Foreground Detection by Competitive Learning for Varying Input Distributions

Author:

López-Rubio Ezequiel1,Molina-Cabello Miguel A.1,Luque-Baena Rafael Marcos2,Domínguez Enrique1

Affiliation:

1. Department of Computer Languages and Computer Science, University of Málaga, Bulevar Louis Pasteur, 35, 29071 Málaga, Spain

2. Department of Computer Systems and Telematics Engineering, University of Extremadura, Calle Sta. Teresa Jornet, 38, 06800 Mérida (Badajoz), Spain

Abstract

One of the most important challenges in computer vision applications is the background modeling, especially when the background is dynamic and the input distribution might not be stationary, i.e. the distribution of the input data could change with time (e.g. changing illuminations, waving trees, water, etc.). In this work, an unsupervised learning neural network is proposed which is able to cope with progressive changes in the input distribution. It is based on a dual learning mechanism which manages the changes of the input distribution separately from the cluster detection. The proposal is adequate for scenes where the background varies slowly. The performance of the method is tested against several state-of-the-art foreground detectors both quantitatively and qualitatively, with favorable results.

Publisher

World Scientific Pub Co Pte Lt

Subject

Computer Networks and Communications,General Medicine

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