用卷积神经网络识别手写乌尔都语字母笔画序列

A. Qarni, Muhammad Shoaib, Muhammad Abdullah, Saba Khalid, A. Aslam, Noreen Kausar, Ayesha Khan, M. Tariq, Fizza Jameel, Tayyab Gull Khan
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引用次数: 0

摘要

在巴基斯坦这样的发展中国家,一名教师一次教50到100名学生,对儿童早期书写缺乏关注。孩子们在早期阶段(4-8岁)需要老师的大量关注,特别是当他们开始写字母表时,以确保他们采用了正确的笔画顺序。一个老师几乎不可能注意到他/她所有的学生,观察他们的笔划顺序。由于教师缺乏注意,学生可能会用正确或错误的笔画顺序书写字母表。如果学生遵循不正确的笔画顺序,就会严重影响书写速度和草书的美观。就本课题的研究而言,迄今为止主要是在汉语和日语中进行的,以找出正确的笔画顺序。阿拉伯语的研究少得多,乌尔都语是迄今为止最被忽视的。在本文中,我们提出了乌尔都语手写E-Tutor (UHET)。UHET是一种基于计算机视觉的方法,它可以持续监控孩子的书写活动,并成功地指出笔画顺序(在书写乌尔都语字母时)是否正确。为了进行这项研究,我们创建了一个由五个乌尔都语字母的图像和视频组成的新数据集。UHET利用卷积神经网络来训练模型来预测字母表(由儿童书写)及其笔画顺序。结果表明,我们的UHET在给定的数据集上表现良好,平均准确率达到80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stroke Sequence Identification in Handwritten Urdu Alphabets Using Convolutional Neural Networks
There is a lack of attention to early childhood handwriting in developing countries like Pakistan, where a single teacher teaches 50 to 100 students at a time. Children need a lot of attention from the teacher during their early stages (4-8 years), especially when they start writing the alphabet to assure that they adopted a correct stroke sequence. It is almost impossible for a teacher to pay attention to all his/her students to observe their stroke sequences. Due to a lack of teacher attention, the students may write the alphabet with correct or incorrect stroke sequences. If a student follows an incorrect stroke sequence, it badly affects the writing speed and the beauty of his/her cursive handwriting. As the research on this topic is concerned, so far, it has been conducted mainly in Chinese and Japanese languages to find out the correct stroke sequence. Arabic has received far fewer studies and Urdu is the most neglected till now. In this paper, we have proposed Urdu Handwriting E-Tutor (UHET). UHET is a Computer Vision based method that continuously monitors the handwriting activity of a child and successfully points out whether the stroke sequence (while writing an Urdu alphabet) is correct or not. To conduct this study, we created a new dataset that consists of images and videos of five Urdu alphabets. UHET exploits Convolutional Neural Network to train the model for predicting the alphabet (written by the child) and its stroke sequence. Results show that our UHET performs well achieving 80% accuracy on the average on the given data set.
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