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Multiple model particle flter track-before-detect for range ambiguous radar
Authors:Wang Guohong  Tan Shuncheng  Guan Chengbin  Wang Na  Liu Zhaolei
Institution:Wang Guohong;Tan Shuncheng;Guan Chengbin;Wang Na;Liu Zhaolei;Institute of Information Fusion, Naval Aeronautical and Astronautical University;No.92941 Unit,93 Element;Nanjing Research Institute of Electronics Technology;
Abstract:The middle pulse repetition frequency (MPRF) and high pulse repetition frequency (HPRF) modes are widely adopted in airborne pulse Doppler (PD) radar systems, which results in the problem that the range measurement of targets is ambiguous. The existing data processing based range ambiguity resolving methods work well on the condition that the signal-to-noise ratio (SNR) is high enough. In this paper, a multiple model particle filter (MMPF) based track-before-detect (TBD) method is proposed to address the problem of target detection and tracking with range ambiguous radar in low-SNR environment. By introducing a discrete variable that denotes whether a target is present or not and the discrete pulse interval number (PIN) as components of the target state vector, and modeling the incremental variable of the PIN as a three-state Markov chain, the proposed algorithm converts the problem of range ambiguity resolving into a hybrid state filtering problem. At last, the hybrid filtering problem is implemented by a MMPF-based TBD method in the Bayesian framework. Simulation results demonstrate that the proposed Bayesian approach can estimate target state as well as the PIN simultaneously, and succeeds in detecting and tracking weak targets with the range ambiguous radar. Simulation results also show that the performance of the proposed method is superior to that of the multiple hypothesis (MH) method in low-SNR environment.
Keywords:Bayesian framework Particle flter Pulse repetition frequency Range ambiguity Signal-to-noise ratio Track-before-detect
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