Abstract
Recently, disease prevention in jute plants has become an urgent topic as a result of the growing demand for finer quality fiber. This research presents a deep learning network called YOLO-JD for detecting jute diseases from images. In the main architecture of YOLO-JD, we integrated three new modules such as Sand Clock Feature Extraction Module (SCFEM), Deep Sand Clock Feature Extraction Module (DSCFEM), and Spatial Pyramid Pooling Module (SPPM) to ex-tract image features effectively. We also built a new large-scale image dataset for jute diseases and pests with ten classes. Compared with other state-of-the-art experiments, YOLO-JD has achieved the best detection accuracy, with an average mAP of 96.63%.
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CITATION STYLE
Li, D., Ahmed, F., Wu, N., & Sethi, A. I. (2022). YOLO-JD: A Deep Learning Network for Jute Diseases and Pests Detection from Images. Plants, 11(7). https://doi.org/10.3390/plants11070937
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