2023
DOI: 10.21203/rs.3.rs-2673814/v1
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YOLO object detection models can locate and classify broad groups of flower-visiting arthropods in images

Abstract: Develoment of image recognition AI algorithms for flower-visiting arthropods has the potential to revolutionize the way we monitor pollinators. Ecologists need light-weight models that can be deployed in a field setting and can classify with high accuracy. We tested the performance of three deep learning light-weight models, YOLOv5nano, YOLOv5small, and YOLOv7tiny, at object recognition and classification in real time on eight groups of flower-visiting arthropods using open-source image data. These eight group… Show more

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