苗木
杂草
阶段(地层学)
领域(数学)
农学
杂草防治
农业工程
环境科学
生物
数学
工程类
古生物学
纯数学
作者
Xiangpeng Fan,Xiujuan Chai,Jianping Zhou,Tan Sun
摘要
The precision spraying robot dispensing herbicides only on unwanted plants based on machine vision detection is the most appropriate approach to ensure the sustainable agro-ecosystem and the minimum impact of nuisance weeds. However, the coexistence of crops and a variety of weeds, similar targets and uneven weed distribution makes reliable weed detection difficult, leading to serious limitations in the application of deep learning method to target spraying in the field environment. In this paper, 4694 representative images are acquired from cotton field scenario as the data basis for deep learning model. A novel weed detection model is constructed by employing CAM module, BiFPN structure and Bilinear interpolation algorithm. The proposed network can effectively learn the deep information and distinguish cotton seedlings from weeds in various complicated growth states. Evaluation experiments on our constructed dataset indicate that the proposed method reaches an mAP of 98.43% with faster inference speed. Our proposed weed detection model is also deployed in the spraying robot, and field trials are conducted for detection and spraying, which could maintain the excellent performance with mAP of 97.42% and effective spraying rate of 98.93%. The ability to successfully execute the weed detection and herbicide spraying management in the field lays foundation for targeted spraying in precision weed control, which has an excellent impact on cotton cultivation and growth.
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