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Insect Pest Trap Development and DL-Based Pest Detection: A Comprehensive Review

Athanasios Passias, Κάρολος-Αλέξανδρος Τσάκαλος, Nick Rigogiannis, Dionisis Voglitsis, Nick Papanikolaou, Maria Michalopoulou, George D. Broufas, Georgios Ch. Sirakoulis

2024IEEE Transactions on AgriFood Electronics21 citationsDOI

Abstract

In the evolving landscape of precision agriculture, the integration of remote pest traps with deep learning technologies marks a critical step forward in remote pest detection, with the potential to substantially improve traditional pest monitoring methods. This article provides a comprehensive review of the developments, challenges, and innovative solutions in creating sensor-based electronic traps and applying deep learning for efficient and autonomous pest identification. By addressing the complexities of sensor integration, data collection, and the need for adaptive algorithms capable of classifying a wide range of insect pests, this review highlights the effective combination of electronic trap advancements with the precision offered by convolutional neural networks. An in-depth analysis of the technological advancements in electronic pest trap development is presented, highlighting improvements in design, efficiency, and sustainability while referring to ongoing and future challenges. Moreover, this article explores deep learning techniques, emphasizing on dataset enhancement and model optimization to overcome traditional challenges such as data scarcity and to improve the robustness of pest detection models. A thorough evaluation of various trap types against 85 unique pests is conducted, with the <italic xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">delta trap</i> emerging as the most versatile, showcasing compatibility with multiple sensors and effectiveness against various pests. This review equips researchers, practitioners, and agricultural developers with critical insights and methodologies that can significantly enhance pest monitoring efficiency, reduce pesticide usage, and support sustainable agricultural practices.

Topics & Concepts

PEST analysisTrap (plumbing)Insect pestBiologyEnvironmental scienceAgronomyBotanyEnvironmental engineeringInsect and Arachnid Ecology and BehaviorSmart Agriculture and AIMosquito-borne diseases and control
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