Jun Wang

Professor  

Alma Mater:南京航空航天大学

Education Level:南京航空航天大学

Degree:Doctoral Degree in Engineering

School/Department:College of Mechanical and Electrical Engineering

Discipline:Computer Applications Technology

Business Address:A15-509

Contact Information:Email:wjun@nuaa.edu.cn 或 junwang@outlook.com 网站:http://www.3dgp.net/

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Paper Publications

Surface reconstruction with data-driven exemplar priors

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Affiliation of Author(s):机电学院

Journal:COMPUTER-AIDED DESIGN

Key Words:3D local shape priors Data-driven exemplar priors Affinity propagation Surface reconstruction

Abstract:In this paper, we propose a framework to reconstruct 3D models from raw scanned points by learning the prior knowledge of a specific class of objects. Unlike previous work that heuristically specifies particular regularities and defines parametric models, our shape priors are learned directly from existing 3D models under a framework based on affinity propagation. Given a database of 3D models within the same class of objects, we build a comprehensive library of 3D local shape priors. We then formulate the problem to select as-few-as-possible priors from the library, referred to as exemplar priors. These priors are sufficient to represent the 3D shapes of the whole class of objects from where they are generated. By manipulating these priors, we are able to reconstruct geometrically faithful models with the same class of objects from raw point clouds. Our framework can be easily generalized to reconstruct various categories of 3D objects that have more geometrically or topologically complex structures. Comprehensive experiments exhibit the power of our exemplar priors for gracefully solving several problems in 3D shape reconstruction such as preserving sharp features, recovering fine details and so on. (C) 2017 Elsevier Ltd. All rights reserved.

ISSN No.:0010-4485

Translation or Not:no

Date of Publication:2017-07-01

Co-author:Remil, Oussama,谢乾,谢星宇,Xu, Kai

Correspondence Author:Jun Wang

Pre One:Data-Driven Sparse Priors of 3D Shapes

Next One:Implicit Block Diagonal Low-Rank Representation

Profile


汪俊,1981年生。南京航空航天大学教授,博士生导师。2007年毕业于南京航空航天大学,获博士学位。2008年至2010年,分别在美国加州大学、美国威斯康星大学从事博士后研究工作;2010年至2013年,在全球著名测量系统公司-徕卡公司(美国硅谷)担任算法研发组长,主持超大规模激光雷达测量数据处理与分析等研发工作;2013年收到菲尔兹奖得主、哈佛大学丘成桐教授邀请,赴哈佛大学开展学术访问与研究合作。201310月加入南京航空航天大学,2013年受聘为第四批江苏特聘教授,2014年入选江苏省“双创计划(创新类)人才,2015年入选“国家重大人才工程A类青年项目”,2019年获得江苏省杰出青年基金项目资助。