使用统计特征的原始印刷阿拉伯光学字符识别

Mohamed Dahi, N. Semary, M. Hadhoud
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引用次数: 9

摘要

由于阿拉伯文有多种不同的字体类型,阿拉伯文字符识别仍然是一个挑战。大多数文献只考虑一种字体,导致识别精度较低。本文试图在传统光学字符识别阶段之前,考虑自动光学字体识别(OFR)阶段,以提高AOCR(阿拉伯语光学字符识别)的准确性。这是使用SIFT(尺度不变特征变换)描述符实现的。首先,对四种最新的原始OCR算法进行了比较研究,以评估其系统中使用的不同特征和分类器。在此基础上,提出了一种统计特征组合方法,并选择随机森林树分类器进行分类阶段。这些特征的组合被用来训练分类器。因此,每个被识别的文本字体被定向到一个特定的分类器树。在生成的包含30000个样本的原始阿拉伯字符无噪声数据集(PAC-NF)上对该系统进行了测试。实验结果表明,该方法的字符识别准确率为99.8-100%。
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Primitive printed Arabic Optical Character Recognition using statistical features
Due to the several forms of different Arabic font types, Arabic character recognition is still a challenge. Most literature works consider only one font per text what results in low recognition accuracy. This paper tends to enhance the accuracy of AOCR (Arabic Optical Character Recognition) by considering an automatic Optical Font Recognition (OFR) stage before going ahead with the traditional OCR stages. This has been achieved using SIFT (Scale Invariant Feature Transform) descriptors. First, a comparative study of four most recent algorithms of primitive OCR has been performed to evaluate the different features and classifiers utilized in their systems. Accordingly, a combining of statistical features have been proposed as well as selecting Random Forest Tree classifier for classification stage. The combination of the features are used to train the classifiers. As a result, each recognized text font is directed to a specific classifier tree. The proposed system was tested on a generated Primitive Arabic Characters Noise Free dataset (PAC-NF) containing 30000 samples. Experimental results achieved a promising character recognition accuracy of 99.8-100%.
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