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A procedure for monitoring the phenological status of peach flowers with artificial vision

Hansen, Mark; Veganzones, Alvero; Lafuente, Virtoria; Barreiro, Pilar; Lleo, Lourdes; Val, Jesus

Authors

Mark Hansen Mark.Hansen@uwe.ac.uk
Professor of Machine Vision and Machine Learning

Alvero Veganzones

Virtoria Lafuente

Pilar Barreiro

Lourdes Lleo

Jesus Val



Abstract

Tree flowering is a major event in crop production as it anticipates season yield. However a number of issues may occur during the campaign such as frost, and/or irregular mineral nutrition, among other, that strongly affect this process. On the other hand many fruit species show the phenomenon of “vecería” that refers to the fact that the trees have an increased yield every two year. Therefore, fruit growers and production engineers demand an insitu tool that would allow providing quantitative features regarding the amount of flowering, their phenological status, or even the presence of strong mineral deficiencies which lead to an abnormal development of the sexual organs of the flowers. Artificial vision suites into such a demands since it can be performed in the fields on-board of drones. In this work free online tools such as Makesense, Roboflow and YOLOv4 have been used to train and validate an automated procedure for the identification of the position of the sexual organs of Caterina Peach Flowers in order to relate their status with the nutrition state of the trees.

Citation

Hansen, M., Veganzones, A., Lafuente, V., Barreiro, P., Lleo, L., & Val, J. (2022, December). A procedure for monitoring the phenological status of peach flowers with artificial vision. Paper presented at The XX CIGR World Congress 2022, Kyoto, Japan

Presentation Conference Type Conference Paper (unpublished)
Conference Name The XX CIGR World Congress 2022
Conference Location Kyoto, Japan
Start Date Dec 5, 2022
End Date Dec 10, 2022
Deposit Date Dec 13, 2022
Keywords Phenology, Phenological status, Peach flowers, Artificial vision
Public URL https://uwe-repository.worktribe.com/output/10230255
Related Public URLs http://cigr2022.org/