Authors
Mohammed Aljarrah, Mo’ath Zyout, Rehab Duwairi
Publication date
2021/5/26
Conference
12th International Conference on Information and Communication Systems (ICICS)
Description
Automatic handwritten characters' recognition is one of Artificial intelligence applications which is considered an interesting research area and important in various fields. Many studies have been conducted for the recognition of English handwritten characters and fewer works are available for the Arabic language because of the diversity in characters' shapes according to their positions in the words. Convolutional Neural Networks are efficient for handwritten characters' recognition. In this paper, a Convolutional Neural Network has been proposed for handwritten characters' recognition. The model has been trained on a dataset of 16,800 images of handwritten Arabic characters with different shapes to perform classification. The proposed model achieved high recognition accuracy of 97.2%, outperforming other state-of-art models. When applying data augmentation, the model achieved better results and accuracy of …
Total citations
20222023202461611
Scholar articles
MN AlJarrah, MZ Mo'ath, R Duwairi - 2021 12th International conference on information and …, 2021