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Adaptive Sample-Size Unscented Particle Filter with Partitioned Sampling for Three-Dimensional High-Maneuvering Target Tracking
Qi Deng;  Gang Chen;  Huaxiang Lu
2019
Source PublicationApplied Sciences
Volume9Issue:20Pages:4278
Indexed BySCI
Document Type期刊论文
Identifierhttp://ir.semi.ac.cn/handle/172111/29594
Collection高速电路与神经网络实验室
Recommended Citation
GB/T 7714
Qi Deng;Gang Chen;Huaxiang Lu. Adaptive Sample-Size Unscented Particle Filter with Partitioned Sampling for Three-Dimensional High-Maneuvering Target Tracking[J]. Applied Sciences,2019,9(20):4278.
APA Qi Deng;Gang Chen;Huaxiang Lu.(2019).Adaptive Sample-Size Unscented Particle Filter with Partitioned Sampling for Three-Dimensional High-Maneuvering Target Tracking.Applied Sciences,9(20),4278.
MLA Qi Deng;Gang Chen;Huaxiang Lu."Adaptive Sample-Size Unscented Particle Filter with Partitioned Sampling for Three-Dimensional High-Maneuvering Target Tracking".Applied Sciences 9.20(2019):4278.
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