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Arabic Handwritten Digits Dataset

MNIST-type dataset for arabic digits

Arabic Handwritten Digits Dataset

In recent years, handwritten digits recognition has been an important area due to its applications in several fields. This work is focusing 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. The Convolutional Neural Network was trained and tested MADBase database (Arabic handwritten digits images) that contain 60000 training and 10000 testing images. Moreover, the CNN is giving an average recognition accuracy of 99.15%.

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Benha University
View author website
Task
Image Classification
Annotation Types
Classification Tags
60000
Items
10
Classes
60000
Labels
Models using this dataset
Last updated on 
October 31, 2023
Licensed under 
Unknown
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