Deep Convolutional Neural Networks Transfer Learning Comparison on Arabic Handwriting Recognition System

Q3 Decision Sciences
S. Masruroh, Muhammad Fikri Syahid, Firman Munthaha, A. T. Muharram, Rizka Amalia Putri
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引用次数: 1

Abstract

Around 27 languages and more than 420 million people worldwide use Arabic letters. That makes the Arabic language one of the most used languages. However, the Arabic language has a challenge, namely the difference in letters based on their position. Arabic handwriting recognition is important for various applications, such as education and communication. One example is during a pandemic when most education has turned digital, making recognizing students' Arabic handwriting difficult. This paper aims to create a model that can recognize Arabic handwriting by comparing several CNN architectures using transfer learning to classify Arabic, Hijja, and AHCD handwriting datasets. Transfer learning is a model that has been trained by previous datasets to other datasets and is suitable for use in models with small datasets because it can improve model accuracy even with small datasets. The datasets were split into 60%, 20%, and 20% for training, validation, and testing. Each model uses data augmentation and 50% dropout on a fully connected layer to reduce overfitting. Some of the CNN architectures used in this study to create Arabic writing recognition models are ResNet, DenseNet, VGG16, VGG19, InceptionV3, and MobileNet. The models were compiled and trained with various parameters. The best model achieved to classify AHCD and Hijja dataset is VGG16 with Adam optimizer and 0.0001 learning rate. Based on this research, it is expected to know the performance of the best model for classifying Arabic handwriting.
阿拉伯语手写识别系统的深度卷积神经网络迁移学习比较
全世界约有27种语言和超过4.2亿人使用阿拉伯字母。这使得阿拉伯语成为使用最多的语言之一。然而,阿拉伯语有一个挑战,即基于其位置的字母的差异。阿拉伯语手写识别对于教育和交流等各种应用都很重要。一个例子是在大流行期间,大多数教育都转向数字化,这使得识别学生的阿拉伯语笔迹变得困难。本文旨在通过使用迁移学习对阿拉伯语、Hijja和AHCD手写数据集进行分类,比较几种CNN架构,从而创建一个可以识别阿拉伯语手写的模型。迁移学习是一种通过以前的数据集训练到其他数据集的模型,它适用于小数据集的模型,因为它即使在小数据集上也可以提高模型的准确性。数据集被分成60%、20%和20%用于训练、验证和测试。每个模型在完全连接层上使用数据增强和50% dropout来减少过拟合。本研究中用于创建阿拉伯文字识别模型的一些CNN架构是ResNet, DenseNet, VGG16, VGG19, InceptionV3和MobileNet。用不同的参数对模型进行编译和训练。对AHCD和Hijja数据集进行分类的最佳模型是带有Adam优化器的VGG16,学习率为0.0001。在此研究的基础上,期望了解阿拉伯笔迹分类的最佳模型的性能。
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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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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