Classification of clove types using convolution neural network algorithm with optimizing hyperparamters

Tempola, Firman and Wardoyo, Retantyo and Musdholifah, Aina and Rosihan, Rosihan and Sumaryanti, Lilik (2024) Classification of clove types using convolution neural network algorithm with optimizing hyperparamters. Bulletin of Electrical Engineering and Informatics, 13 (1). pp. 444-452. ISSN 20893191

[thumbnail of 110. Classification-of-clove-types-using-convolution-neural-network-algorithm-with-optimizing-hyperparamtersBulletin-of-Electrical-Engineering-and-Informatics.pdf] Text
110. Classification-of-clove-types-using-convolution-neural-network-algorithm-with-optimizing-hyperparamtersBulletin-of-Electrical-Engineering-and-Informatics.pdf - Published Version
Restricted to Registered users only

Download (640kB) | Request a copy

Abstract

This study uses clove imagery by classifying it according to ISO 2254-2004 standards: whole, headless, and mother clove. This type of clove will affect the quality and economic value when it has been dried. For this reason, it is necessary to take a first step to control cloves' quality. One way is to classify it from the start. This research will utilize the convolution neural network (CNN) algorithm and compare it with model transfer learning and modified VGG16 architecture on clove images. In addition, research is also looking for the most optimal hyperparameter. The results of this study indicate that the application of CNN to clove images obtains an accuracy value of 84% using a hyperparameter of 50 epochs, a learning rate of 0.001, and a batch size of 16. Meanwhile, for the application of transfer learning VGG16, Resnet50, MobileNetV2, InceptionV3, DensetNet151, and modified VGG16 have respectively each of the highest accuracy including 95.70%, 76.15%, 96.89%, 98.07%, 98.96%, and 99.11%.

Item Type: Article
Uncontrolled Keywords: Clove types; Convolution neural network; Hyperparameter; ISO 2254-2004; Transfer learning
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Divisions: Faculty of Mathematics and Natural Sciences > Computer Science & Electronics Department
Depositing User: Ismu WIDARTO
Date Deposited: 18 Jun 2025 07:10
Last Modified: 18 Jun 2025 07:10
URI: https://ir.lib.ugm.ac.id/id/eprint/18935

Actions (login required)

View Item
View Item