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Particle flters for probability hypothesis density flter with the presence of unknown measurement noise covariance 被引量:9
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作者 Wu Xinhui Huang Gaoming Gao Jun 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2013年第6期1517-1523,共7页
In Bayesian multi-target fltering,knowledge of measurement noise variance is very important.Signifcant mismatches in noise parameters will result in biased estimates.In this paper,a new particle flter for a probabilit... In Bayesian multi-target fltering,knowledge of measurement noise variance is very important.Signifcant mismatches in noise parameters will result in biased estimates.In this paper,a new particle flter for a probability hypothesis density(PHD)flter handling unknown measurement noise variances is proposed.The approach is based on marginalizing the unknown parameters out of the posterior distribution by using variational Bayesian(VB)methods.Moreover,the sequential Monte Carlo method is used to approximate the posterior intensity considering non-linear and non-Gaussian conditions.Unlike other particle flters for this challenging class of PHD flters,the proposed method can adaptively learn the unknown and time-varying noise variances while fltering.Simulation results show that the proposed method improves estimation accuracy in terms of both the number of targets and their states. 展开更多
关键词 Multi-target tracking(MTT) parameter estimation Probability hypothesis density Sequential Monte Carlo Variational Bayesian method
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