoption of control measures appropriated to each local condition. The use of remote sensing was recommended for a quick scanning of large areas, although it does not work well with signals bearing low intensity or items that are difficult to detect. Unmanned Aerial Vehicle (UAV, or drone) may help in getting closer to individual trees and detect atypical signals of small dimensions. The larvae of the pine processionary moth (PPM, Thaumetopoea pityocampa (Denis & Schiffermüller, 1775, Lepidoptera, Notodontidae) build conspicuous silk nests on the external parts of the host plants at the beginning of the winter and their early detection may prompt managers to adopt management techniques. This work aims at testing two deep learning methods (Region-based Convolutional Neural Network - R-CNN and You Only Look Once - YOLO) to detect the nests under three different conditions of host plant species and forest stands in southern Europe. YOLO algorithm provided better results and it allowed us to achieve F1-scores as high as 0.826 and 0.696 for the detection of presence / absence and the individual nests, respectively. The detection of all the nests that can be present on a tree is not achievable with either UAV scanning or traditional ground observation, therefore the integration of the methods may allow the complete efficiency of the surveillance. The use of UAV combined with Artificial Intelligence (AI) image analysis is recommended for further use in forest and urban settings for the detection of the PPM nests. The recommended methods can be extended to other pest systems, especially when specific symptoms can be associated with an insect pest species.
Testing基于无人机的松树行军蛾窝早期检测方法
及早发现虫害是因地制宜采取防治措施的关键。建议使用遥感对大面积区域进行快速扫描,尽管它不适用于低强度信号或难以探测的项目。无人驾驶飞行器(UAV或无人机)可以帮助更接近单个树木并检测小尺寸的非典型信号。松行蛾(PPM, Thaumetopoea pityocampa, Denis & schiffermller, 1775,鳞翅目,无齿蛾科)的幼虫在冬季开始时在寄主植物的外部建立明显的丝巢,它们的早期发现可能促使管理人员采取管理技术。这项工作旨在测试两种深度学习方法(基于区域的卷积神经网络- R-CNN和你只看一次- YOLO)来检测南欧三种不同条件下的宿主植物物种和森林林分的巢穴。YOLO算法提供了更好的结果,在存在/不存在和单个巢穴的检测上,我们的f1得分分别高达0.826和0.696。无人机扫描或传统的地面观测都无法探测到树上的所有巢穴,因此这些方法的整合可能会提高监视的效率。建议在森林和城市环境中进一步使用无人机与人工智能(AI)图像分析相结合的方法来检测PPM巢穴。推荐的方法可以推广到其他害虫系统,特别是当特定症状可能与一种害虫有关时。
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来源期刊
Neobiota
Neobiota Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
8.10
自引率
7.80%
发文量
0
审稿时长
6 weeks
期刊介绍: NeoBiota is a peer-reviewed, open-access, rapid online journal launched to accelerate research on alien species and biological invasions: aquatic and terrestrial, animals, plants, fungi and micro-organisms. The journal NeoBiota is a continuation of the former NEOBIOTA publication series; for volumes 1-8 see http://www.oekosys.tu-berlin.de/menue/neobiota All articles are published immediately upon editorial approval. All published papers can be freely copied, downloaded, printed and distributed at no charge for the reader. Authors are thus encouraged to post the pdf files of published papers on their homepages or elsewhere to expedite distribution. There is no charge for color.
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