Back to Search Start Over

Crop signalling: A novel crop recognition technique for robotic weed control.

Authors :
Raja, Rekha
Slaughter, David C.
Fennimore, Steven A.
Nguyen, Thuy T.
Vuong, Vivian L.
Sinha, Neelima
Tourte, Laura
Smith, Richard F.
Siemens, Mark C.
Source :
Biosystems Engineering. Nov2019, Vol. 187, p278-291. 14p.
Publication Year :
2019

Abstract

Weed control is a significant cost for speciality crop producers, especially on organic farms. Agricultural operations are still largely dependent on hand weeding that is labour intensive and labour shortages and rising wages have led to a surge in food production costs. Thus, there is an inherent need to automate weed control and contain both labour costs and demands. Automatically distinguishing weeds from the crop plant is a complex problem since weeds come in a wide variety of colours, shapes, and sizes, and crop plant foliage is often overlapped with itself or occluded by the weeds. Current technology in commercial use, cannot reliably and effectively perform the differentiation task in such complex scenarios in real-time. As a solution to this problem, our team at the University of California, Davis has developed a novel concept called crop signalling, a technology to make crop plants machine readable and reliably distinguishable from weeds for automatic weed control. Four different techniques have been investigated and developed to make smart crop marking systems such as a) systemic markers, b) fluorescent proteins, c) plant labels and d) topical markers. Indoor experiments have been conducted for each method. Field experiments, using plant labels and the topical markers methods, have been successfully conducted for real-time weed control in tomato and lettuce. The results demonstrated that robots could automatically detect and distinguish 99.7% of the crop plants with no false positive errors in dense complex outdoor scenes with high weed densities. The crop/weed differentiation was thus effective, fast, reliable, and commercialisation of robotic weed control using the technique may be feasible. • A novel crop signalling technique is presented for robotic weed control. • The method automatically classifies crops from weeds using machine-vision method. • Crop and weed differentiation were effective, fast, and reliable. • Experiments conducted for real-time weed control in tomato and lettuce field. • Commercialisation of robotic weed control using the technique may be feasible. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15375110
Volume :
187
Database :
Academic Search Index
Journal :
Biosystems Engineering
Publication Type :
Academic Journal
Accession number :
139296095
Full Text :
https://doi.org/10.1016/j.biosystemseng.2019.09.011