Applied Sciences (Jul 2020)

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

  • Luca Coviello,
  • Marco Cristoforetti,
  • Giuseppe Jurman,
  • Cesare Furlanello

DOI
https://doi.org/10.3390/app10144870
Journal volume & issue
Vol. 10, no. 14
p. 4870

Abstract

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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.

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