DysDetectV1: Dyslexia-dysgraphia severity classification using handwriting image and machine learning model

Ramlan, Siti Azura and Isa, Iza Sazanita and Harron, Nur Athiqah and Abdul Muttalib, Abdul Aziz (2025) DysDetectV1: Dyslexia-dysgraphia severity classification using handwriting image and machine learning model. In: The Fourth International Competition on Sustainable Education 2025, 20th August 2025.

Abstract

The existence of dyslexia-dysgraphia symptoms is assessed by a specialist or evaluator through observation of the candidate using prescribed techniques and a scoring system. Nonetheless, this methodology presents some limitations, including time consumption, the potential for activities to be incomplete, and ultimately, the risk of yielding biased outcomes. The growth of technology has significantly evolved ways for automatic dysgraphia detection, leading to a diversity of handwritingbased methodologies. Nevertheless, limited research highlights the detection of handwritten images using a handwritten image collection, particularly in the development of machine learning models. Therefore, this study introduces DysDetectV1, which is an innovative approach to classifying the severity of dyslexia-dysgraphia using handwritten samples. It uses Residual network feature extraction and a bagged tree model to classify the severity of dyslexia-dysgraphia levels. The model was then evaluated using a multi-class confusion matrix and represented accuracy, precision, and recall measurements. This research has the potential to enhance handwriting classification for individuals with dyslexia-dysgraphia by utilizing handwritten images and a machine learning model. This comprehensive approach is crucial for developing reliable tools that facilitate the early identification and support of children experiencing learning difficulties, in line with the overarching goal of improving educational outcomes. This research aligns with the primary objective of enhancing handwritten recognition for educational purposes, thereby fostering early childhood development in relation to SDG 4 (Quality Education).

Metadata

Item Type: Conference or Workshop Item (Paper)
Creators:
Creators
Email / ID Num.
Ramlan, Siti Azura
UNSPECIFIED
Isa, Iza Sazanita
UNSPECIFIED
Harron, Nur Athiqah
UNSPECIFIED
Abdul Muttalib, Abdul Aziz
UNSPECIFIED
Subjects: L Education > LB Theory and practice of education > Teaching (Principles and practice) > Educational research. Regional educational laboratories.
L Education > LB Theory and practice of education > Learning ability
Divisions: Universiti Teknologi MARA, Negeri Sembilan > Kuala Pilah Campus
Journal or Publication Title: The International Competition on Sustainable Education 2025 E-Proceeding
Event Title: The Fourth International Competition on Sustainable Education 2025
Event Dates: 20th August 2025
Page Range: pp. 569-572
Keywords: Dysgraphia, Dyslexia, handwriting disorder, machine learning, convolutional neural network
Date: September 2025
URI: https://ir.uitm.edu.my/id/eprint/125849
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