Dicotyledon Weed Quantification Algorithm for Selective Herbicide Application in Maize Crops
Morten Stigaard Laursen,Rasmus Nyholm Jørgensen,Henrik Skov Midtiby,Kjeld Jensen,Martin Peter Christiansen,Thomas Mosgaard Giselsson,Anders Krogh Mortensen,Peter Kryger Jensen +7 more
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TL;DR: In this paper, the authors used the monocot and dicot coverage ratio vision (MoDiCoVi) algorithm to estimate the cover of maize fields and performed grid spraying in real time.
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Abstract: The stricter legislation within the European Union for the regulation of herbicides that are prone to leaching causes a greater economic burden on the agricultural industry through taxation. Owing to the increased economic burden, research in reducing herbicide usage has been prompted. High-resolution images from digital cameras support the studying of plant characteristics. These images can also be utilized to analyze shape and texture characteristics for weed identification. Instead of detecting weed patches, weed density can be estimated at a sub-patch level, through which even the identification of a single plant is possible. The aim of this study is to adapt the monocot and dicot coverage ratio vision (MoDiCoVi) algorithm to estimate dicotyledon leaf cover, perform grid spraying in real time, and present initial results in terms of potential herbicide savings in maize. The authors designed and executed an automated, large-scale field trial supported by the Armadillo autonomous tool carrier robot. The field trial consisted of 299 maize plots. Half of the plots (parcels) were planned with additional seeded weeds; the other half were planned with naturally occurring weeds. The in-situ evaluation showed that, compared to conventional broadcast spraying, the proposed method can reduce herbicide usage by 65% without measurable loss in biological effect.
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Citations
RoboWeedSupport - Detection of weed locations in leaf occluded cereal crops using a fully convolutional neural network
TL;DR: A fully convolutional neural network is used to detect the weeds and is able to automatically detect single weed instances in cereal fields despite heavy leaf occlusion.
144
Maize seedling detection under different growth stages and complex field environments based on an improved Faster R–CNN
TL;DR: An improved Faster R–CNN model for a field robot platform (FRP) aimed at automatically extracting image features and quickly and accurately detecting maize seedlings during different growth stages under complex field operation environments is presented, with the goal of preparing for intelligent inter-tillage in maize fields.
141
Is the current state of the art of weed monitoring suitable for site-specific weed management in arable crops?
César Fernández-Quintanilla,J. M. Peña,Dionisio Andújar,José Dorado,Angela Ribeiro,Francisca López-Granados +5 more
TL;DR: Spanish Ministry of Economy, Industry and Competitiveness as discussed by the authorsEDER grant numbers: AGL2014•52465 C4, AGL2017•83325 C4 and RYC2013•14874, RYC2016•20355.
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Automatic Adjustable Spraying Device for Site-Specific Agricultural Application
Ron Berenstein,Yael Edan +1 more
TL;DR: This paper presents a device for accurate pesticide spraying capable of dealing with amorphous shapes and variable-sized targets that can be used in modern agriculture and can be combined with a robotic sprayer navigating autonomously along crop fields.
82
Crop Diversification for Improved Weed Management: A Review
TL;DR: In this paper, the authors discuss how crop diversification supports sustainable weed management, the challenges associated with it, and the future of weed management with respect to the diversification concept.
81
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