2022
DOI: 10.48550/arxiv.2208.02394
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End-to-end deep learning for directly estimating grape yield from ground-based imagery

Alexander G. Olenskyj,
Brent S. Sams,
Zhenghao Fei
et al.

Abstract: Yield estimation prior to harvest is a powerful tool in vineyard management, as it allows growers to fine-tune management practices to optimize yield and quality. However, yield estimation is currently performed using manual sampling, which is time-consuming and imprecise. This study demonstrates the applicability of nondestructive proximal imaging combined with deep learning for yield estimation in vineyards. Continuous image data collection using a vehicle-mounted sensing kit combined with collection of grou… Show more

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“…In order to expand the generalizability of HRI estimates and encourage industry adoption, it will be essential for researchers to develop methods for the direct calculation of area terms from physical data such as ground-based imagery collected during normal tractor passes. A downstream image analysis could be automated using a deep learning approach, similar to the approach used in [147], to extract physical parameters of the vine that are well correlated with model area terms.…”
Section: High-resolution Irrigation Modelsmentioning
confidence: 99%
“…In order to expand the generalizability of HRI estimates and encourage industry adoption, it will be essential for researchers to develop methods for the direct calculation of area terms from physical data such as ground-based imagery collected during normal tractor passes. A downstream image analysis could be automated using a deep learning approach, similar to the approach used in [147], to extract physical parameters of the vine that are well correlated with model area terms.…”
Section: High-resolution Irrigation Modelsmentioning
confidence: 99%