Such an automated insect detection system can help reduce pest control costs and save producers time and energy while safeguarding the quality of stored products. The results demonstrate that the system is an effective and affordable automated solution to insect detection. Validating using F1 scores and comparing the accuracy based on light sources, the system was tested with a variety of stored grain insect pests and was able to detect and classify adult cigarette beetles and warehouse beetles with acceptable accuracy. With three different lighting situations: white LED light, yellow LED light, and no lighting condition, the detection results are displayed on a monitor. The Jetson Nano runs a trained deep-learning model to detect the presence and species of insects. ![]() The camera captures the image of the insect and passes it to a Jetson Nano for processing. ![]() Detecting, classifying, and monitoring insect pests in a grain storage or food facility in real time is vital to making insect control decisions. The model was validated through a live visual feed. In this study, a basic insect detection system consisting of a manual-focus camera, a Jetson Nano-a low-cost, low-power single-board computer, and a trained deep learning model was developed.
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