首页> 外文会议>International Workshop on Graphics Recognition(GREC 2005); 20050825-26; Hong Kong(CN) >An Extended System for Labeling Graphical Documents Using Statistical Language Models
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An Extended System for Labeling Graphical Documents Using Statistical Language Models

机译:使用统计语言模型标记图形文档的扩展系统

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This paper describes a proposed extended system for the recognition and labeling of graphical objects within architectural and engineering documents that integrates Statistical Language Models (SLMs) with shape classifiers. Traditionally used for Natural Language Processing, SLMS have been successful in such fields as Speech Recognition and Information Retrieval. There exist similarities between natural language and technical graphical data that suggest that adapting SLMs for use with graphical data is a worthwhile approach. Statistical Graphical Language Models (SGLMs) are applied to graphical documents based on associations between different classes of shape in a drawing to automate the structuring and labeling of graphical data. The SGLMs are designed to be combined with other classifiers to improve their recognition performance. SGLMs perform best when the graphical domain being examined has an underlying semantic system, that is; graphical objects have not been placed randomly within the data. A system which combines a Shape Classifier with SGLMS is described.
机译:本文介绍了一种用于建筑和工程文档中图形对象的识别和标记的扩展系统,该系统将统计语言模型(SLM)与形状分类器集成在一起。传统上用于自然语言处理的SLMS在语音识别和信息检索等领域已经取得了成功。自然语言与技术图形数据之间存在相似之处,这表明使SLM与图形数据一起使用是一种值得采用的方法。基于图形中不同类别的形状之间的关联,将统计图形语言模型(SGLM)应用于图形文档,以自动进行图形数据的结构化和标注。 SGLM设计为与其他分类器结合使用,以提高其识别性能。当所检查的图形域具有底层语义系统时,SGLM的性能最佳。图形对象尚未随机放置在数据中。描述了一种结合了形状分类器和SGLMS的系统。

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