Handwriting-based Automated Assessment and Grading of Degree of Handedness: A Pilot Study
Smriti Bala, Venugopalan Y. Vishnu, Deepak Joshi

TL;DR
This study introduces a novel method using handwriting signals and deep learning to accurately assess and grade the degree of handedness, providing more detailed insights than traditional questionnaires.
Contribution
It is the first to utilize dominant and non-dominant handwriting traits with CNNs for automated degree of handedness assessment, achieving high accuracy.
Findings
CNN achieved 95.06% classification accuracy
Scores from computational methods aligned with Edinburgh Inventory scores
Automated grading offers more resolution than traditional questionnaires
Abstract
Hand preference and degree of handedness (DoH) are two different aspects of human behavior which are often confused to be one. DoH is a person's inherent capability of the brain; affected by nature and nurture. In this study, we used dominant and non-dominant handwriting traits to assess DoH for the first time, on 43 subjects of three categories- Unidextrous, Partially Unidextrous, and Ambidextrous. Features extracted from the segmented handwriting signals called strokes were used for DoH quantification. Davies Bouldin Index, Multilayer perceptron, and Convolutional Neural Network (CNN) were used for automated grading of DoH. The outcomes of these methods were compared with the widely used DoH assessment questionnaires from Edinburgh Inventory (EI). The CNN based automated grading outperformed other computational methods with an average classification accuracy of 95.06% under stratified…
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Taxonomy
TopicsHearing Impairment and Communication · Hemispheric Asymmetry in Neuroscience · Orthopedic Surgery and Rehabilitation
