Comparative Study of CNN Models on the Classification of Dyslexic Handwriting

Subha Sreekumar, Lijiya A
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Abstract

Developmental Dyslexia, one of the learning disabilities is a topic of scientific interest in a variety of disciplines such as psychology, speech and language therapy, data science, etc. While the reason for Dyslexia and its symptoms are still being researched by psychologists, data science is providing ways to intervene and detect them with the aid of technological advancements. Dyslexia is a neurological condition that impairs reading comprehension and has long-lasting impacts. But timely detection and intervention programs can alleviate its effects to a certain extent. This study aims to classify images of handwritten English characters into three classes namely: normal, corrected, and reversed, where normal class refers to normal handwriting, and corrected or reversed constitutes handwriting of children with Dyslexia. The dataset used for the study is available publicly on Kaggle. The building of an efficient CNN (Convolutional Neural Network) model for classifying dyslexic handwriting is the major emphasis of this work. This is accomplished by comparing several CNN models and evaluating how well they detect Dyslexia on the same dataset. The proposed CNN approach has demonstrated a sizable improvement in reliably classifying dyslexic handwritten images.
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CNN模型对阅读困难笔迹分类的比较研究
发展性阅读障碍是学习障碍的一种,是心理学、言语和语言治疗、数据科学等多个学科关注的科学话题。虽然心理学家仍在研究阅读障碍的原因及其症状,但数据科学正在提供在技术进步的帮助下进行干预和检测的方法。阅读障碍是一种神经系统疾病,会损害阅读理解能力,并产生长期影响。但及时发现和干预方案可以在一定程度上缓解其影响。本研究的目的是将手写的英文汉字图像分为正常、纠正和反三种类型,其中正常类型是指正常的笔迹,而纠正或反则构成阅读障碍儿童的笔迹。该研究使用的数据集可以在Kaggle上公开获取。建立一个有效的CNN(卷积神经网络)模型来分类诵读困难的笔迹是本工作的主要重点。这是通过比较几个CNN模型并评估它们在相同数据集上检测阅读障碍的效果来完成的。提出的CNN方法在可靠地分类阅读困难的手写图像方面取得了相当大的进步。
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