Monitoring the leaf damage by the rice leafroller with deep learning and ultra‐light UAV
Lang Xia,
Ruirui Zhang,
Liping Chen
et al.
Abstract:BACKGROUNDRice leafroller is a serious threat to the production of rice. Monitoring the damage caused by rice leafroller is essential for effective pest management. Owing to limitations in collecting decent quality images and high‐performing identification methods to recognize the damage, studies recommending fast and accurate identification of rice leafroller damage are rare. In this study, we employed an ultra‐lightweight unmanned aerial vehicle (UAV) to eliminate the influence of the downwash flow field and… Show more
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