Journal of Systems Engineering and Electronics ›› 2007, Vol. 18 ›› Issue (2): 369-376.

• SOFTWARE ALGORITHM AND SIMULATION • Previous Articles     Next Articles

Adaptive learning algorithm based on mixture Gaussian background

Zha Yufei & Bi Duyan   

  1. Signal and Information Processing Lab, Engineering Coll. of Air Force Engineering Univ., Xi’an 710038, P. R. China
  • Online:2007-06-25 Published:2010-01-03

Abstract:

The key problem of the adaptive mixture background model is that the parameters can adaptively change according to the input data. To address the problem, a new method is proposed. Firstly, the recursive equations are inferred based on the maximum likelihood rule. Secondly, the forgetting factor and learning rate factor are redefined, and their still more general formulations are obtained by analyzing their practical functions. Lastly, the convergence of the proposed algorithm is proved to enable the estimation converge to a local maximum of the data likelihood function according to the stochastic approximation theory. The experiments show that the proposed learning algorithm excels the formers both in converging rate and accuracy.