Shape Modeling from Multiple View Images Using GAs - Robotics Institute Carnegie Mellon University

Shape Modeling from Multiple View Images Using GAs

S. Kirihara and Hideo Saito
Conference Paper, Proceedings of 3rd Asian Conference on Computer Vision (ACCV '98), Vol. 2, pp. 448 - 454, 1998

Abstract

Shape modeling is a very important issue for many study, for example, object recognition for robot vision, virtual environment construction, and so on. In this paper, a new method of object modeling from multiple view images using genetic algorithms (GAs) is proposed. In this method, a similarity between model and every input image is calculated, and then the model which has the maximum similarity is found. For finding the model of maximum similarity, genetic algorithms are used as the optimization method. In the genetic algorithm, the sharing scheme is employed for efficient detection of multiple solution, because some shape may be represented by multiple shape models. Some results of modeling experiments from real multiple images demonstrate that the proposed method can robustly generate model by using the GA.

BibTeX

@conference{Kirihara-1998-14561,
author = {S. Kirihara and Hideo Saito},
title = {Shape Modeling from Multiple View Images Using GAs},
booktitle = {Proceedings of 3rd Asian Conference on Computer Vision (ACCV '98)},
year = {1998},
month = {January},
volume = {2},
pages = {448 - 454},
}