DocumentCode :
1211293
Title :
Expandable Bayesian networks for 3D object description from multiple views and multiple mode inputs
Author :
Kim, ZuWhan ; Nevatia, Ramakant
Author_Institution :
California Univ., Berkeley, CA, USA
Volume :
25
Issue :
6
fYear :
2003
fDate :
6/1/2003 12:00:00 AM
Firstpage :
769
Lastpage :
774
Abstract :
Computing 3D object descriptions from images is an important goal of computer vision. A key problem here is the evaluation of a hypothesis based on evidence that is uncertain. There have been few efforts on applying formal reasoning methods to this problem. In multiview and multimode object description problems, reasoning is required on evidence features extracted from multiple images and nonintensity data. One challenge here is that the number of the evidence features varies at runtime because the number of images being used is not fixed and some modalities may not always be available. We introduce an augmented Bayesian network, the expandable Bayesian network (EBN), which instantiates its structure at runtime according to the structure of input. We introduce the use of hidden variables to handle correlation of evidence features across images. We show an application of an EBN to a multiview building description system. Experimental results show that the proposed method gives significant and consistent performance improvement to others.
Keywords :
belief networks; case-based reasoning; computer vision; feature extraction; learning (artificial intelligence); uncertainty handling; 3D object description; computer vision; expandable Bayesian networks; experimental results; feature extraction; hidden variables; learning; multimode object description problems; multiple mode inputs; multiple views; multiview building description system; performance; reasoning; uncertain evidence; uncertain reasoning; Application software; Bayesian methods; Buildings; Computer networks; Computer vision; Data mining; Feature extraction; Layout; Random variables; Runtime;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2003.1201825
Filename :
1201825
Link To Document :
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