面向VRML构建数据库检索的自动特征提取和语义特征矩阵

Hsuan T. Chang, Kwang Y. Chang
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引用次数: 1

摘要

提出了一种基于语义内容的三维数据库信息检索系统。本文研究的数据库由虚拟现实建模语言(VRML)定义的三维建筑对象组成。首先,定义用于构建对象的特定底层特征,然后从VRML文件中描述的内容中搜索和提取。然后,利用数据库中所有对象的低级特征确定的中级特征构建语义特征矩阵(SFM)。对于查询对象,应用类似的过程,以便获得低级特征和相应的语义向量。通过将SFM与查询向量相乘,可以计算出查询与数据库中所有对象之间的相似度所对应的分数。仿真结果表明,该方法能够以较高的查全率和查准率成功、高效地检索出所需的三维目标
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Feature Extraction and Semantic Feature Matrix for VRML Building Database Retrieval
A semantic content based information retrieval system for a three-dimensional (3-D) database is proposed in this paper. Here the studied database is composed of 3-D building objects defined by virtual reality modeling language (VRML). First of all, the specific low-level features for building objects are defined and then searched and extracted from the content described in the VRML file. Then, a semantic feature matrix (SFM) is constructed with the middle-level features that determined from the low-level features of all the objects in the database. For a query object, a similar process is applied such that the low-level features and the corresponding semantic vector can be obtained. By multiplying the SFM with the query vector, the scores corresponding to the similarities between the query and all objects in the database can be calculated. Simulation results show that the desired 3-D objects can be successfully and efficiently retrieved with high recall and precision rates
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