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Accurate, data-efficient, unconstrained text recognition with convolutional neural networks

Research Authors
Mohamed Yousef, Khaled F Hussain, Usama S Mohammed
Research Member
Research Department
Research Year
2020
Research Journal
Journal of Pattern Recognition - arXiv preprint arXiv:1812.11894
Research Publisher
Pergamon
Research Vol
108
Research Rank
1
Research_Pages
(1-12)107482
Research Website
https://arxiv.org/abs/1812.11894
Research Abstract

Unconstrained text recognition is an important computer vision task, featuring a wide variety of different sub-tasks, each with its own set of challenges. One of the biggest promises of deep neural networks has been the convergence and automation of feature extractors from input raw signals, allowing for the highest possible performance with minimum required domain knowledge. To this end, we propose a data-efficient, end-to-end neural network model for generic, unconstrained text recognition. In our proposed architecture we strive for simplicity and efficiency without sacrificing recognition accuracy. Our proposed architecture is a fully convolutional network without any recurrent connections trained with the CTC loss function. Thus it operates on arbitrary input sizes and produces strings of arbitrary length in a very efficient and parallelizable manner. We show the generality and superiority of our proposed text recognition architecture by achieving state of the art results on seven public benchmark datasets, covering a wide spectrum of text recognition tasks, namely: Handwriting Recognition, CAPTCHA recognition, OCR, License Plate Recognition, and Scene Text Recognition. Our proposed architecture has won the ICFHR2018 Competition on Automated Text Recognition on a READ Dataset.