Identification of Incung Characters (Kerinci) to Latin Characters Using Convolutional Neural Network

Tesalonika Putri, T. Suratno, Ulfa Khaira
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Abstract

Incung script is a legacy of the Kerinci tribe located in Kerinci Regency, Jambi Province. On October 17, 2014, the Incung script was designated by the Ministry of Education and Culture as an intangible heritage property owned by Jambi Province. But in reality, the Incung script is almost extinct in society. This study aims to identify the characters of the Incung (Kerinci) script with the output in the form of Latin characters from the Incung script. The classification method used is the Convolutional Neural Network (CNN) method. The dataset used as many as 1400 incung character images divided into 28 classes. In this study, an experiment was conducted to obtain the most optimal model. Showing the results using the CNN method during the training process that the accuracy of the training data reaches 99% and the accuracy of the testing data reaches 91% by using the optimal hyperparameters from the tests that have been done, namely batch size 32, epoch 100, and Adam's optimizer. It evaluates the CNN model using 80 images in words (a combination of several characters) with 4 test scenarios. It shows that the model can recognize image data from scanning printed books, digital writing test data, test data with images containing more than two characters, and check images with different font sizes
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基于卷积神经网络的印文与拉丁字符识别
Incung脚本是位于占碑省Kerinci Regency的Kerinci部落的遗产。2014年10月17日,Incung脚本被教育和文化部指定为占碑省的非物质遗产。但事实上,Incung剧本在社会上几乎绝迹。本研究旨在识别Incung(Kerinci)脚本的字符,并从Incung脚本中以拉丁字符的形式输出。所使用的分类方法是卷积神经网络(CNN)方法。该数据集使用了多达1400个incung字符图像,分为28类。在本研究中,进行了一个实验以获得最优化的模型。显示了在训练过程中使用CNN方法的结果,即通过使用来自已经完成的测试的最优超参数,即批量大小32、epoch 100和Adam优化器,训练数据的准确率达到99%,测试数据的准确度达到91%。它使用80个单词图像(几个字符的组合)和4个测试场景来评估CNN模型。结果表明,该模型可以从扫描印刷书籍、数字写作测试数据、图像包含两个以上字符的测试数据以及不同字体大小的图像中识别图像数据
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发文量
20
审稿时长
12 weeks
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