Practical Data Fusion Algorithm Applied in Auxiliary Particle Filtering

2012 
The filtering for target tracking was discussed in the paper in order to find a method with better accuracy and reliability than extended kalman filtering and unscented kalman filtering.This paper built a non-linear system model,turn model.Then a method of auxiliary particle filters combined with data fusion was proposed.Auxiliary particle filtering for character of the turn model modified every particle before resampling according to likelihood function,which can get the certain accuracy of filtering with fewest particles.In order to improve the filtering result further,the multi-auxiliary particle filters with a practical data fusion algorithm was used and it is efficient in turn model and can get good result through computer simulation.
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