TRANSFER LEARNING BASED OFFLINE YORÙBÁ HANDWRITTEN CHARACTER RECOGNITION SYSTEM

Oluwashina O. Oyeniran, E. Oyebode
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引用次数: 0

Abstract

This study presents Transfer Learning-based framework through the use of AlexNet for the development of an offline Yorùbá Handwritten Character Recognition System. The system encompasses the upper and case characters of the Yorùbá language, and tonal letters that have a significant impact on the Yorùbá language. The model reported network accuracy of 82.8%, validation accuracy of 77.7%, with F1 score of 0.7795, precision of 0.7819 and Recall of 0.7771. While the average recognition time is estimated to 0.371372 seconds. Thus, the technique of deep learning has shown significant improvement when compared to other existing approaches in recognizing standard Yorùbá characters.
基于迁移学习的离线yorÙbÁ手写字符识别系统
本研究通过使用AlexNet开发离线约鲁巴手写字符识别系统,提出了基于迁移学习的框架。该系统包括约鲁巴语的大写字母和大小写字母,以及对约鲁巴语言有重大影响的音调字母。该模型报告的网络准确率为82.8%,验证准确率为77.7%,F1得分为0.7795,准确度为0.7819,召回率为0.7771。而平均识别时间估计为0.371372秒。因此,与其他现有方法相比,深度学习技术在识别标准约鲁巴字符方面有了显著的改进。
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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