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一种用于病虫害识别和预测的自动化系统。

An automatic system for pest recognition and forecasting.

机构信息

Institute of Intelligent Machines, and Hefei Institutes of Physical Science, Chinese Academy of Sciences, Hefei, China.

Intelligent Agriculture Engineering Laboratory of Anhui Province, Hefei, China.

出版信息

Pest Manag Sci. 2022 Feb;78(2):711-721. doi: 10.1002/ps.6684. Epub 2021 Oct 30.

Abstract

BACKGROUND

Pests cause significant damage to agricultural crops and reduce crop yields. Use of manual methods of pest forecasting for integrated pest management is labor-intensive and time-consuming. Here, we present an automatic system for monitoring pests in large fields, with the aim of replacing manual forecasting. The system comprises an automatic detection and counting system and a human-computer data statistical fitting system. Image data sets of the target pests from large fields are first input into the system. The number of pests in the image is then counted both manually and using the automatic system. Finally, a mapping relationship between counts obtained using the automated system and by agricultural experts is established using the statistical fitting system.

RESULTS

Trends in the pest-count curves produced using the manual and automated counting methods were very similar. To sample the number of pests for manual statistics, plants were shaken to transfer the pests from the plant to a plate. Hence, pests hiding within plant crevices were also sampled and included in the count, whereas the automatic method counted only the pests visible in the images. Therefore, the computer index threshold was much lower than the manual index threshold. However, the proposed system correctly reflected trends in pest numbers obtained using computer vision.

CONCLUSION

The experimental results demonstrate that our automatic pest-monitoring system can generate pest grades and can replace manual forecasting methods in large fields. © 2021 Society of Chemical Industry.

摘要

背景

害虫对农作物造成严重损害,降低了作物产量。在病虫害综合管理中,使用人工方法进行害虫预测是劳动密集型且耗时的。在这里,我们提出了一种用于监测大田害虫的自动系统,旨在替代人工预测。该系统包括自动检测和计数系统以及人机数据统计拟合系统。首先将目标害虫的大田图像数据集输入系统。然后,手动和自动系统分别对图像中的害虫数量进行计数。最后,使用统计拟合系统建立自动化系统计数与农业专家计数之间的映射关系。

结果

手动和自动计数方法产生的害虫计数曲线趋势非常相似。为了对害虫进行手动统计取样,需要摇动植物以将害虫从植物转移到盘子上。因此,隐藏在植物缝隙中的害虫也被包括在计数中,而自动方法只计算图像中可见的害虫。因此,计算机索引阈值远低于手动索引阈值。但是,该系统正确反映了计算机视觉获得的害虫数量趋势。

结论

实验结果表明,我们的自动害虫监测系统可以生成害虫等级,可以替代大田中的人工预测方法。© 2021 英国化学学会。

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