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Perceptual grouping of line features in 3-D space: a model-based framework
Authors:In Kyu Park [Author Vitae]  Kyoung Mu Lee [Author Vitae]
Affiliation:a Multimedia Laboratory, Samsung Advanced Institute of Technology, San 14-1, Nongseo-ri, Kiheung-eup, Yongin 449-712, South Korea
b School of Electrical Engineering and Computer Science, Seoul National University, Seoul 151-742, South Korea
Abstract:In this paper, we propose a novel model-based perceptual grouping algorithm for the line features of 3-D polyhedral objects. Given a 3-D polyhedral model, perceptual grouping is performed to extract a set of 3-D line segments which are geometrically consistent with the 3-D model. Unlike the conventional approaches, grouping is done in 3-D space in a model-based framework. In our unique approach, a decision tree classifier is employed for encoding and retrieving the geometric information of the 3-D model. A Gestalt graph is constructed by classifying input instances into proper Gestalt relations using the decision tree. The Gestalt graph is then decomposed into a few subgraphs, yielding appropriate groups of features. As an application, we suggest a 3-D object recognition system which can be accomplished by selecting a best-matched group. In order to evaluate the performance of the proposed algorithm, experiments are carried out on both synthetic and real scenes.
Keywords:Perceptual grouping   Model-based framework   Line feature   Decision tree classifier   Gestalt graph   Subgraph   Object recognition
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