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State-of-the-art CNN Architectures for Assessing Fine Motor Skills: a Comparative Study

Title: State-of-the-art CNN Architectures for Assessing Fine Motor Skills: a Comparative Study
Authors: Strikas, Konstantinos; Papaioannou, Nikolaos; Stamatopoulos, Ioannis; Angeioplastis, Athanasios; Tsimpiris, Alkiviadis; Varsamis, Dimitrios; Giagazoglou, Paraskevi
Source: WSEAS TRANSACTIONS ON ADVANCES in ENGINEERING EDUCATION ; volume 20, page 44-51 ; ISSN 2224-3410 1790-1979
Publisher Information: World Scientific and Engineering Academy and Society (WSEAS)
Publication Year: 2023
Description: It is considered that children’s normal growth depends on their ability to use their fine motor skills. Deficits in fine motor skills in preschool children can interfere with even basic daily activities. Research also links these problems to future challenges. Therefore, early identification of preschool children’s fine motoric abilities is considered essential. However, the assessment of the development of fine motor skills is considered to be a rather complex process. Complex and time-consuming methods are used for their reliable assessment, which also requires the presence of educational experts. The aim of this study is to investigate whether it is possible to create a simple and useful tool for assessing fine motor skills in preschool children, based on convolutional neural networks. For this purpose, a comparative study between 5 state-of-the-art CNN architectures is carried out, to investigate their accuracy in assessing fine motor skills. Drawings of Greek students from public kindergartens were used to train the investigated CNN models. The Griffiths II and the Eye Coordination Scale were used to assess the developmental age of preschool children. The findings demonstrate that, although challenging, automatic and precise detection of fine motor skills is feasible if a larger dataset is used to train deep learning models.
Document Type: article in journal/newspaper
Language: English
DOI: 10.37394/232010.2023.20.7
Availability: https://doi.org/10.37394/232010.2023.20.7
Rights: https://wseas.com/journals/education/2023/a145110-006(2O23).pdf
Accession Number: edsbas.92F0DC19
Database: BASE