A field-tested robotic harvesting system for iceberg lettuce.
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Publication Date
2020-03Journal Title
Journal of field robotics
ISSN
1556-4959
Publisher
John Wiley & Sons Inc.
Volume
37
Issue
2
Pages
225-245
Language
eng
Type
Article
This Version
AM
Physical Medium
Print-Electronic
Metadata
Show full item recordCitation
Birrell, S., Hughes, J., Cai, J. Y., & Iida, F. (2020). A field-tested robotic harvesting system for iceberg lettuce.. Journal of field robotics, 37 (2), 225-245. https://doi.org/10.1002/rob.21888
Abstract
Agriculture provides an unique opportunity for the development of robotic systems; robots must be developed which can operate in harsh conditions and in highly uncertain and unknown environments. One particular challenge is performing manipulation for autonomous robotic harvesting. This paper describes recent and current work to automate the harvesting of iceberg lettuce. Unlike many other produce, iceberg is challenging to harvest as the crop is easily damaged by handling and is very hard to detect visually. A platform called Vegebot has been developed to enable the iterative development and field testing of the solution, which comprises of a vision system, custom end effector and software. To address the harvesting challenges posed by iceberg lettuce a bespoke vision and learning system has been developed which uses two integrated convolutional neural networks to achieve classification and localisation. A custom end effector has been developed to allow damage free harvesting. To allow this end effector to achieve repeatable and consistent harvesting, a control method using force feedback allows detection of the ground. The system has been tested in the field, with experimental evidence gained which demonstrates the success of the vision system to localise and classify the lettuce, and the full integrated system to harvest lettuce. This work demonstrates how existing state-of-the art vision approaches can be applied to agricultural robotics, and mechanical systems can be developed which leverage the environmental constraints imposed in such environments.
Sponsorship
This project was possible thanks to EPSRC Grant EP/L015889/1, the Royal Society – ERA Foundation Translation Award (TA160113), EPSRC Doctoral Training Program ICASE Award RG84492 (co-funded by G's Growers), EPSRC Small Partnership Award RG86264 (in collaboration with G's Growers) and the BBSRC Small Partnership Grant RG81275.
Funder references
Royal Society (TA160113)
BBSRC (BB/IAA/CAMBRIDGE/15)
EPSRC (EP/L015889/1)
Identifiers
External DOI: https://doi.org/10.1002/rob.21888
This record's URL: https://www.repository.cam.ac.uk/handle/1810/293363
Rights
All rights reserved