Computer-aided diagnosis of graphomotor difficulties utilizing direction-based fractional order derivatives
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Author
Gavenciak, Michal
Mucha, Jan
Mekyska, Jiri
Galaz, Zoltan
Zvoncakova, Katarina
Publication date
2024-11Abstract
Children who do not sufficiently develop graphomotor skills essential for handwriting often develop graphomotor disabilities (GD), impacting the self-esteem and academic performance of the individual. Current examination methods of GD consist of scales and questionaries, which lack objectivity, rely on the perceptual abilities of the examiner, and may lead to inadequately targeted remediation. Nowadays, one way to address the factor of subjectivity is to incorporate supportive machine learning (ML) based assessment. However, even with the increasing popularity of decision-support systems facilitating the diagnosis and assessment of GD, this field still lacks an understanding of deficient kinematics concerning the direction of pen movement. [...]
Document Type
Article
Citation
Gavenciak M, Mucha J, Mekyska J, Galaz Z, Zvoncakova K, Faundez-Zanuy M. Computer-aided diagnosis of graphomotor difficulties utilizing direction-based fractional order derivatives. Cogn Comput. 2024 Nov;17(13). DOI: 10.1007/s12559-024-10360-7
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