JOURNAL OF RADARS
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JOURNAL OF RADARS  0, Vol. Issue (): 0-0    DOI: 10.12000/JR18060
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Track-Before-Detect Algorithm Based on Improved Auxiliary Particle PHD Filter Under Clutter Background
PEI Jiazheng  HUANG Yong*  DONG Yunlong  HE You  CHEN Xiaolong
(Naval Aviation University, Yantai 264001, China)
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Abstract Under the clutter background condition, the existing particle filter pre-detection tracking algorithm based on Probability Hypothesis Density (PHD) filtering is not accurate enough to estimate the number of targets in dense multi-objectives. In this study, the concept of two-layer particle is introduced. The Auxiliary Particle Filter (APF) based on Parallel Partition (PP) theory is applied to PHD-TBD. The PP APF Track-Before-Detect based on the Probability Hypothesis Density filter (APP-PF-PHD-TBD) algorithm is proposed to improve the target number and state estimation accuracy. The simulation results show that, compared with the existing PHD-filtering-based particle filter track-before-detect algorithm, the proposed algorithm has significant performance advantages in target number and state estimation accuracy. These advantages are particularly obvious in dense target scenarios. Finally, the sea clutter background data obtained using the navigation radar prove that the proposed algorithm outperforms the existing PHD-filtering-based particle filter track-before-detect algorithm in application.
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PEI Jiazheng
HUANG Yong
DONG Yunlong
HE You
CHEN Xiaolong
Key wordsParallel Partition (PP)   Auxiliary Particle Filter (APF)   Probability Hypothesis Density (PHD)   Track-Before-Detect (TBD)   Random Finite Set (RFS)     
Received: 2018-08-23; Published: 2019-01-10
Fund: The National Natural Science Foundation of China (U1633122, 61871391, 61471382, 61531020, 61671462), National Defense Science Foundation (2102024), Special Funds of Taishan Scholars of Shandong and Young Elite Scientist Sponsorship Program of CAST (YESS20160115)
Cite this article:   
PEI Jiazheng,HUANG Yong,DONG Yunlong et al. Track-Before-Detect Algorithm Based on Improved Auxiliary Particle PHD Filter Under Clutter Background[J]. JOURNAL OF RADARS, 0, (): 0-0.
 
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