Feb. 13, 2024, 5:48 a.m. | Violet Liu Jason Chen Ans Qureshi Mahla Nejati

cs.CV updates on arXiv.org arxiv.org

Amidst growing food production demands, early plant disease detection is essential to safeguard crops; this study proposes a visual machine learning approach for plant disease detection, harnessing RGB and NIR data collected in real-world conditions through a JAI FS-1600D-10GE camera to build an RGBN dataset. A two-stage early plant disease detection model with YOLOv8 and a sequential CNN was used to train on a dataset with partial labels, which showed a 3.6% increase in mAP compared to a single-stage end-to-end …

build crops cs.ai cs.cv cs.ro data dataset datasets detection disease food food production machine machine learning production study through visual world

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