计算机视觉辅助自动行内除草机

Raghavendra Vedula, Amitash Nanda, Sai Sankar Gochhayat, Asutosh Hota, Rishav Agarwal, K. SanjayReddy, Sandeep Mahapatra, Keshab Kishor Swain, Siddharth Das
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引用次数: 1

摘要

蔬菜作物生产是人类在这个星球上可持续发展的基本过程。技术进步对作物生产的影响是值得称赞的,然而,杂草对作物的生长起着有害的作用。因此,杂草管理已成为提高产量的令人担忧的解决方案。尽管许多人仍在进行人工除草,但劳动力成本、时间和单调已成为作物生产的主要制约因素。化学除草方法的引入影响了农作物的生长。然而,持续使用抗除草剂除草剂对作物和环境造成了严重的影响。因此,对无化学物质食品日益增长的需求导致了对杂草控制替代方法的研究。大多数机械除草方法不能产生准确的除草结果,而且现有的行内除草机存在局限性。介绍了一种自动除草机的结构和工作原理。它由一个驱动器组成,该驱动器用于机械地清除行内杂草。机械除草执行器由集成伺服电机组成,该伺服电机与计算机视觉辅助系统相结合,用于检测作物植株位置并引导除草执行器执行机械除草操作而不损坏作物。图像提取基于一种新颖的算法,该算法与机器人运动编码系统有效配合,精度为正负1cm。采用open - cv开源框架的haar级联分类器,系统准确率达到96.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer Vision Assisted Autonomous Intra-Row Weeder
Vegetable crop production is the rudimentary process for the sustainability of mankind on this planet. Technological advancements have been shaping the crop production in a commendable way nonetheless, weeds play a deleterious role for the growth of the crops. Weed management has hence become the alarming solution for increasing the yield. Even though manual weeding is being practiced by many nonetheless, labor costs, time and tedium have become the major constraints for the crop production. The introduction of the chemical methods of weed control has affected the growth of crops. However, the continuous use of herbicide-resistant weedicides has a serious impact on crops and the environment. So an increasing demand for chemical-free food has led to the investigation of alternative methods of weed control. Most of the methods of mechanical weeding doesn't produce the accurate result and moreover, existing intra-row weeders have limitations. This paper proposes the construction and working of an autonomous mechanical weeder. It consists of an actuator which is developed to mechanically remove intra-row weeds. The mechanically weeding actuator consists of an integrated servo motor which is combined with the computer vision assisted system for detecting the crop plant locations and guiding the weeding actuator to execute mechanical weeding operations without damaging the crops. The image extraction is based on a novel algorithm which effectively works with the encoding system of the robot movement with a precision of plus or minus 1cm. The accuracy of the system is found to be 96.3% using haar cascade classifier using Open-CV open source framework.
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