Poster + Paper
13 June 2023 Enhancing grain facility management with AI-based insect detection and identification system
Querriel Arvy Mendoza, Lester Pordesimo, Mitchell Neilsen
Author Affiliations +
Conference Poster
Abstract
This research paper presents an AI-based insect detection system that uses an affordable and power-saving selfcontained computer - the Jetson Nano, a manual focus camera, and a trained Convolutional Neural Network (CNN). The system addresses the need for real-time monitoring and detection of insect pests in grain storage and food facilities, which is crucial for effective insect control and decision-making. The camera-based monitoring system employs CNN to detect and identify small-scale stored grain insect pests. The Jetson Nano processes insect images captured by the camera using the trained machine learning model. The system's effectiveness is evaluated by computing F1 scores, and the accuracy is analyzed under varying illumination settings, including white LED light, yellow LED light, and the absence of any light source. Taking adult warehouse beetles (Trogoderma variabile) and cigarette beetles (Lasioderma serricorne (F.)) as test cases, the system was found to accurately detect the presence and type of insects, making it an affordable and efficient solution for identifying and monitoring insect infestations in stored product facilities. This automated insect detection system can reduce pest control costs, save producers time and energy, and maintain product quality. The proposed system offers a practical solution for automated insect detection in grain storage and food facilities. The low-cost and low-power Jetson Nano makes the system affordable and accessible for system developers and ultimately for a wide range of producers. The system's ability to detect and identify insect pests in real time enables quick decision-making and effective pest control management. The results demonstrate that the proposed system is a promising approach for automated insect detection and monitoring in stored product facilities.
© (2023) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Querriel Arvy Mendoza, Lester Pordesimo, and Mitchell Neilsen "Enhancing grain facility management with AI-based insect detection and identification system", Proc. SPIE 12545, Sensing for Agriculture and Food Quality and Safety XV, 125450I (13 June 2023); https://doi.org/10.1117/12.2672253
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KEYWORDS
Data modeling

Cameras

Education and training

Machine learning

Machine vision

Agriculture

Imaging systems

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