articleJournal of Plant Diseases and ProtectionMar 26, 2024HYBRID OA

Advancements in deep learning for accurate classification of grape leaves and diagnosis of grape diseases

Iğdır Üniversitesi

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Abstract

Abstract Plant diseases cause significant agricultural losses, demanding accurate detection methods. Traditional approaches relying on expert knowledge may be biased, but advancements in computing, particularly deep learning, offer non-experts effective tools. This study focuses on fine-tuning cutting-edge pre-trained CNN and vision transformer models to classify grape leaves and diagnose grape leaf diseases through digital images. Our research examined a PlantVillage dataset, which comprises 4062 leaf images distributed across four categories. Additionally, we utilized the Grapevine dataset, consisting of 500 leaf images. This dataset is organized into five distinct groups, with each group containing 100…

Citation impact

136
total citations
FWCI
73.31
Percentile
100%
References
52
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Authors

2

Topics & keywords

Keywords
  • Biology
  • Botany
UN Sustainable Development Goals
  • Zero hunger
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