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Unified Multilingual Numeral Classification with Deep Neural Architectures
Conference proceeding

Unified Multilingual Numeral Classification with Deep Neural Architectures

Ameera Arif and Pakeeza Akram
2025 IEEE 4th International Conference on Computing and Machine Intelligence (ICMI), pp.1-6
04/05/2025

Abstract

Computational modeling Computer architecture Convolutional Neural Networks Data augmentation Data models Deep learning English Handwriting recognition Handwritten numerals Machine intelligence Multilingual Numeral Recognizer Persian Robustness Stochastic processes t-Distributed Stochastic Neighbor Embedding Urdu Xception
This study uses deep learning models to classify handwritten numerals across multiple languages. We curated a diverse dataset of Urdu numerals and extended it to classify them in Urdu, Persian, and English, leveraging their similarities and unique features. By employing a unified classifier, we effectively distinguished numerals across these languages. Our approach compared the custom numeral-CNN with established architectures like VGGNet, ResNet, GoogLeNet, and Xception. Numeral-CNN and Xception delivered superior performance, achieving accuracies of 98.91 % and 99.01 %, respectively, surpassing other models. We utilized data augmentation techniques to enhance dataset diversity and improve model robustness. These findings highlight the effectiveness of our approach and emphasize the role of deep learning in crosslinguistic numeral recognition.

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