Efficient segmentation of sub-words within handwritten arabic words

F. Khan, A. Bouridane, F. Khelifi, Rasheed Almotaeryi, Sumaya Almaadeed
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引用次数: 5

Abstract

Segmentation is considered as a core step for any recognition or classification method and for the text within any document to be effectively recognized it must be segmented accurately. In this paper a text and writer independent algorithm for the segmentation of sub-words in Arabic words has been presented. The concept is based around the global binarization of an image at various thresholding levels. When each sub-word or Part of Arabic Word (PAW) within the image being investigated is processed at multiple threshold levels a cluster graph is obtained where each cluster represents the individual sub-words of that word. Once the clusters are obtained the task of segmentation is managed by simply selecting the respective cluster automatically which is achieved using the 95% confidence interval on the processed data generated by the accumulated graph. The presented algorithm was tested on 537 randomly selected words from the AHTID/MW database and the results showed that 95.3% of the sub-words or PAW were correctly segmented and extracted. The proposed method has shown considerable improvement over the projection profile method which is commonly used to segment sub-words or PAW.
在手写的阿拉伯语单词子词的有效分割
分割被认为是任何识别或分类方法的核心步骤,要有效识别任何文档中的文本,都必须准确分割。本文提出了一种独立于文本和写作者的阿拉伯语词分词算法。这个概念是基于图像在不同阈值水平上的全局二值化。当在多个阈值水平上处理所研究图像中的每个子词或部分阿拉伯词(PAW)时,得到一个聚类图,其中每个聚类表示该词的各个子词。一旦获得了聚类,通过简单地自动选择相应的聚类来管理分割任务,这是利用累积图生成的处理数据的95%置信区间来实现的。对AHTID/MW数据库中随机抽取的537个词进行了测试,结果表明95.3%的子词或PAW被正确分割和提取。该方法与常用的子词分割方法或PAW分割方法相比,有较大的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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