Classification of grapevine leaves images using VGG-16 and VGG-19 deep learning nets

Dublin Core

Title

Classification of grapevine leaves images using VGG-16 and VGG-19 deep learning nets

Subject

Classification
Convolutional neural network Deep learning
VGG-16
VGG-19

Description

The successful implementation of deep learning nets opens up possibilities for various applications in viticulture, including disease detection, plant health monitoring, and grapevine variety identification. With the progressive advancements in the domain of deep learning, further advancements and refinements in the models and datasets can be expected, potentially leading to even more accurate and efficient classification systems for grapevine leaves and beyond. Overall, this research provides valuable insights into the potential of deep learning for agricultural applications and paves the way for future studies in this domain. This work employs a convolutional neural network (CNN)-based architecture to perform grapevine leaf image classification by adapting VGG-16 net and VGG-19 net models and subsequently identifying the optimal performer between the two nets during the classification process. A publicly available dataset comprising 500 images categorized into 5 distinct classes (100 images per class), was utilized in this work. The obtained empirical outcomes demonstrate a remarkable accuracy rate of 99.6% for the VGG-16 net model, while VGG-19 net achieves a 100% accuracy rate. Based on these findings, it can be inferred that VGG-19 net exhibits superior performance in classifying images of grapevine leaves compared to the VGG-16 net.

Creator

Maha A. Rajab1, Firas A. Abdullatif1, Tole Sutikno2

Source

Journal homepage: http://telkomnika.uad.ac.id

Date

Jan 26, 2024

Contributor

peri irawan

Format

pdf

Language

english

Type

text

Files

Collection

Citation

Maha A. Rajab1, Firas A. Abdullatif1, Tole Sutikno2, “Classification of grapevine leaves images using VGG-16 and VGG-19 deep learning nets,” Repository Horizon University Indonesia, accessed April 24, 2026, https://repository.horizon.ac.id/items/show/9925.