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A Low-Cost and Unsupervised Image Recognition Methodology for Yield Estimation in a Vineyard

Academic Article
Publication Date:
2019
abstract:
Yield prediction is a key factor to optimize vineyard management and achieve the desired grape quality. Classical yield estimation methods, which consist of manual sampling within the field on a limited number of plants before harvest, are time-consuming and frequently insufficient to obtain representative yield data. Non-invasive machine vision methods are therefore being investigated to assess and implement a rapid grape yield estimate tool. This study aimed at an automated estimation of yield in terms of cluster number and size from high resolution RGB images (20 MP) taken with a low-cost UAV platform in representative zones of the vigor variability within an experimental vineyard. The flight campaigns were conducted in different light conditions and canopy cover levels for 2017 and 2018 crop seasons. An unsupervised recognition algorithm was applied to derive cluster number and size, which was used for estimating yield per vine. The results related to the number of clusters detected in different conditions, and the weight estimation for each vigor zone are presented. The segmentation results in cluster detection showed a performance of over 85% in partially leaf removal and full ripe condition, and allowed grapevine yield to be estimated with more than 84% of accuracy several weeks before harvest. The application of innovative technologies in field-phenotyping such as UAV, high-resolution cameras and visual computing algorithms enabled a new methodology to assess yield, which can save time and provide an accurate estimate compared to the manual method.
Iris type:
01.01 Articolo in rivista
Keywords:
UAV; computer vision; high throughput field-phenotyping; yield estimation; unsupervised detection
List of contributors:
Cinat, Paolo; Berton, Andrea; Matese, Alessandro; Toscano, Piero; DI GENNARO, SALVATORE FILIPPO
Authors of the University:
BERTON ANDREA
DI GENNARO SALVATORE FILIPPO
MATESE ALESSANDRO
TOSCANO PIERO
Handle:
https://iris.cnr.it/handle/20.500.14243/397670
Published in:
FRONTIERS IN PLANT SCIENCE
Journal
  • Overview

Overview

URL

https://www.frontiersin.org/articles/10.3389/fpls.2019.00559/full
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