4.6 Article

Ensemble deep transfer learning model for Arabic (Indian) handwritten digit recognition

期刊

NEURAL COMPUTING & APPLICATIONS
卷 34, 期 1, 页码 705-719

出版社

SPRINGER LONDON LTD
DOI: 10.1007/s00521-021-06423-7

关键词

Ensemble transfer learning; Arabic (Indian) handwritten recognition; Deep supervised learning; Transfer learning; MobileNetV2; ResNet-50

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This study focuses on Arabic (Indian) digits and proposes an ensemble deep transfer learning (EDTL) model that effectively detects and recognizes these digits. The EDTL model is a combination of two effective pre-trained transfer learning models, with time and cost complexity in the training phase.
Recognising handwritten digits or characters is a challenging task due to noisy data that results from different writing styles. Numerous applications essentially motivate to build an effective recognising model for such purposes by utilizing recent intelligent techniques. However, the difficulty emerges when using the Arabic language that suffers from diverse noises; because of the way of writing inherent in connecting characters and digits. Therefore, this work focuses on the Arabic (Indian) digits and propose an ensemble deep transfer learning (EDTL) model that efficaciously detect and recognise these digits. The EDTL model is a combination of two effective pre-trained transfer learning models that consume time and cost complexity in the training phase. The EDTL is trained on large datasets to extract relevant features as input to a fully-connected Artificial Neural Network classifier. The experimental results, using popular datasets, show significant performance obtained by the EDTL model with accuracy reached up to 99.83% in comparison to baseline methods include deep transfer learning models, ensemble deep transfer learning models and state-of-the-art techniques.

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