Advancing Grapevine Variety Identification: A Systematic Review of Deep Learning and Machine Learning Approaches
Gabriel A. Carneiro,
António Cunha,
Thierry J. Aubry
et al.
Abstract:The Eurasian grapevine (Vitis vinifera L.) is one of the most extensively cultivated horticultural crop worldwide, with significant economic relevance, particularly in wine production. Accurate grapevine variety identification is essential for ensuring product authenticity, quality control, and regulatory compliance. Traditional identification methods have inherent limitations limitations; ampelography is subjective and dependent on skilled experts, while molecular analysis is costly and time-consuming. To add… Show more
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