Deep Convolution Neural Network to solve Problems for Appel Leaf Disease Detection

  • Sutriawan Universitas Muhammadiyah Bima
  • Ahmad Zaniul Fanani Dian Nuswantoro University, Semarang, Indonesia
  • Farrikh Alzami Dian Nuswantoro University, Semarang, Indonesia
  • Ruri Suko Basuki Dian Nuswantoro University, Semarang, Indonesia
Keywords: Deep Learning, Convolution Neural Network, VGG16, Adam, SGD

Abstract

Orchardists are now concerned about apple leaf infections since they could result in crop failure. It is challenging for growers to identify the type of illness on apple leaves due to the large variety of diseases that can affect apple leaves. In this study, we cover four different illness categories: healthy, numerous diseased, rusty, and scabby. a deep convolutional neural network method of processing. using a number of suggested methods, including data preprocessing and the pre-configured VGG-16 deep convolutional neural network (CNN) architecture. The Adam optimization model's beta 2 = 0.999 parameter value at Ephoch to 85/100 with an accuracy of 0.7582 and epsilon = 1e-07 parameter value at Ephoch to 32/100 with an accuracy of 0.7582 both produced the best accuracy outcomes.

 

Author Biography

Sutriawan, Universitas Muhammadiyah Bima

 

 

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Submitted
2023-08-10
Accepted
2023-12-30
How to Cite
Sutriawan, Ahmad Zaniul Fanani, Farrikh Alzami, & Ruri Suko Basuki. (2023). Deep Convolution Neural Network to solve Problems for Appel Leaf Disease Detection. International Journal of Engineering Technology and Natural Sciences, 5(2), 128 - 137. https://doi.org/10.46923/ijets.v5i2.232