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Multimodal Acquisition and Analysis of Children Handwriting for the Study of the Efficiency of Their Handwriting Movements: The @MaGma Challenge

机译:儿童笔迹的多模式采集和分析,以研究他们的笔迹运动的效率:@MaGma挑战

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Handwriting is a fundamental skill that each pupil should master for successfully completing his instructions. However, for a certain number of children, after a successful phase of handwriting learning an unexplained rough deterioration of their efficiency on paper is observed during the phase of customization of their handwriting. In this context, our goal is to make a comprehensive study of the evolution and the difficulties of children handwriting learning according to handwriting teaching approaches involved in school. To achieve such a challenge, it is necessary to collect in a secured way and to analyze a large amount of various contextualized online and offline handwritten data produced in real scholar situations by numerous pupils from kindergarten up to middle school. This is the purpose of the ongoing @MaGma project that was defined with the Academic direction of the Guadeloupian Region. In this paper, we specify the problems handled in @Magma and depict the general principles which will have to govern the collaborative infrastructure of acquisition and treatment of children's writing, based on 2 frameworks: Copilotr@ce and Dekattras. Next, we report the preliminary results of the comparative sigma-lognormal and dynamic analysis of a set of children scribbles acquired thanks to this infrastructure. We conclude by developing how these first results obtained in a real scholar acquisition context confirm the experimental results previously obtained in more clinical contexts, pointing out the fact that the Personalized Digital Bodyguard concept and vision is realizable.
机译:手写是每个学生成功完成其教学所必须掌握的一项基本技能。但是,对于一定数量的孩子,在成功进行手写学习之后,在定制手写的阶段会观察到无法解释的纸质效率的明显下降。在这种情况下,我们的目标是根据学校所采用的手写教学方法,全面研究儿童手写学习的发展和困难。为了应对这一挑战,有必要以安全的方式收集并分析从幼稚园到初中的众多学生在真实学者情况下产生的大量各种上下文相关的在线和离线手写数据。这是正在进行的@MaGma项目的目的,该项目由瓜德罗普安地区的学术方向定义。在本文中,我们指定了@Magma中处理的问题,并基于两个框架Copilotr @ ce和Dekattras,描述了控制儿童写作习得的协作基础结构的一般原则。接下来,我们报告由于该基础架构而获得的一组儿童涂鸦的sigma-lognormal比较和动态分析的初步结果。通过发展这些结果,我们可以得出结论:在真正的学者学习环境中获得的这些第一结果如何证实先前在更多临床环境中获得的实验结果,并指出“个性化数字保镖”的概念和视觉是可以实现的。

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