Paper Reading AI Learner

FINNger -- Applying artificial intelligence to ease math learning for children

2021-05-26 01:02:31
Rafael Baldasso Audibert, Vinicius Marinho Maschio

Abstract

Kids have an amazing capacity to use modern electronic devices such as tablets, smartphones, etc. This has been incredibly boosted by the ease of access of these devices given the expansion of such devices through the world, reaching even third world countries. Also, it is well known that children tend to have difficulty learning some subjects at pre-school. We as a society focus extensively on alphabetization, but in the end, children end up having differences in another essential area: Mathematics. With this work, we create the basis for an intuitive application that could join the fact that children have a lot of ease when using such technological applications, trying to shrink the gap between a fun and enjoyable activity with something that will improve the children knowledge and ability to understand concepts when in a low age, by using a novel convolutional neural network to achieve so, named FINNger.

Abstract (translated)

URL

https://arxiv.org/abs/2105.12281

PDF

https://arxiv.org/pdf/2105.12281.pdf


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