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Real-time weed-crop classification and localisation technique for robotic weed control in lettuce.

Authors :
Raja, Rekha
Nguyen, Thuy T.
Slaughter, David C.
Fennimore, Steven A.
Source :
Biosystems Engineering. Apr2020, Vol. 192, p257-274. 18p.
Publication Year :
2020

Abstract

Robotic weed control for vegetables is necessary to increase crop productivity, avoid intensive hand weeding as labour shortages in developed countries such as United States has led to a surge in food production costs. However, development of a reliable, intelligent robotic system for weed control in real-time for vegetables still remains a challenging task. The main issue arises while distinguishing crops from weeds in real-time. In this paper, a novel technique to crop signalling to distinguish crops from in-row weeds in complex natural scenarios, such as high weed densities commonly found on organic farms, in real-time using machine vision is presented. Crop signalling is a simple and low-cost technique in which a signalling compound is produced by or applied to the crop and where the signalling compound is machine readable and helps to create visual features that uniquely distinguish the crops from weeds. The crop and weed mapping algorithm presented here were specially designed and developed for a vision-based weeding robot equipped with a micro-jet herbicide-spraying system for weed control in a lettuce field. The proposed technique involves weed/crop mapping and decision making. Experimental results show that the crop detection accuracy was 99.75%, and 98.11% of sprayable weeds were detected. The proposed technique is highly accurate, reliable and more robust than other sensor-based techniques presented in the literature. Image 1 • A real-time in-row weed-crop detection and classification algorithm was proposed. • A novel crop signaling technique was introduced to distinguish crops from weeds. • It utilized computer vision to determine the spatial location of lettuce and weed. • The algorithm was designed to equipped with a micro-jet herbicide-spraying system. • The algorithm outperformed existing methods in terms classification accuracy. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15375110
Volume :
192
Database :
Academic Search Index
Journal :
Biosystems Engineering
Publication Type :
Academic Journal
Accession number :
142166757
Full Text :
https://doi.org/10.1016/j.biosystemseng.2020.02.002