An improved mixture unscented Kalman filters algorithm for joint target tracking and classification

Guidance, Navigation and Control Conference(2014)

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摘要
For the joint target tracking and classification (JTC) problem with the kinematic radar only, an improved mixture unscented Kalman filters (MUKF) algorithm is proposed. The kinematic measurements and the prior speed information envelop are used to estimate the dynamic state and classify the target. Based on the traditional mixture Kalman filters (MKF) algorithm, the MUKF algorithm adopt the unscented transform (UT) to approximate the non-linear and non-Gaussian state distribution. With the improved mutual feedback strategy, our algorithm utilizes the feedback information completely and increase the tracking efficiency on the higher probable class. Mathematical analysis and simulation results confirm the better performance of the proposed method.
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关键词
kalman filters,kinematics,mathematical analysis,radar tracking,signal classification,target tracking,kinematic radar,mixture kalman filters,mixture unscented kalman filters,non-gaussian state distribution,target classification,unscented transform,classification algorithms,algorithm design and analysis,approximation algorithms
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