A comparative study on attributed relational gra matching algorithms for perceptual 3-D shape descriptor in MPEG-7

Duck Hoon Kim, I. Yun, Sang Uk Lee
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引用次数: 11

Abstract

Nowadays, the demand on user-friendly querying interface such as query-by-sketch and query-by-editing is an important issue in the content-based retrieval system for 3-D object database. Especially in MPEG-7, P3DS (Perceptual 3-D Shape) descriptor has been developed in order to provide the user-friendly querying, which can not be covered by an existing international standard for description and browsing of 3-D object database. Since the P3DS descriptor is based on the part-based representation of 3-D object, it is a kind of attributed relational gra (ARG) so that the ARG matching algorithm naturally follows as the core procedure for the similarity matching of the P3DS descriptor. In this paper, given a P3DS database from the corresponding 3-D object database, we bring focus into investigating the pros and cons of the target ARG matching algorithms. In order to demonstrate the objective evidence of our conclusion, we have conducted the experiments based on the database of 480 3-D objects with 33 categories in terms of the bull's eye performance, average normalized modified retrieval rate, and precision/recall curve.
MPEG-7中感知三维形状描述符的属性关联格拉匹配算法比较研究
目前,基于内容的三维对象数据库检索系统对按草图查询和按编辑查询等用户友好的查询界面的需求是一个重要的问题。特别是在MPEG-7中,P3DS(感性三维形状)描述符的开发是为了提供对三维对象数据库描述和浏览的用户友好查询,这是现有国际标准所不能涵盖的。由于P3DS描述符基于三维物体的零件表示,它是一种带有属性的关系图(ARG),因此P3DS描述符的相似度匹配自然遵循ARG匹配算法作为核心过程。本文以相应的三维目标数据库中的P3DS数据库为例,重点研究了目标ARG匹配算法的优缺点。为了证明我们的结论的客观证据,我们在包含33个类别的480个三维物体的数据库上进行了实验,从牛眼性能、平均归一化修正检索率和准确率/召回率曲线三个方面进行了实验。
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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