Abstract

BACKGROUNDThe fruit fly Drosophila suzukii, or spotted wing drosophila (SWD), is a serious pest worldwide, attacking many soft‐skinned fruits. An efficient monitoring system that identifies and counts SWD in crops and their surroundings is therefore essential for integrated pest management (IPM) strategies. Existing methods, such as catching flies in liquid bait traps and counting them manually, are costly, time‐consuming and labour‐intensive. To overcome these limitations, we studied insect trap monitoring using image‐based object detection with deep learning.RESULTSBased on an image database with 4753 annotated SWD flies, we trained a ResNet‐18‐based deep convolutional neural network to detect and count SWD, including sex prediction and discrimination. The results show that SWD can be detected with an area under the precision recall curve (AUC) of 0.506 (female) and 0.603 (male) in digital images taken from a static position. For images collected using an unmanned aerial vehicle (UAV), the algorithm detected SWD individuals with an AUC of 0.086 (female) and 0.284 (male). The lower AUC for the aerial imagery was due to lower image quality caused by stabilisation manoeuvres of the UAV during image collection.CONCLUSIONOur results indicate that it is possible to monitor SWD using deep learning and object detection. Moreover, the results demonstrate the potential of UAVs to monitor insect traps, which could be valuable in the development of autonomous insect monitoring systems and IPM. © 2020 The Authors. Pest Management Science published by John Wiley & Sons Ltd on behalf of Society of Chemical Industry.

Highlights

  • Integrated pest management (IPM) aims to solve pest problems while minimising negative effects on the environment and human health.[1]

  • We explored the potential for computer vision-based monitoring of spotted wing drosophila (SWD) in sticky traps on a data set collected with a camera from a static position and a data set collected with the same camera mounted on a flying unmanned aerial vehicle (UAV)

  • After visual inspection of the images in our test data set collected using the camera from a static position, we observed that the model was in general proficient in detecting SWD flies when they were sufficiently separated (Fig. 3a)

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Summary

Introduction

Integrated pest management (IPM) aims to solve pest problems while minimising negative effects on the environment and human health.[1]. Trap contents need to be analysed by an expert to identify the pest species caught This process is costly, time- and labour-intensive, and is prone to error.[3] repeatability, for example monitoring and visiting the same trap multiple times, or having to visit several traps at different locations over a large area, makes this a cumbersome and inefficient process. An efficient monitoring system that identifies and counts SWD in crops and their surroundings is essential for integrated pest management (IPM) strategies. Existing methods, such as catching flies in liquid bait traps and counting them manually, are costly, time-consuming and labour-intensive. We studied insect trap monitoring using image-based object detection with deep learning

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