利用卷积神经网络识别阿西利亚语手写字符

Revella E. A. Armya, M. Abdulrazzaq
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引用次数: 0

摘要

世界各地的学术界和研究人员都密切关注利用深度学习进行生物笔迹识别的问题,因为在过去和近年来,已有许多研究提出要提高生物识别率。目前已开发出多种不同语言的字符识别系统解决方案,包括中文、英文、日文、阿拉伯文和库尔德文。遗憾的是,在亚述语方面的进展甚微。关于亚述手写体的研究仍然很少。本文创建了一个新的亚述语言数据集,作为程序的一部分,向年龄在 13 岁至 60 岁之间的男女发放了 500 份包含 36 个亚述字符的表格。预处理操作包括清理嘈杂数据和将每张图像分割为 224x224 像素。通过这项工作,收集到了 18,000 张这些字符的图像,在四个 CNN 模型(VGG16、VGG19、MobileNet-V2 和 ResNet-50)中进行了 70% 的训练和 30% 的测试,历时 30 次,准确率分别为 90.97%、92.06%、95.70% 和 94.97%。
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HANDWRITTEN CHARACTER RECOGNITION IN ASSYRIAN LANGUAGE USING CONVOLUTIONAL NEURAL NETWORK
Academics and researchers worldwide have paid close attention to biometric handwriting recognition using deep learning as much research has been proposed to enhance biometric recognition in the past and in recent years. Several solutions for character recognition systems in various languages, including Chinese, English, Japanese, Arabic, and Kurdish have been developed. Unfortunately, there has been minimal growth in the Assyrian language. There is still little research on Assyrian handwriting. In this paper, a new Assyrian language dataset was created as part of the procedure by distributing 500 forms consisting of 36 Assyrian characters to people between the ages of 13 and 60 of both genders. The preprocessing operation includes cleaning the noisy data and segmenting each image to 224x224 pixels. This effort resulted in the collection of 18,000 images of these characters to be trained 70% and tested 30% in four CNN models, VGG16, VGG19, MobileNet-V2, and ResNet-50, over 30 epochs to give an accuracy rate of 90.97%, 92.06%, 95.70%, and 94.97%., respectively.
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发文量
35
审稿时长
6 weeks
期刊最新文献
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