TR2005-101

Bayesian Background Modeling for Foreground Detection


Abstract:

We propose a Bayesian learning method to capture the background statistics of a dynamic scene. We model each pixel as a set of layered normal distributions that compete with each other. Using a recursive Bayesian learning mechanism, we estimate not only the mean and variance but also the probability distribution of the mean and covariance of each model. This learning algorithm preserves the multimodality of the background process and is capable of estimating the number of required layers to represent each pixel.

 

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    •  NEWS    VSSN 2005: publication by Oncel Tuzel and others
      Date: November 6, 2005
      Where: ACM International Workshop on Video Surveillance and Sensor Networks (VSSN)
      Research Area: Machine Learning
      Brief
      • The paper "Bayesian Background Modeling for Foreground Detection" by Porikli, F. and Tuzel, O. was presented at the ACM International Workshop on Video Surveillance and Sensor Networks (VSSN).
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