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TILPDeep: a lightweight deep learning technique for handwritten transformed invariant Pashto text recognition
Journal article   Open access   Peer reviewed

TILPDeep: a lightweight deep learning technique for handwritten transformed invariant Pashto text recognition

Muhammad Shabir, Zahoor Jan, Naveed Islam, Inayat Khan, Gauhar Ali and Mohammed ElAffendi
IEEE access, Vol.11, pp.23393-23406
01/01/2023

Abstract

Handwriting recognition character recognition Deep learning Text categorization Smart phones Feature extraction Computer Science Electrical Engineering or Electronics Technology Telecommunications
Pashto is the native language of Afghanistan and one of Pakistan's most essential and regional languages. The Pashto language has a vast number of native speakers who live in various parts of the world. The handwritten Pashto textual trajectories are hard to recognize and detect due to the cursive style and handwriting variation. The transformation behaviour, i.e., scaling, rotation, and shifting of handwritten text, are the prominent but challenging factors. A lightweight deep learning-based model construction for low and medium-resource devices in a less-constrained environment is challenging. This paper provides a practical, light deep learning-based model for predicting handwritten Pashto words. A massive Pashto-transformed invariant inverted handwritten text dataset is prepared with the help of the Pashtun community. A lightweight MobileNetV2 has been highly tuned for Pashto handwritten text classification, extracting images' features (MoI). We inverted the dataset to make the model more accurate and restrict it to fifteen epochs. Extensive experiments have been conducted to validate the suggested model's performance. The proposed transformed invariant lightweight Pashto deep learning (TILPDeep) technique achieves a training accuracy of 0.9839 and a validation accuracy of 0.9405 for transformed invariant Pashto handwritten inverted text using recognition matrices.
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