Convolutional ensembles for Arabic Handwritten Character and Digit Recognition

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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.

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APA

de Sousa, I. P. (2018). Convolutional ensembles for Arabic Handwritten Character and Digit Recognition. PeerJ Computer Science, 2018(10). https://doi.org/10.7717/peerj-cs.167

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