A Comparative Study of Javanese Script Classification with GoogleNet, DenseNet, ResNet, VGG16 and VGG19

A. Susanto, C. A. Sari, E. H. Rachmawanto, I. U. W. Mulyono, Noorayisahbe Mohd Yaacob
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Abstract

Purpose: Javanese script is a legacy of heritage or heritage in Indonesia originating from the island of Java needs to be preserved. Therefore, in this study, the classification and identification process of Javanese script letters will be carried out using the CNN method. The purpose of this research is to be able to build a model which can properly classify Javanese script, it can help in the process of recognizing letters in Javanese script easily.Methods: In this study, the Javanese script classification process has been used the transfer learning process of Convolutional Neural Network, namely GoogleNet, DenseNet, ResNet, VGG16 and VGG19. The purpose of using transfer learning is to improve the sequential CNN model, processing can be better and optimal because it utilizes a previously trained model.Result: The results obtained after testing in this study are using the transfer learning method, the GoogleNet model gets an accuracy of 88.75%, the DenseNet model gets an accuracy of 92%, the ResNet model gets an accuracy of 82.75%, the VGG16 model gets an accuracy of 99.25% and the VGG19 model gets an accuracy of 99.50%.Novelty: In previous studies, it is still very rare to discuss the Javanese script classification process using the CNN transfer learning method and which method is the most optimal for performing the Javanese script classification process. In this study, it had been resulted find an effective method to be able to carry out the Javanese script classification process properly and optimally.
使用 GoogleNet、DenseNet、ResNet、VGG16 和 VGG19 进行爪哇语文字分类的比较研究
目的:爪哇文字是源自爪哇岛的印尼遗产,需要加以保护。因此,本研究将使用 CNN 方法对爪哇文字进行分类和识别。本研究的目的是能够建立一个能够对爪哇文字进行正确分类的模型,它可以帮助轻松识别爪哇文字中的字母:在本研究中,爪哇语文字分类过程使用了卷积神经网络的迁移学习过程,即 GoogleNet、DenseNet、ResNet、VGG16 和 VGG19。使用迁移学习的目的是改进顺序 CNN 模型,因为它利用了先前训练过的模型,所以处理过程可以更好、更优化:本研究使用迁移学习方法进行测试后得出的结果是,GoogleNet 模型的准确率为 88.75%,DenseNet 模型的准确率为 92%,ResNet 模型的准确率为 82.75%,VGG16 模型的准确率为 99.25%,VGG19 模型的准确率为 99.50%。在这项研究中,我们找到了一种有效的方法,能够正确、最佳地执行爪哇语文字分类过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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24 weeks
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