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Investigation on deep learning for off-line handwritten Arabic character recognition

机译:离线手写阿拉伯字符识别的深度学习研究

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摘要

Handwritten character recognition is a system widely used in the modern world and it is still an important challenge. Traditional machine-learning techniques require careful engineering and considerable domain expertise to transform raw data into a feature vector from which the classifier could classify the input pattern. To cope with this problem, the popular Deep Convolutional Neural Networks (DCNN), introduced recently, have effectively replaced the hand-crafted descriptors with network features and have been shown to provide significantly better results than traditional methods. It is one of the fastest growing areas in machine learning, promising to reshape the future of artificial intelligence. However, the problem with deep learning is that it requires large datasets for training because of the huge number of parameters needed to be tuned by a learning algorithm. CNN model can be used in three different ways: (i) training the CNN from scratch; (ii) using the transfer learning strategy to leverage features from a pre-trained model on a larger dataset; and (iii) keeping the transfer learning strategy and fine-tune the weights of CNN architecture. In this work, we investigate the applicability of DCNN using transfer learning strategies on two datasets; a new expanded version of our recently proposed database for off-line isolated handwritten Arabic character, referred to as OIHACDB and AHCD. Our results showed satisfactory recognition accuracies and outperform all other prominent exiting methods in the field of Handwritten Arabic Character Recognition (HACR). (C) 2017 Elsevier B.V. All rights reserved.
机译:手写字符识别是现代世界中广泛使用的系统,它仍然是一个重要的挑战。传统的机器学习技术需要认真的工程设计和相当多的领域专业知识,才能将原始数据转换为特征向量,分类器可以根据该特征向量对输入模式进行分类。为了解决这个问题,最近推出的流行的深度卷积神经网络(DCNN)用网络特征有效地替代了手工制作的描述符,并已显示出比传统方法明显更好的结果。它是机器学习增长最快的领域之一,有望重塑人工智能的未来。但是,深度学习的问题在于,由于学习算法需要调整大量参数,因此需要大量的数据集进行训练。 CNN模型可以三种不同的方式使用:(i)从头开始训练CNN; (ii)使用转移学习策略在更大的数据集上利用来自预训练模型的特征; (iii)保持转移学习策略并微调CNN架构的权重。在这项工作中,我们使用转移学习策略在两个数据集上研究了DCNN的适用性。我们最近针对离线隔离的手写阿拉伯字符数据库提出的新扩展版本,称为OIHACDB和AHCD。我们的结果显示出令人满意的识别精度,并且优于手写阿拉伯字符识别(HACR)领域中所有其他重要的现有方法。 (C)2017 Elsevier B.V.保留所有权利。

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