
Learning disabilities like dyslexia are commonly prevalent among young school children. Dyslexia is a neurological disorder that can drastically impact a child’s academic life and mental health, often resulting in low self-esteem. This research study aims to design and implement an easy-to-use computer-aided diagnosis tool for the early detection of dyslexia, ensuring that dyslexic children can receive timely support from teachers and experts. The novel framework, which incorporates Super-Resolution Generative Adversarial Network, and a custom-built convolutional neural network model based on transfer learning technique, achieves 92.52% accuracy in the classification of handwriting of either dyslexic or non-dyslexic individuals.
© 2025 Shabana Ziyad, May Altulyan, Munira Abdulaziz Al-Helal, Pradeep Kumar Singh, published by Professor Subhas Chandra Mukhopadhyay
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