Jhony Carbajal, G. Quispe, Heyul Chavez-Arias, C. Raymundo-Ibañez, Francisco Dominguez
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引用次数: 0
摘要
病害在园艺作物中的发生是影响水果、蔬菜和花卉生产的重要问题之一。定期监测作物,以便及早诊断和使用农药进行治疗,或去除受影响的作物,是减少作物损失的解决方案的一部分。人工监测作物成本高,耗时长,由于对病害了解不足,容易出现错误,并且在作物生长的不同阶段高度重复。这些需求促使人们设计带有视觉传感器的移动机器人,用于在野外导航。机器人是在Autodesk Inventor软件中设计的。导航编程是在Arduino Mega 2560工具中完成的。使用RGB相机进行图像捕获。使用MATLAB R2018B中的算法进行图像处理,以识别疾病及其在图形用户界面中的表示,该算法通过通信总线与Arduino工具进行交互。开发的系统包括一个原型的设计,该原型使用简单而经济的设备,如树莓派,RGB相机,两个电机和传感器,可以自动熏蒸玉米作物。
Mobile Robot for the Spraying of Corn Crops with autonomous navigation camera for the Plains of the Andes
The incidence of the disease in horticultural crops is one of the important problems that affect the production of fruits, vegetables and flowers. Regular monitoring of crops for early diagnosis and treatment with pesticides or removal of the affected crop is part of the solution to minimize crop loss. The monitoring of crops by human labor is expensive, time consuming, prone to errors due to insufficient knowledge of the disease and highly repetitive at different stages of crop growth. These needs have motivated to design the mobile robot with vision sensors for navigation through the field. The robot has been designed in the Autodesk Inventor software. Programming for navigation is done in the Arduino Mega 2560 tool. Image capture has been performed using the RGB camera. Image processing for the identification of the disease and its representation in a graphical user interface has been performed using an algorithm in MATLAB R2018B that interacts with the Arduino tool through a communication bus. The system developed consists of the design of a prototype that uses simple and cost effective equipment such as Raspberry Pi, RGB camera, two motors and sensors that allow the autonomous fumigation of corn crops.