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Embedded System-Based Sticky Paper Trap with Deep Learning-Based Insect-Counting Algorithm

József Sütő

2021Electronics44 citationsDOIOpen Access PDF

Abstract

Flying insect detection, identification, and counting are the key components of agricultural pest management. Insect identification is also one of the most challenging tasks in agricultural image processing. With the aid of machine vision and machine learning, traditional (manual) identification and counting can be automated. To achieve this goal, a particular data acquisition device and an accurate insect recognition algorithm (model) is necessary. In this work, we propose a new embedded system-based insect trap with an OpenMV Cam H7 microcontroller board, which can be used anywhere in the field without any restrictions (AC power supply, WIFI coverage, human interaction, etc.). In addition, we also propose a deep learning-based insect-counting method where we offer solutions for problems such as the “lack of data” and “false insect detection”. By means of the proposed trap and insect-counting method, spraying (pest swarming) could then be accurately scheduled.

Topics & Concepts

Computer scienceMicrocontrollerArtificial intelligenceTrap (plumbing)Identification (biology)Machine visionMachine learningEmbedded systemReal-time computingComputer hardwareAlgorithmEngineeringBiologyEnvironmental engineeringBotanySmart Agriculture and AIDate Palm Research StudiesWater Quality Monitoring Technologies
Embedded System-Based Sticky Paper Trap with Deep Learning-Based Insect-Counting Algorithm | Litcius