Indexing and classification of TV news articles based on telop recognition

Y. Ariki, T. Teranishi
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引用次数: 20

Abstract

In accumulating and retrieving multimedia information such as images, speech and text, it is necessary to compress and retrieve the information efficiently and accurately. The purpose of this paper is to construct a multimedia database of TV news images based on telop character recognition. The first step is to detect telop frames and to segment the characters by differentiating the telop frames based on the fact that character regions have high brightness and the character edges are clear. The second step is the telop character recognition. It is performed by a subspace method using direction histogram features. The third step is indexing by extracting noun words after morphological analysis of the recognized telop characters. These noun words correspond with key words and are given to TV news articles as their indices. Finally TV news articles are classified into 10 topics such as politics, economics, culture, amusements, sports and so on based on the extracted indices. We employed an index-topic table to classify the articles using indices. The telop character recognition rate was 65.7% and the article classification rate was 67.3%.
基于图像识别的电视新闻文章索引与分类
在图像、语音、文本等多媒体信息的积累和检索中,需要对信息进行高效、准确的压缩和检索。本文的目的是构建一个基于远程字符识别的电视新闻图像多媒体数据库。第一步是检测边缘帧,根据字符区域亮度高、字符边缘清晰的特点,通过区分边缘帧对字符进行分割。第二步是字符识别。利用方向直方图特征的子空间方法来实现。第三步是对识别出的名词特征进行形态分析后提取名词词进行标引。这些名词词与关键词相对应,作为电视新闻文章的索引。最后根据提取的指标将电视新闻文章分为政治、经济、文化、娱乐、体育等10个主题。我们使用索引主题表对文章进行索引分类。远程字符识别率为65.7%,文章分类率为67.3%。
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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