Introducing a smart monitoring system (PHLIP) for integrated pest management in commercial orchards

M. Zare, M. Pflanz, M. Schirrmann
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引用次数: 0

Abstract

In this study a developed modularized mobile system has been introduced in the framework of the research project PHLIP that enables spatiotemporally high-resolution population monitoring of insects (pests) in orchards, using deep learning (DL) object detection, which can be used as the basis for implementing a site-specific application of insecticides. As a case study, an image annotation database was built with images taken from yellow sticky traps and annotated cherry fruit flies. A faster Region-based Convolutional Neural Network (R-CNN) DL model was applied. The results showed average precision of 0.88 which, indicates that the DL model can perform as a component of an automated system for assessing pest insects in orchards. An important outcome of PHLIP will be the creation of application maps for site-specific insecticide application. Therefore, decreasing the amount of insecticides applied in orchards - which are critically assessed in terms of their environmental impact - should be possible, while the yield efficiency would not be changed. The spatial monitoring will create desirable conditions for a sustainable pest management in horticultural management.
引入智能监测系统(PHLIP),在商业果园进行害虫综合治理
在本研究中,在研究项目PHLIP的框架中引入了一种开发的模块化移动系统,该系统使用深度学习(DL)目标检测,可以实现对果园昆虫(害虫)的时空高分辨率种群监测,这可以作为实施特定地点杀虫剂应用的基础。以黄色粘捕蝇和樱桃果蝇为例,建立了图像标注数据库。采用更快的基于区域的卷积神经网络(R-CNN)深度学习模型。结果表明,DL模型的平均精度为0.88,可以作为果园害虫评估自动化系统的一个组成部分。PHLIP的一个重要成果将是创建特定地点杀虫剂施用的应用地图。因此,在不改变产量效率的情况下,减少果园杀虫剂的用量应该是可能的——这些杀虫剂的环境影响是经过严格评估的。空间监测将为园艺管理中害虫的可持续管理创造良好的条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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