Qin Zhenwang, Wang Wensheng, Dammer Karl-Heinz, Guo Leifeng, Cao Zhen
Agricultural Information Institute, Chinese Academy of Agricultural Sciences, Beijing, China.
Leibniz Institute for Agricultural Engineering and Bioeconomy, Department Engineering for Crop Production, Potsdam, Germany.
Front Plant Sci. 2021 Dec 24;12:753603. doi: 10.3389/fpls.2021.753603. eCollection 2021.
To date, unmanned aerial vehicles (UAVs), commonly known as drones, have been widely used in precision agriculture (PA) for crop monitoring and crop spraying, allowing farmers to increase the efficiency of the farming process, meanwhile reducing environmental impact. However, to spray pesticides effectively and safely to the trees in small fields or rugged environments, such as mountain areas, is still an open question. To bridge this gap, in this study, an onboard computer vision (CV) component for UAVs is developed. The system is low-cost, flexible, and energy-effective. It consists of two parts, the hardware part is an Intel Neural Compute Stick 2 (NCS2), and the software part is an object detection algorithm named the Ag-YOLO. The NCS2 is 18 grams in weight, 1.5 watts in energy consumption, and costs about $66. The proposed model Ag-YOLO is inspired by You Only Look Once (YOLO), trained and tested with aerial images of areca plantations, and shows high accuracy (F1 score = 0.9205) and high speed [36.5 frames per second (fps)] on the target hardware. Compared to YOLOv3-Tiny, Ag-YOLO is 2× faster while using 12× fewer parameters. Based on this study, crop monitoring and crop spraying can be synchronized into one process, so that smart and precise spraying can be performed.
迄今为止,无人驾驶飞行器(UAV),通常称为无人机,已在精准农业(PA)中广泛用于作物监测和作物喷洒,使农民能够提高耕作过程的效率,同时减少对环境的影响。然而,要在小田地或崎岖环境(如山区)中有效地、安全地向树木喷洒农药,仍然是一个悬而未决的问题。为了弥补这一差距,在本研究中,开发了一种用于无人机的机载计算机视觉(CV)组件。该系统成本低、灵活性高且节能。它由两部分组成,硬件部分是英特尔神经计算棒2(NCS2),软件部分是一种名为Ag-YOLO的目标检测算法。NCS2重量为18克,能耗为1.5瓦,成本约为66美元。所提出的模型Ag-YOLO受到You Only Look Once(YOLO)的启发,使用槟榔种植园的航拍图像进行训练和测试,并在目标硬件上显示出高精度(F1分数=0.9205)和高速度[每秒36.5帧(fps)]。与YOLOv3-Tiny相比,Ag-YOLO速度快2倍,同时使用的参数少12倍。基于本研究,作物监测和作物喷洒可以同步到一个过程中,从而可以进行智能精准喷洒。