CNN迁移学习在失读症手写识别中的发展

Mohamed Rosli, I. Isa, S. A. Ramlan, S. N. Sulaiman, M. Maruzuki
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引用次数: 9

摘要

阅读障碍被归类为影响阅读、写作和拼写能力的学习障碍。在马来西亚,由教育部提供的“ISD (instrument Senarai Semak Disleksia)”被用于早期检测诵读困难的学生。然而,这种评估是耗时的,不规范的,并且可能导致有偏见的结果,因为评估是基于教师对学生的经验。因此,本研究聚焦于失读症手写识别的发展。本研究的目的是基于著名的LeNet-5手写识别架构,利用卷积神经网络(CNN)开发一种迁移学习的阅读障碍手写识别方法。对138500个手写图像数据集进行数据增强和预处理,然后将其输入网络。对模型的超参数进行调整和分析,对3类阅读困难笔迹进行分类。所开发的CNN模型对3类诵读困难笔迹进行了分类,准确率达到了95.34%。从结果来看,成功地实现了开发用于失读症手写识别的CNN模型的目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of CNN Transfer Learning for Dyslexia Handwriting Recognition
Dyslexia is categorized as learning disorder that influence the ability of reading, writing and spelling. In Malaysia, “Instrumen Senarai Semak Disleksia (ISD)” that is provided by Ministry of Education is used to detect dyslexic student at early stage. However, such evaluations are time consuming, non-standardize and can lead to a biasing result since the evaluation is based on the teacher’s experiences with the student. Hence, this research focus on the development of dyslexic handwriting recognition. The purpose of this research is to develop a transfer learning of Dyslexia handwriting recognition by using Convolutional Neural Network (CNN) based on famous architecture of handwriting recognition using of LeNet-5. Data augmentation and pre-processing was employed to a total of 138,500 handwriting image dataset before feeding it into network. The hyper-parameter of the model was tuned and analyzed to classify the 3 classes of dyslexic handwriting. The developed CNN model has successfully achieved a remarkable accuracy of 95.34% in classifying 3 classes of dyslexic handwriting. From the result, the objective in developing the CNN model for dyslexia handwriting recognition was successfully achieved.
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