Multi-Domain Deep Convolutional Neural Network for Ancient Urdu Text Recognition System

IF 2 4区 计算机科学 Q2 Computer Science
K. O. Mohammed Aarif, P. Sivakumar
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引用次数: 1

Abstract

Deep learning has achieved magnificent success in the field of pattern recognition. In recent years Urdu character recognition system has significantly benefited from the effectiveness of the deep convolutional neural network. Majority of the research on Urdu text recognition are concentrated on formal handwritten and printed Urdu text document. In this paper, we experimented the Challenging issue of text recognition in Urdu ancient literature documents. Due to its cursiveness, complex word formation (ligatures), and context-sensitivity, and inadequate benchmark dataset, recognition of Urdu text from the literature document is very difficult to process compared to the formal Urdu text document. In this work, first, we generated a dataset by extracting the recurrent ligatures from an ancient Urdu fatawa book. Secondly, we categorized and augment the ligatures to generate batches of augmented images that improvise the training efficiency and classification accuracy. Finally, we proposed a multi-domain deep Convolutional Neural Network which integrates a spatial domain and a frequency domain CNN to learn the modular relations between features originating from the two different domain networks to train and improvise the classification accuracy. The experimental results show that the proposed network with the augmented dataset achieves an averaged accuracy of 97.8% which outperforms the other CNN models in this class. The experimental results also show that for the recognition of ancient Urdu literature, well-known benchmark datasets are not appropriate which is also verified with our prepared dataset.
古乌尔都语文本识别系统的多域深度卷积神经网络
深度学习在模式识别领域取得了巨大的成功。近年来,乌尔都语字符识别系统显著受益于深度卷积神经网络的有效性。乌尔都语文本识别的研究大多集中在正式的手写和印刷乌尔都语文本文档上。本文对乌尔都语古代文献文本识别的挑战性问题进行了实验。与正式的乌尔都语文本文档相比,从文献文档中识别乌尔都语文本非常困难,因为它的广度、复杂的构词法(连词)和上下文敏感性以及不充分的基准数据集。在这项工作中,首先,我们通过从一本古老的乌尔都语法塔瓦书中提取循环结扎来生成一个数据集。其次,对图像进行分类和增强,生成增强图像,提高训练效率和分类精度。最后,我们提出了一种融合了空间域和频率域CNN的多域深度卷积神经网络,通过学习来自两个不同域网络的特征之间的模关系来训练和提高分类精度。实验结果表明,基于增强数据集的网络平均准确率达到97.8%,优于同类其他CNN模型。实验结果还表明,对于乌尔都语古代文献的识别,已知的基准数据集是不合适的,用我们准备的数据集也验证了这一点。
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来源期刊
Intelligent Automation and Soft Computing
Intelligent Automation and Soft Computing 工程技术-计算机:人工智能
CiteScore
3.50
自引率
10.00%
发文量
429
审稿时长
10.8 months
期刊介绍: An International Journal seeks to provide a common forum for the dissemination of accurate results about the world of intelligent automation, artificial intelligence, computer science, control, intelligent data science, modeling and systems engineering. It is intended that the articles published in the journal will encompass both the short and the long term effects of soft computing and other related fields such as robotics, control, computer, vision, speech recognition, pattern recognition, data mining, big data, data analytics, machine intelligence, cyber security and deep learning. It further hopes it will address the existing and emerging relationships between automation, systems engineering, system of systems engineering and soft computing. The journal will publish original and survey papers on artificial intelligence, intelligent automation and computer engineering with an emphasis on current and potential applications of soft computing. It will have a broad interest in all engineering disciplines, computer science, and related technological fields such as medicine, biology operations research, technology management, agriculture and information technology.
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