论文标题
使用深度学习技巧的库尔德手写角色识别
Kurdish Handwritten Character Recognition using Deep Learning Techniques
论文作者
论文摘要
手写识别是图像处理和模式识别领域的积极和挑战性研究领域之一。它具有许多应用程序,其中包括:用于视觉障碍的阅读辅助,自动阅读和处理银行检查,使任何手写文档可搜索,并将其转换为结构文本形式等。此外,通过英语,中国阿拉伯语,波斯语和许多其他语言的手写识别系统记录了高精度率。然而,没有这样的系统可用于离线库尔德手写识别。在本文中,试图设计和开发一个模型,该模型可以使用深度学习技术识别库尔德字母的手写字符。库尔德(Sorani)包含34个字符,主要采用基于阿拉伯语的\波斯语脚本,并带有修改的字母。在这项工作中,采用了深层卷积神经网络模型,该模型显示了手写识别系统中的典范性能。然后,为手写的库尔德字符创建了一个全面的数据集,其中包含超过4000张图像。创建的数据集已用于培训深层卷积神经网络模型,以进行分类和识别任务。在拟议的系统中,实验结果显示出可接受的识别水平。测试结果报告的精度率为96%,训练精度报告的精度率为97%。从实验结果中可以明显看出,所提出的深度学习模型表现良好,并且与其他语言的手写识别系统的类似模型相媲美。
Handwriting recognition is one of the active and challenging areas of research in the field of image processing and pattern recognition. It has many applications that include: a reading aid for visual impairment, automated reading and processing for bank checks, making any handwritten document searchable, and converting them into structural text form, etc. Moreover, high accuracy rates have been recorded by handwriting recognition systems for English, Chinese Arabic, Persian, and many other languages. Yet there is no such system available for offline Kurdish handwriting recognition. In this paper, an attempt is made to design and develop a model that can recognize handwritten characters for Kurdish alphabets using deep learning techniques. Kurdish (Sorani) contains 34 characters and mainly employs an Arabic\Persian based script with modified alphabets. In this work, a Deep Convolutional Neural Network model is employed that has shown exemplary performance in handwriting recognition systems. Then, a comprehensive dataset was created for handwritten Kurdish characters, which contains more than 40 thousand images. The created dataset has been used for training the Deep Convolutional Neural Network model for classification and recognition tasks. In the proposed system, the experimental results show an acceptable recognition level. The testing results reported a 96% accuracy rate, and training accuracy reported a 97% accuracy rate. From the experimental results, it is clear that the proposed deep learning model is performing well and is comparable to the similar model of other languages' handwriting recognition systems.