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对航空多光谱图像进行分类,以量化普通田鼠对农田的影响。

Classification of airborne multispectral imagery to quantify common vole impacts on an agricultural field.

机构信息

Plant Production Group. Faculty of Environmental and Agricultural Sciences, University of Salamanca, Salamanca, Spain.

Department of Cartographic and Land Engineering, University of Salamanca, Ávila, Spain.

出版信息

Pest Manag Sci. 2022 Jun;78(6):2316-2323. doi: 10.1002/ps.6857. Epub 2022 Mar 16.

Abstract

BACKGROUND

The common vole (Microtus arvalis) is a very destructive agricultural pest. Particularly in Europe, its monitoring is essential not only for adequate management and outbreak forecasting, but also for accurately determining the vole's impact on affected fields. In this study, several alternatives for estimating the damage to alfalfa fields by voles through unmanned vehicle systems (UASs) and multispectral cameras are presented. Currently, both the farmers and agencies involved in the integrated pest management (IPM) programs of voles do not have sufficiently precise methods for accurate assessments of the real impact to crops.

RESULTS

Overall, the four multispectral classification methods presented showed similar performances. However, the normalized difference vegetation index (NDVI)-based segmentation exhibited the most accurate and reliable appraisal of the affected areas. Nevertheless, it must be noted that the simplest method, which was based on an automatic classification, provided results similar to those obtained by more complex methods. In addition, a significant direct relationship was found between the number of active burrows and damage to the alfalfa canopy.

CONCLUSION

Unmanned vehicle systems, combined with multispectral imagery classification, are an effective and easily transferable methodology for the assessment and monitoring of common vole damage to agricultural plots. This combination of methods facilitates decision-making processes for IPM control strategies against this pest. © 2022 The Authors. Pest Management Science published by John Wiley & Sons Ltd on behalf of Society of Chemical Industry.

摘要

背景

黑线姬鼠(Microtus arvalis)是一种极具破坏性的农业害虫。尤其是在欧洲,对其进行监测不仅对于进行充分的管理和预测爆发至关重要,而且对于准确确定其对受影响田地的影响也至关重要。在这项研究中,提出了几种通过无人驾驶飞行器系统(UAS)和多光谱相机来估算紫花苜蓿田受到田鼠损害的替代方法。目前,农民和参与田鼠综合虫害管理(IPM)计划的机构都没有足够精确的方法来准确评估对作物的实际影响。

结果

总的来说,提出的四种多光谱分类方法表现相似。然而,基于归一化差异植被指数(NDVI)的分割表现出对受影响区域最准确和可靠的评估。但是,必须注意的是,最简单的方法,即基于自动分类的方法,提供的结果与更复杂的方法相似。此外,还发现活动洞穴的数量与紫花苜蓿冠层的损害之间存在显著的直接关系。

结论

无人驾驶飞行器系统与多光谱图像分类相结合,是评估和监测农业田块中黑线姬鼠损害的一种有效且易于转移的方法。这种方法的结合促进了针对这种害虫的 IPM 控制策略的决策过程。©2022 作者。害虫管理科学由 John Wiley & Sons Ltd 代表化学工业协会出版。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3c13/9313580/278567436f14/PS-78-2316-g002.jpg

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