Appearance Based Recognition of Complex Objects by Genetic Prototype-Learning
Date issued
2005
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Václav Skala - UNION Agency
Abstract
This paper describes a method to recognize and classify complex objects in digital images. To this end, a uniform
representation of prototypes is introduced. The notion of a prototype describes a set of local features which allow to
recognize objects by their appearance. During a training step a genetic algorithm is applied to the prototypes to optimize
them with regard to the classification task. After training the prototypes are compactly stored in a decision tree which
allows a fast detection of matches between prototypes and images. The proposed method is tested with natural images of
highway scenes, which were divided into 15 classes (including one class for rejection). The learning process is
documented and the results show a classification rate of up to 93 percent for the training and test samples.
Description
Subject(s)
rozpoznávání vzorců, rozhodovací stromy, genetický algoritmus
Citation
WSCG '2005: Short Papers: The 13-th International Conference in Central Europe on Computer Graphics, Visualization and Computer Vision 2005 in co-operation with EUROGRAPHICS, p. 149-152.