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dc.contributor.authorÍñiguez, Rubén
dc.contributor.authorPoblete-Echeverría, Carlos
dc.contributor.authorBarrio, Ignacio
dc.contributor.authorHernández, Inés
dc.contributor.authorGutiérrez-Salcedo, Salvador
dc.contributor.authorMartínez-Cámara, Eduardo
dc.contributor.authorTardaguila, Javier
dc.date.accessioned2025-09-08T11:27:46Z
dc.date.available2025-09-08T11:27:46Z
dc.date.issued2025-07-11
dc.identifier.citationÍñiguez, R.; PobleteEcheverría, C.; Barrio, I.; Hernández, I.; Gutiérrez, S.; Martínez-Cámara, E.; Tardáguila, J. Impact of Phenological and Lighting Conditions on Early Detection of Grapevine Inflorescences and Bunches Using Deep Learning. Agriculture 2025, 15, 1495. https://doi.org/10.3390/agriculture15141495es_ES
dc.identifier.urihttps://hdl.handle.net/10481/106154
dc.description.abstractReliable early-stage yield forecasts are essential in precision viticulture, enabling timely interventions such as harvest planning, canopy management, and crop load regulation. Since grape yield is directly related to the number and size of bunches, the early detection of inflorescences and bunches, carried out even before flowering, provides a valuable foundation for estimating potential yield far in advance of veraison. Traditional yield prediction methods are labor-intensive, subjective, and often restricted to advanced phenological stages. This study presents a deep learning-based approach for detecting grapevine inflorescences and bunches during early development, assessing how phenological stage and illumination conditions influence detection performance using the YOLOv11 architecture under commercial field conditions. A total of 436 RGB images were collected across two phenological stages (pre-bloom and fruit-set), two lighting conditions (daylight and artificial night-time illumination), and six grapevine cultivars. All images were manually annotated following a consistent protocol, and models were trained using data augmentation to improve generalization. Five models were developed: four specific to each condition and one combining all scenarios. The results show that the fruit-set stage under daylight provided the best performance (F1 = 0.77, R2 = 0.97), while for inflorescences, night-time imaging yielded the most accurate results (F1 = 0.71, R2 = 0.76), confirming the benefits of artificial lighting in early stages. These findings define optimal scenarios for early-stage organ detection and support the integration of automated detection models into vineyard management systems. Future work will address scalability and robustness under diverse conditions.es_ES
dc.description.sponsorshipUniversidad de La Rioja - Gobierno de La Rioja (FPI Grant 591/2021)es_ES
dc.language.isoenges_ES
dc.publisherMDPIes_ES
dc.rightsAtribución 4.0 Internacional*
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/*
dc.subjectyield predictiones_ES
dc.subjectinflorescencees_ES
dc.subjectgrape bunches_ES
dc.subjectprecision viticulturees_ES
dc.subjectdeep learninges_ES
dc.titleImpact of Phenological and Lighting Conditions on Early Detection of Grapevine Inflorescences and Bunches Using Deep Learninges_ES
dc.typejournal articlees_ES
dc.rights.accessRightsopen accesses_ES
dc.identifier.doi10.3390/agriculture15141495
dc.type.hasVersionVoRes_ES


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