Application of Convolutional Neural Network ResNet-50 V2 on Image Classification of Rice Plant Disease

Authors

  • Delvi Hastari Universitas Islam Negeri Sultan Syarif Kasim Riau
  • Salsa Winanda Universitas Islam Negeri Sultan Syarif Kasim Riau
  • Aditya Rezky Pratama Universitas Islam Negeri Sultan Syarif Kasim Riau
  • Nana Nurhaliza Universitas Islam Negeri Sultan Syarif Kasim Riau
  • Ella Silvana Ginting University Tun Hussein Onn Malaysia

DOI:

https://doi.org/10.57152/predatecs.v1i2.865

Keywords:

Convolutional Neural Network, Images Classification, Resnet-50 V2, Rice Plant Disease

Abstract

Rice is the most important crop in global food security and socioeconomic stability. A part of the world's population makes rice a food requirement but the problem is found that all rice varieties suffer from several diseases and pests. Therefore, it is necessary to ensure the quality of healthy and proper rice growth by detecting diseases present in rice plants and treatment of affected plants. In this study, the Convolutional Neural Network (CNN) algorithm was applied in classifying diseases on the leaves of rice plants by experimenting with several parameters and architecture to get the best accuracy. This study was conducted image classification of rice plant disease using CNN architecture ResNet-50V2 with data using preprocessing Augmentation. The test was conducted with three optimizers such as SGD, Adam, and RMSprop by combining various parameters, namely epoch, batch size, learning rate, and SGD and RMSprop optimizers. Division of image data with 70:30 ratio of training data and test data; 80:20; 90:10. From these results, it was found that Adam was the best optimizer in the 80:20 data division in this study with an accuracy level of 0.9992, followed by the SGD optimizer with an accuracy level of 0.9983, while the RMSProp optimizer was ranked third with an accuracy level of 0.9978.

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Published

2024-02-01