Automated Visual Yield Estimation in Vineyards

We present a vision system that automatically predicts yield in vineyards accurately and with high resolution. Yield estimation traditionally requires tedious hand measurement, which is destructive, sparse in sampling, and inaccurate. Our method is efficient, high‐resolution, and it is the first suc...

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Veröffentlicht in:Journal of field robotics 2014-09, Vol.31 (5), p.837-860
Hauptverfasser: Nuske, Stephen, Wilshusen, Kyle, Achar, Supreeth, Yoder, Luke, Narasimhan, Srinivasa, Singh, Sanjiv
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container_end_page 860
container_issue 5
container_start_page 837
container_title Journal of field robotics
container_volume 31
creator Nuske, Stephen
Wilshusen, Kyle
Achar, Supreeth
Yoder, Luke
Narasimhan, Srinivasa
Singh, Sanjiv
description We present a vision system that automatically predicts yield in vineyards accurately and with high resolution. Yield estimation traditionally requires tedious hand measurement, which is destructive, sparse in sampling, and inaccurate. Our method is efficient, high‐resolution, and it is the first such system evaluated in realistic experimentation over several years and hundreds of vines spread over several acres of different vineyards. Other existing research is limited to small test sets of 10 vines or less, or just isolated grape clusters, with tightly controlled image acquisition and with artificially induced yield distributions. The system incorporates cameras and illumination mounted on a vehicle driving through the vineyard. We process images by exploiting the three prominent visual cues of texture, color, and shape into a strong classifier that detects berries even when they are of similar color to the vine leaves. We introduce methods to maximize the spatial and the overall accuracy of the yield estimates by optimizing the relationship between image measurements and yield. Our experimentation is conducted over four growing seasons in several wine and table‐grape vineyards. These are the first such results from experimentation that is sufficiently sized for fair evaluation against true yield variation and real‐world imaging conditions from a moving vehicle. Analysis of the results demonstrates yield estimates that capture up to 75% of spatial yield variance and with an average error between 3% and 11% of total yield.
doi_str_mv 10.1002/rob.21541
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source Wiley Online Library Journals Frontfile Complete
subjects Color
Estimates
Experimentation
Surface layer
Texture
Vehicles
Vineyards
Vision systems
Visual
Wineries & vineyards
title Automated Visual Yield Estimation in Vineyards
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