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GBCNet: In-Field Grape Berries Counting for Yield Estimation by Dilated CNNs

Luca Coviello, M. Cristoforetti, Giuseppe Jurman, Cesare Furlanello

2020Applied Sciences55 citationsDOIOpen Access PDF

Abstract

We introduce here the Grape Berries Counting Net (GBCNet), a tool for accurate fruit yield estimation from smartphone cameras, by adapting Deep Learning algorithms originally developed for crowd counting. We test GBCNet using cross-validation procedure on two original datasets CR1 and CR2 of grape pictures taken in-field before veraison. A total of 35,668 berries have been manually annotated for the task. GBCNet achieves good performances on both the seven grape varieties dataset CR1, although with a different accuracy level depending on the variety, and on the single variety dataset CR2: in particular Mean Average Error (MAE) ranges from 0.85% for Pinot Gris to 11.73% for Marzemino on CR1 and reaches 7.24% on the Teroldego CR2 dataset.

Topics & Concepts

VeraisonYield (engineering)Artificial intelligenceComputer scienceMathematicsHorticultureVitis viniferaBiologyMetallurgyMaterials scienceSmart Agriculture and AIHorticultural and Viticultural ResearchRemote Sensing in Agriculture
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