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图像中多语种文本提取的高斯混合建模方法
引用本文:付慧,刘峡壁,贾云得.图像中多语种文本提取的高斯混合建模方法[J].计算机研究与发展,2007,44(11):1920-1926.
作者姓名:付慧  刘峡壁  贾云得
作者单位:1. 北京林业大学信息学院,北京,100083;北京理工大学计算机科学与技术学院,北京,100081
2. 北京理工大学计算机科学与技术学院,北京,100081
基金项目:国家自然科学基金 , 国家重点基础研究发展计划(973计划) , 北京理工大学优秀青年教师资助计划基金
摘    要:建立了相邻字符区域的高斯混合模型,用于区分字符与非字符.在此基础上,提出了一种从图像中提取多语种文本的方法.首先对输入图像进行二值化,并执行形态学闭运算,使二值图像中每个字符成为一个单独的连通成分.然后根据各连通成分重心的Voronoi区域,形成连通成分之间的邻接关系;最后在贝叶斯框架下,基于相邻字符区域的高斯混合模型计算相应的伪概率,以此为判据将每个连通成分标注为字符或非字符.利用所提出的文本提取方法,进行了复杂中英文文本的提取实验,获得大于97%的准确率和大于80%的召回率,证实了方法的有效性.

关 键 词:文档分析  光学字符识别(OCR)  文本提取  图像检索  高斯混合模型  二值图像  多语种  文本提取  高斯混合  建模方法  Images  Extraction  Text  Characters  Neighbor  Modeling  Mixture  有效性  召回率  准确率  实验  英文文本  利用  或非  分标
修稿时间:2006-05-26

Gaussian Mixture Modeling of Neighbor Characters for Multilingual Text Extraction in Images
Fu Hui,Liu Xiabi,Jia Yunde.Gaussian Mixture Modeling of Neighbor Characters for Multilingual Text Extraction in Images[J].Journal of Computer Research and Development,2007,44(11):1920-1926.
Authors:Fu Hui  Liu Xiabi  Jia Yunde
Affiliation:School of Information Technology, Beijing Forestry University, Belying 100083;School of Computer Science and Technology, Beijing Institute of Technology, Beijing 100081
Abstract:A new method based on the Gaussian mixture modeling of neighbor characters is proposed to extract multilingual texts in images. In the training phase, the Gaussian mixture model of three neighbor characters is trained from the examples. Then the texts in an input image are extracted in the following steps. Firstly, the image is binarized using the edge-pixel clustering method and the morphological closing operation is performed on the binary image, in order that each character in it can be treated as a connected component. Secondly, the neighborhood of connected components is established according to the Voronoi partition of the image. Three connected components neighboring with each other constitute a neighbor set. For each neighbor set, a posteriori pseudo-probability is computed based on the Gaussian mixture model of three neighbor characters and used to classify the neighbor set as the case of three neighbor characters. Finally, the text extraction is completed by labeling the connected components as characters or non-characters with the following rule: if a connected component is included in at least one neighbor set classified as the case of three neighbor characters, then the connected component is labeled as a character, or else as a non-character. The proposed method are tested in the applications of Chinese and English text extraction. In the experiments, the expectation-maximization algorithm is employed to train the Gaussian mixture model of three neighbor characters. The experimental results of text extraction show the effectiveness of the method.
Keywords:document analysis  optical character recognition (OCR)  text extraction  image retrieval  Gaussian mixture modeling (GMM)
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