A machine vision based crop rows detection for agricultural robots

Guo-Quan Jiang, Cui-Jun Zhao, Yong-Sheng Si
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引用次数: 34

Abstract

One approach of navigating agricultural robots to perform different kinds of operations such as weeding, spraying and fertilizing is using a machine vision based row detection system. A new method for robust recognition of crop rows is presented. First, image pre-processing was used to obtain the binarization image; second, the binarization image was divided into several row segments, which created less data points while still reserved information of crop rows; third, vertical projection method was presented to estimate the position of the crop rows for image strips; and last the crop rows were detected by Hough transform. The algorithm requires 70ms to determine all the crop rows. Experimental results show that this approach can quickly and accurately find the crop rows even under different light conditions.
基于机器视觉的农业机器人作物行检测
引导农业机器人执行不同类型的操作(如除草、喷洒和施肥)的一种方法是使用基于机器视觉的行检测系统。提出了一种新的农作物行数鲁棒识别方法。首先,对图像进行预处理,得到二值化图像;其次,将二值化后的图像分成若干行段,在保留作物行信息的同时,减少了数据点的产生;第三,采用垂直投影法估计图像条带的作物行位置;最后利用霍夫变换检测作物行数。该算法需要70毫秒来确定所有作物行。实验结果表明,即使在不同光照条件下,该方法也能快速准确地找到作物行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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