Title :
A Bayesian 3-D Search Engine Using Adaptive Views Clustering
Author :
Ansary, Tarik Filali ; Daoudi, Mohamed ; Vandeborre, Jean-Philippe
Author_Institution :
FOX-MIIRE Res. Group, Lille
Abstract :
In this paper, we propose a method for three-dimensional (3D)-model indexing based on two-dimensional (2D) views, which we call adaptive views clustering (AVC). The goal of this method is to provide an "optimal" selection of 2D views from a 3D model, and a probabilistic Bayesian method for 3D-model retrieval from these views. The characteristic view selection algorithm is based on an adaptive clustering algorithm and uses statistical model distribution scores to select the optimal number of views. Starting from the fact that all views do not have equal importance, we also introduce a novel Bayesian approach to improve the retrieval. Finally, we present our results and compare our method to some state-of-the-art 3D retrieval descriptors on the Princeton 3D Shape Benchmark database and a 3D-CAD-models database supplied by the car manufacturer Renault
Keywords :
Bayes methods; database indexing; image retrieval; pattern clustering; search engines; solid modelling; statistical distributions; visual databases; 2D views; 3D-model indexing; 3D-model retrieval system; Bayesian 3D search engine; adaptive views clustering algorithm; characteristic view selection algorithm; probabilistic Bayesian method; statistical model distribution; Automatic voltage control; Bayesian methods; Clustering algorithms; Image databases; Image retrieval; Indexing; Information retrieval; Search engines; Shape; Two dimensional displays; 3–D indexing; 3–D retrieval; Bayesian approach; clustering; views;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2006.886359