GMM background modeling using divergence-based weight updating

Background modeling is a core task of video-based surveillance systems used to facilitate the online analysis of real-world scenes. Nowadays, GMM-based background modeling approaches are widely used, and several versions have been proposed to improve the original one proposed by Stauffer and Grimson...

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Autores:
Pulgarín Giraldo, Juan Diego
Castellanos Domínguez, German
Insuasti Ceballos, Hernan David
Álvarez Meza, Andrés Marino
Bouwmans, Thierry
Tipo de recurso:
Fecha de publicación:
2017
Institución:
Universidad Autónoma de Occidente
Repositorio:
RED: Repositorio Educativo Digital UAO
Idioma:
eng
OAI Identifier:
oai:red.uao.edu.co:10614/11223
Acceso en línea:
http://hdl.handle.net/10614/11223
Palabra clave:
Modelado
Modeling
Background modeling
GMM
Euclidean divergence
Rights
openAccess
License
Derechos Reservados - Universidad Autónoma de Occidente
Description
Summary:Background modeling is a core task of video-based surveillance systems used to facilitate the online analysis of real-world scenes. Nowadays, GMM-based background modeling approaches are widely used, and several versions have been proposed to improve the original one proposed by Stauffer and Grimson. Nonetheless, the cost function employed to update the GMM weight parameters has not received major changes and is still set by means of a single binary reference, which mostly leads to noisy foreground masks when the ownership of a pixel to the background model is uncertain. To cope with this issue, we propose a cost function based on Euclidean divergence, providing nonlinear smoothness to the background modeling process. Achieved results over well-known datasets show that the proposed cost function supports the foreground/background discrimination, reducing the number of false positives, especially, in highly dynamical scenarios