Advanced Search
CS Search Google Search
Subscribers, please login

Published Articles >> Table of Contents >> Abstract

Third International Conference on Cyberworlds (CW'04)   pp. 377-383
Scale-Space Processing of Point-Sampled Geometry for Efficient 3D Object Segmentation

Full Article Text: Download PDF of full textBuy this articleGet full text from IEEE Xplore

DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/CW.2004.54
Send link to a friend

Abstract
In this paper, we present a new framework for analyzing and segmenting point-sampled 3D objects. Our method first computes for each surface point the surface curvature distribution by applying the Principal Component Analysis on local neighborhoods with different sizes. Then we model in the four dimensional space the joint distribution of surface curvature and position features as a mixture of Gaussians using the Expectation Maximization algorithm. Central to our method is the extension of the scale-space theory from the 2D domain into the three-dimensional space to allow feature analysis and classification at different scales. Our algorithm operates directly on points requiring no vertex connectivity information. We demonstrate and discuss the performance of our framework on a collection of point sampled 3D objects.
Additional Information
Index Terms- Scale-space, 3D object segmentation, Expectation-Maximization algorithm

Citation:  Hamid Laga, Hiroki Takahashi, Masayuki Nakajima, "Scale-Space Processing of Point-Sampled Geometry for Efficient 3D Object Segmentation," cw, pp. 377-383,  Third International Conference on Cyberworlds (CW'04),  2004

Similar Articles

Abstract Contents
Abstract
Index Terms
Citation




Free access to

  • Abstracts
  • Selected PDFs

Electronic subscribers login to:

  • Access HTML/PDFs of full text articles

Subscription information

Get a Web account

PDFs require Adobe Acrobat Reader.

Peer Review Notice

Give us Feedback