Advanced Search
CS Search Google Search
Subscribers, please login

Published Articles >> Table of Contents >> Abstract

12th IEEE International Conference on Tools with Artificial Intelligence (ICTAI'00)   p. 0242
Multi-objective retrieval of object pose from video

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

DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/TAI.2000.889877
Send link to a friend

Abstract
Abstract: Introduces a novel approach for rigid object pose estimation. The system rotates a reference frame of the object of interest until it reaches a view at which the rotated reference view and the unknown-pose view seem to be "similar". A number of pose similarity measures were tested for different types of objects undergoing various amounts of rotation from the reference pose. We demonstrate that the sum of the texture difference and the mask difference can be used as an effective pose similarity measure, which is capable of a unique determination of the correct pose. A number of optimization methods (e.g. genetic algorithms) were used as feedback from pose comparison to reference frame rotation. The results of comparing these methods in a number of experiments is reported in this paper as well.
Additional Information
Index Terms- video signal processing; computer vision; optimisation; feedback; rotation; image texture; multi-objective retrieval; object pose retrieval; video; rigid object pose estimation; reference frame rotation; rotated reference view; unknown-pose view; pose similarity measures; reference pose; texture difference; mask difference; optimization methods; genetic algorithms; feedback; pose comparison

Citation:  A.N. Avanaki, B. Hamidzadeh, F. Kossentini, "Multi-objective retrieval of object pose from video," ictai, p. 0242,  12th IEEE International Conference on Tools with Artificial Intelligence (ICTAI'00),  2000

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