Real-Time Plant Recognition and Crop Row Navigation for Autonomous Precision Agricultural Sprayer Robot

Fazal Nasir, Muhammad Haris, Bilawal Khan, Muhammad Tufail, Muhammad Tahir Khan, Zhang Dong
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Abstract

This paper presents a vision-based selective spraying technique for an autonomous agricultural sprayer robot. In traditional methods, excessive chemical spraying cause deleterious effects on human health, environment and becomes uneconomical. In order to reduce the agrochemical wastage encounters in a broadcast spraying, a selective plant spraying method is used for crop chemical treatment. The sensor-based approach assisted with YOLOv7 model is deployed on a custom designed robot for recognizing and localizing the lettuce plants in field. The PID-based pressure controller is designed that minimizes the undesirable fluctuations cause by the opening/closing of solenoid-valve-nozzles (SVNs) during spraying. Thus the nozzle's spraying quality is maintained by keeping the pressure constant to a desired value. A visual servoing scheme for row tracking is presented that uses the detected plant's spatial features. The robustness of the visual-based navigation is validated in the real field experiments.
自主精准农业喷洒机器人的实时植物识别与作物行导航
提出了一种基于视觉的自主农业喷雾机器人选择性喷洒技术。在传统的化学喷洒方法中,过量的化学喷洒会对人体健康和环境造成有害影响,而且不经济。为了减少播撒喷洒中农药的浪费,采用植物选择性喷洒的方法对作物进行化学处理。基于传感器的方法辅助YOLOv7模型部署在定制设计的机器人上,用于田间生菜的识别和定位。基于pid的压力控制器的设计,最大限度地减少了在喷涂过程中由电磁阀喷嘴(SVNs)的开启/关闭引起的不良波动。因此,通过保持压力恒定到所需值来保持喷嘴的喷涂质量。提出了一种利用被检测植物的空间特征进行行跟踪的视觉伺服方案。通过现场实验验证了视觉导航的鲁棒性。
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