Web-Based Writing Learning Application of Basic Hanacaraka Using Convolutional Neural Network Method

Dewi Candani Sulaiman, T. M. S. Mulyana
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Abstract

The Javanese script, known as Hanacaraka, or Carakan, is one of the traditional Indonesian scripts developed and used on the island of Java. The government's efforts to preserve the use of Javanese language and script by making Javanese a compulsory subject of local content at the education level in Central Java and East Java. In the basic competence of writing, the Javanese script has a complicated shape so that students have difficulty writing and recognizing Javanese script writing. Through this research a web-based basic Javanese writing learning application was designed that can recognize handwriting digitally which aims to help learn basic hanacaraka writing for beginners, especially students at the basic education level in Central Java and East Java. Handwriting Recognition is a system that can recognize handwritten characters and convert them into text that can be read and understood by machines or computers. The handwriting recognition process in this study uses the Convolutional Neural Network (CNN) algorithm which has the capability and ability to recognize patterns in images. Based on the tests that have been carried out between the two architectural models that have been made, the performance of the CNN model that will be used from various experiments has an accuracy of 98.29% and a loss of 0.0746 on the training data. As well as producing an average accuracy value of 99.52%, an average error rate of 0.48%, an overall accuracy of 95.03% and an overall error rate of 4.97%.
基于卷积神经网络的《基础汉语》网络写作学习应用
爪哇文字,被称为Hanacaraka或Carakan,是爪哇岛上发展和使用的传统印度尼西亚文字之一。政府通过将爪哇语作为中爪哇和东爪哇教育水平的地方内容的必修科目,努力保留爪哇语和爪哇文字的使用。在书写的基本能力中,爪哇文字形状复杂,给学生书写和辨认爪哇文字带来了困难。通过本研究,设计了一个基于网络的基础爪哇文书写学习应用程序,该应用程序可以数字识别手写,旨在帮助初学者,特别是中爪哇和东爪哇基础教育水平的学生学习基础爪哇文书写。手写识别是一种可以识别手写字符并将其转换为机器或计算机可以阅读和理解的文本的系统。本研究的手写识别过程使用卷积神经网络(CNN)算法,该算法具有识别图像中模式的能力和能力。根据已经做过的两种架构模型之间的测试,各种实验将要用到的CNN模型的性能在训练数据上的准确率为98.29%,损失为0.0746。平均准确率为99.52%,平均错误率为0.48%,整体准确率为95.03%,整体错误率为4.97%。
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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