Zhu Huibin, Zhang Yuanyuan, Mu Danlei, Bai Lizhen, Zhuang Hao, Li Hui
College of Modern Agricultural Engineering, Kunming University of Science and Technology, Kunming, China.
Shandong Academy of Agricultural Machinery Science, Jinan, China.
Front Plant Sci. 2022 Nov 4;13:1017803. doi: 10.3389/fpls.2022.1017803. eCollection 2022.
A YOLOX convolutional neural network-based weeding robot was designed for weed removal in corn seedling fields, while verifying the feasibility of a blue light laser as a non-contact weeding tool. The robot includes a tracked mobile platform module, a weed identification module, and a robotic arm laser emitter module. Five-degree-of-freedom robotic arm designed according to the actual weeding operation requirements to achieve precise alignment of the laser. When the robot is in operation, it uses the texture and shape of the plants to differentiate between weeds and corn seedlings. The robot then uses monocular ranging to calculate the coordinates of the weeds using the triangle similarity principle, and it controls the end actuator of the robotic arm to emit the laser to kill the weeds. At a driving speed of 0.2 m·s on flat ground, the weed robot's average detection rate for corn seedlings and weeds was 92.45% and 88.94%, respectively. The average weed dry weight prevention efficacy was 85%, and the average seedling injury rate was 4.68%. The results show that the robot can accurately detect weeds in corn fields, and the robotic arm can precisely align the weed position and the blue light laser is effective in removing weeds.
设计了一种基于YOLOX卷积神经网络的除草机器人,用于玉米苗田除草,同时验证蓝光激光作为非接触式除草工具的可行性。该机器人包括履带式移动平台模块、杂草识别模块和机械臂激光发射器模块。根据实际除草操作要求设计了五自由度机械臂,以实现激光的精确对准。机器人运行时,利用植物的纹理和形状区分杂草和玉米苗。然后,机器人利用单目测距,根据三角形相似原理计算杂草的坐标,并控制机械臂末端执行器发射激光杀灭杂草。在平坦地面上以0.2 m·s的行驶速度行驶时,除草机器人对玉米苗和杂草的平均检测率分别为92.45%和88.94%。杂草干重平均防效为85%,平均伤苗率为4.68%。结果表明,该机器人能够准确检测玉米田中的杂草,机械臂能够精确对准杂草位置,蓝光激光除草效果良好。