Author
Listed:
- Federico Pallottino
(Consiglio per la ricerca in agricoltura e l’analisi dell’economia agraria (CREA)—Centro di ricerca Ingegneria e Trasformazioni agroalimentari, Via della Pascolare 16, 00015 Monterotondo (Rome), Italy)
- Paolo Menesatti
(Consiglio per la ricerca in agricoltura e l’analisi dell’economia agraria (CREA)—Centro di ricerca Ingegneria e Trasformazioni agroalimentari, Via della Pascolare 16, 00015 Monterotondo (Rome), Italy)
- Simone Figorilli
(Consiglio per la ricerca in agricoltura e l’analisi dell’economia agraria (CREA)—Centro di ricerca Ingegneria e Trasformazioni agroalimentari, Via della Pascolare 16, 00015 Monterotondo (Rome), Italy)
- Francesca Antonucci
(Consiglio per la ricerca in agricoltura e l’analisi dell’economia agraria (CREA)—Centro di ricerca Ingegneria e Trasformazioni agroalimentari, Via della Pascolare 16, 00015 Monterotondo (Rome), Italy)
- Roberto Tomasone
(Consiglio per la ricerca in agricoltura e l’analisi dell’economia agraria (CREA)—Centro di ricerca Ingegneria e Trasformazioni agroalimentari, Via della Pascolare 16, 00015 Monterotondo (Rome), Italy)
- Andrea Colantoni
(Department of Agricultural and Forestry Sciences (DAFNE), Tuscia University, Via San Camillo de Lellis, 01100 Viterbo, Italy)
- Corrado Costa
(Consiglio per la ricerca in agricoltura e l’analisi dell’economia agraria (CREA)—Centro di ricerca Ingegneria e Trasformazioni agroalimentari, Via della Pascolare 16, 00015 Monterotondo (Rome), Italy)
Abstract
This paper presents a machine vision retrofit system designed for upgrading used tractors to allow the control of the tillage implements and enable real-time field operation. The retrofit package comprises an acquisition system placed in the cabin, a front-mounted RGB camera sensor, and a rear-mounted Peiseler encoder wheel. The method combines shape analysis and colorimetric k-nearest neighbor (k-NN) clustering for in-field weed discrimination. This low-cost retrofit package can use interchangeable sensors, supplying flexibility of use with different farming implements. Field tests were conducted within lettuce and broccoli crops to develop the image analysis system for the autonomous control of an intra-row hoeing implement. The performance showed by the system in the trials was judged in terms of accuracy and speed. The system was capable of discriminating weed plants from crop with few errors, achieving a fairly high performance, given the severe degree of weed infestation encountered. The actuation time for image processing, currently implemented in MATLAB integrated with the retrofit kit, was about 7 s. The correct detection rate was higher for lettuce (from 69% to 96%) than for broccoli (from 65% to 79%), also considering the negative effect of shadows. To be implementable, the experimental code needs to be optimized to reduce acquisition and processing times. A software utility was developed in Java to reach a processing time of two images per second.
Suggested Citation
Federico Pallottino & Paolo Menesatti & Simone Figorilli & Francesca Antonucci & Roberto Tomasone & Andrea Colantoni & Corrado Costa, 2018.
"Machine Vision Retrofit System for Mechanical Weed Control in Precision Agriculture Applications,"
Sustainability, MDPI, vol. 10(7), pages 1-9, June.
Handle:
RePEc:gam:jsusta:v:10:y:2018:i:7:p:2209-:d:154947
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Citations
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Cited by:
- Jinkang Jiao & Ying Zang & Chaowen Chen, 2024.
"Key Technologies of Intelligent Weeding for Vegetables: A Review,"
Agriculture, MDPI, vol. 14(8), pages 1-41, August.
- Minhui Li & Redmond R. Shamshiri & Michael Schirrmann & Cornelia Weltzien, 2021.
"Impact of Camera Viewing Angle for Estimating Leaf Parameters of Wheat Plants from 3D Point Clouds,"
Agriculture, MDPI, vol. 11(6), pages 1-17, June.
- Luis Vargas Tamayo & Christopher Thron & Jean Louis Kedieng Ebongue Fendji & Shauna-Kay Thomas & Anna Förster, 2020.
"Cost-Minimizing System Design for Surveillance of Large, Inaccessible Agricultural Areas Using Drones of Limited Range,"
Sustainability, MDPI, vol. 12(21), pages 1-25, October.
- Michał Zawada & Stanisław Legutko & Julia Gościańska-Łowińska & Sebastian Szymczyk & Mateusz Nijak & Jacek Wojciechowski & Mikołaj Zwierzyński, 2023.
"Mechanical Weed Control Systems: Methods and Effectiveness,"
Sustainability, MDPI, vol. 15(21), pages 1-12, October.
- Alberto Assirelli & Giuseppina Caracciolo & Mattia Cacchi & Sandro Sirri & Federico Pallottino & Corrado Costa, 2018.
"Evaluation of the Detachment Force Needed for Mechanical Thinning of Green Peach Fruits,"
Sustainability, MDPI, vol. 10(7), pages 1-10, July.
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