Learning disabilities, which primarily interfere with the basic learning skills such as reading, writing and math, are known to affect around 10% of children in the world. The poor motor skills and motor coordination as part of the neurodevelopmental disorder can become a causative factor for the difficulty in learning to write (dysgraphia), hindering the academic track of an individual. The signs and symptoms of dysgraphia include but are not limited to irregular handwriting, improper handling of writing medium, slow or labored writing, unusual hand position, etc. The widely accepted assessment criterion for all the types of learning disabilities is the examination performed by medical experts. The few available artificial intelligence-powered screening systems for dysgraphia relies on the distinctive features of handwriting from the corresponding images.This work presents a review of the existing automated dysgraphia diagnosis systems for children in the literature. The main focus of the work is to review artificial intelligence-based systems for dysgraphia diagnosis in children. This work discusses the data collection method, important handwriting features, machine learning algorithms employed in the literature for the diagnosis of dysgraphia. Apart from that, this article discusses some of the non-artificial intelligence-based automated systems also. Furthermore, this article discusses the drawbacks of existing systems and proposes a novel framework for dysgraphia diagnosis.
翻译:学习障碍主要影响阅读、写作和数学等基本学习技能,据知影响全世界大约10%的儿童。作为神经发育障碍的一部分,运动技能和运动协调能力差,可能成为难以学习写作(读写能力)的一个诱因,阻碍个人学习轨道。阅读障碍的征兆和症状包括但不限于非正常笔迹、不正确处理写作介质、缓慢或劳动写作、不寻常的手势等。所有各类学习障碍的广泛接受的评估标准是医学专家的检查。很少有可用于读写障碍的人工智能筛查系统依赖于相应图象的笔迹特征。这项工作是对文献中现有的儿童自动读写诊断系统的审查。工作的主要重点是审查儿童读写能力诊断人工智能系统。这项工作讨论了数据收集方法、重要笔迹特征、用于诊断读写障碍的文献中使用的机器学习算法。此外,本文还讨论了一些基于新版本的系统。此外,本文还讨论了一些基于新版本的文献系统。