Deep Learning YOLO-Based Solution for Grape Bunch Detection and Assessment of Biophysical Lesions

dc.contributor.author Pinheiro,I en
dc.contributor.author Moreira,G en
dc.contributor.author Daniel Queirós Silva en
dc.contributor.author Magalhães,S en
dc.contributor.author Valente,A en
dc.contributor.author Paulo Moura Oliveira en
dc.contributor.author Mário Cunha en
dc.contributor.author Filipe Neves Santos en
dc.contributor.other 5761 en
dc.contributor.other 7332 en
dc.contributor.other 8276 en
dc.contributor.other 5552 en
dc.date.accessioned 2023-05-05T10:06:58Z
dc.date.available 2023-05-05T10:06:58Z
dc.date.issued 2023 en
dc.description.abstract <jats:p>The world wine sector is a multi-billion dollar industry with a wide range of economic activities. Therefore, it becomes crucial to monitor the grapevine because it allows a more accurate estimation of the yield and ensures a high-quality end product. The most common way of monitoring the grapevine is through the leaves (preventive way) since the leaves first manifest biophysical lesions. However, this does not exclude the possibility of biophysical lesions manifesting in the grape berries. Thus, this work presents three pre-trained YOLO models (YOLOv5x6, YOLOv7-E6E, and YOLOR-CSP-X) to detect and classify grape bunches as healthy or damaged by the number of berries with biophysical lesions. Two datasets were created and made publicly available with original images and manual annotations to identify the complexity between detection (bunches) and classification (healthy or damaged) tasks. The datasets use the same 10,010 images with different classes. The Grapevine Bunch Detection Dataset uses the Bunch class, and The Grapevine Bunch Condition Detection Dataset uses the OptimalBunch and DamagedBunch classes. Regarding the three models trained for grape bunches detection, they obtained promising results, highlighting YOLOv7 with 77% of mAP and 94% of the F1-score. In the case of the task of detection and identification of the state of grape bunches, the three models obtained similar results, with YOLOv5 achieving the best ones with an mAP of 72% and an F1-score of 92%.</jats:p> en
dc.identifier P-00Y-71X en
dc.identifier.uri http://dx.doi.org/10.3390/agronomy13041120 en
dc.identifier.uri https://repositorio.inesctec.pt/handle/123456789/13833
dc.language eng en
dc.rights info:eu-repo/semantics/openAccess en
dc.title Deep Learning YOLO-Based Solution for Grape Bunch Detection and Assessment of Biophysical Lesions en
dc.type en
dc.type Publication en
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