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Abstract

Intelligent Systems for Commercial Application in Perennial Horticulture †

by
Everard J. Edwards
1,* and
Peyman Moghadam
2,*
1
CSIRO Agriculture & Food, Pullenvale, QLD 4069, Australia
2
CSIRO Data 61, Pullenvale, QLD 4069, Australia
*
Authors to whom correspondence should be addressed.
Presented at the third International Tropical Agriculture Conference (TROPAG 2019), Brisbane, Australia, 11–13 November 2019.
Proceedings 2019, 36(1), 59; https://doi.org/10.3390/proceedings2019036059
Published: 17 January 2020
(This article belongs to the Proceedings of The Third International Tropical Agriculture Conference (TROPAG 2019))

Abstract

:
Production in perennial horticulture relies on a high degree of crop management, but, due to that perenniality, management decisions need to balance short- and long-term impacts. Optimising these decisions requires information about the plants and it requires that information at multiple time-points. The development of intelligent systems, based on new technologies and new data analytics that take advantage of always available high-performance edge computing, provide a unique opportunity to create a step-change in the management of perennial horticulture crops. For example, combining LiDAR (3D laser imaging) with simultaneous localization and mapping (SLAM) enables the capture of 3D canopy structure on a per tree basis at the orchard scale. Vegetation indices like light penetration, light distribution or foliage density can be estimated directly, in real-time, without a labour-intensive process. Overlaying such an analysis with the output of other sensing modalities extends their application to provide real time, on-farm, decision support by monitoring the condition of every plant in 3D. Even consumer RGB video cameras provide a resolution and frame-rate adequate for a wide range of applications when combined with computer-based image segmentation and machine learning techniques. Such technologies offer the prospect of imaging and analysing a future orchard at any phenological time-point and having a block-level result for the parameter of interest, together with the spatial variability data that will assist in long-term management decisions. In this presentation we will provide examples of these technologies, their current application and how they will be utilised in a future orchard system.

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MDPI and ACS Style

Edwards, E.J.; Moghadam, P. Intelligent Systems for Commercial Application in Perennial Horticulture. Proceedings 2019, 36, 59. https://doi.org/10.3390/proceedings2019036059

AMA Style

Edwards EJ, Moghadam P. Intelligent Systems for Commercial Application in Perennial Horticulture. Proceedings. 2019; 36(1):59. https://doi.org/10.3390/proceedings2019036059

Chicago/Turabian Style

Edwards, Everard J., and Peyman Moghadam. 2019. "Intelligent Systems for Commercial Application in Perennial Horticulture" Proceedings 36, no. 1: 59. https://doi.org/10.3390/proceedings2019036059

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