OPTIMIZING THE IMPLEMENTATION OF THE YOLO AND DATA ALGORITHM AUGMENTATION IN HANACARAKA JAVANESE SCRIPT LANGUAGE CLASSIFICATION

Ikhsan Ikhsan, Dadang Iskandar Mulyana
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Abstract

The Javanese language and Javanese script are one of the rich cultural heritages in Indonesia, but there are still many people who do not have sufficient understanding of the Javanese language and culture, including the Javanese script. This can have an impact on the loss of language and cultural diversity, as well as the loss of the local identity of the Javanese people. The lack of knowledge about Javanese script language culture can be caused by various factors, such as the lack of access to adequate learning resources, the minimum use of Javanese language and script in daily life, and the lack of attention from the government and society towards the preservation of Javanese language and culture. This study aims to optimize the application of the YOLO (You Only Look Once) algorithm and data augmentation techniques in the Javanese language classification Hanacaraka script. The method used in this study was collecting data on Javanese Hanacaraka script images, data labeling, data augmentation, and model training using the YOLO algorithm. The results showed that the Javanese script pattern recognition method used the YOLO algorithm which had gone through the data augmentation process, showing good results with an accuracy of 96.4% using 3021 image data sources for the hanacaraka letters.
哈那卡拉卡爪哇文字语言分类中yolo和数据算法增强的优化实现
爪哇语和爪哇文字是印度尼西亚丰富的文化遗产之一,但仍有许多人对爪哇语和文化,包括爪哇文字没有足够的了解。这可能对语言和文化多样性的丧失以及爪哇人民的地方特性的丧失产生影响。爪哇文字文化知识的缺乏可能是由多种因素造成的,例如缺乏足够的学习资源,日常生活中很少使用爪哇语言和文字,以及政府和社会对爪哇语言和文化的保护缺乏关注。本研究旨在优化YOLO (You Only Look Once)算法和数据增强技术在爪哇语哈那卡拉卡文字分类中的应用。本研究采用的方法是收集爪哇语Hanacaraka文字图像数据,使用YOLO算法进行数据标注、数据增强和模型训练。结果表明,爪哇文字模式识别方法采用了经过数据增强处理的YOLO算法,使用3021个图像数据源对哈那卡罗字母进行识别,准确率达到96.4%,取得了较好的效果。
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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