CNN for Handwritten Arabic Digits Recognition Based on LeNet-5
https://doi.org/10.1007/978-3-319-48308-5Abstract
In recent years, handwritten digits recognition has been an important area due to its applications in several fields. This work is focus-ing on the recognition part of handwritten Arabic digits recognition that face several challenges, including the unlimited variation in human handwriting and the large public databases. The paper provided a deep learning technique that can be effectively apply to recognizing Arabic handwritten digits. LeNet-5, a Convolutional Neural Network (CNN) trained and tested MADBase database (Arabic handwritten digits images) that contain 60000 training and 10000 testing images. A comparison is held amongst the results, and it is shown by the end that the use of CNN was leaded to significant improvements across different machine-learning classification algorithms.
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