Abstract

A learning algorithm is proposed for the task of Arabic Handwritten Character and Digit recognition. The architecture consists on an ensemble of different Convolutional Neural Networks. The proposed training algorithm uses a combination of adaptive gradient descent on the first epochs and regular stochastic gradient descent in the last epochs, to facilitate convergence. Different validation strategies are tested, namely Monte Carlo Cross-Validation and K-fold Cross Validation. Hyper-parameter tuning was done by using the MADbase digits dataset. State of the art validation and testing classification accuracies were achieved, with average values of 99.74% and 99.47% respectively. The same algorithm was then trained and tested with the AHCD character dataset, also yielding state of the art validation and testing classification accuracies: 98.60% and 98.42% respectively.

Highlights

  • Offline handwriting recognition refers to the task of determining what letters or digits are present in a digital image of handwritten text

  • Younis (2017) notes that Arabic Handwriting Recognition (AHR) suffers from slow development compared to Handwriting Recognition in other languages

  • After the initial parameter tuning was performed with MADbase, the 26 experiments corresponding to 10 Monte Carlo Cross-Validation (MCCV) runs, 10 fold runs and six fold runs were performed

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Summary

Introduction

Offline handwriting recognition refers to the task of determining what letters or digits are present in a digital image of handwritten text. It is considered a subtask of the more general Optical Character Recognition. Younis (2017) notes that AHR suffers from slow development compared to Handwriting Recognition in other languages. He further mentions that Arabic characters contain a specific set of challenges that make the task more difficult. Such difficulties include the positioning of dots relative to the main character, the variability caused by the use of the characters in multiple countries and different areas of knowledge and work, among others

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