Handwriting Quality Analysis using Online-Offline Models
Yahia Hamdi, Hanen Akouaydi, Houcine Boubaker, Adel M. Alimi

TL;DR
This paper introduces a comprehensive system for analyzing children's handwriting quality in real-time, combining geometric, dynamic, and visual models to provide immediate feedback and support learning across multiple scripts.
Contribution
The work presents a novel multi-model framework integrating Beta-Elliptic, Fourier Descriptor, and CNN-SVM models for detailed handwriting quality assessment and feedback.
Findings
High accuracy in handwriting mistake detection
Effective real-time feedback for children and teachers
Robust performance across different scripts and styles
Abstract
This work is part of an innovative e-learning project allowing the development of an advanced digital educational tool that provides feedback during the process of learning handwriting for young school children (three to eight years old). In this paper, we describe a new method for children handwriting quality analysis. It automatically detects mistakes, gives real-time on-line feedback for children's writing, and helps teachers comprehend and evaluate children's writing skills. The proposed method adjudges five main criteria shape, direction, stroke order, position respect to the reference lines, and kinematics of the trace. It analyzes the handwriting quality and automatically gives feedback based on the combination of three extracted models: Beta-Elliptic Model (BEM) using similarity detection (SD) and dissimilarity distance (DD) measure, Fourier Descriptor Model (FDM), and…
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Taxonomy
TopicsHand Gesture Recognition Systems · Handwritten Text Recognition Techniques · BIM and Construction Integration
