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Augmented input estimation in multiple maneuvering target tracking 被引量:1

Augmented input estimation in multiple maneuvering target tracking
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摘要 This paper presents augmented input estimation(AIE)for multiple maneuvering target tracking.Multi-target tracking(MTT)is based on two main parts,data association and estimation.In data association(DA),the best observations are assigned to the considered tracks.In real conditions,the number of observations is more than targets and also locations of observations are often so scattered that the association between targets and observations cannot be done simply.In this case,for general MTT problems with unknown numbers of targets,we present a Markov chain Monte-Carlo DA(MCMCDA)algorithm that approximates the optimal Bayesian filter with low complexity in computations.After DA,estimation and tracking should be done.Since in general cases,many targets can have maneuvering motions,then AIE is proposed to cover both the non-maneuvering and maneuvering parts of motion and the maneuver detection procedure is eliminated.This model with an input estimation(IE)approach is a special augmentation in the state space model which considers both the state vector and the unknown input vector as a new augmented state vector.Some comparisons based on the Monte-Carlo simulations are also made to evaluate the performances of the proposed method and other older methods in MTT. This paper presents augmented input estimation(AIE)for multiple maneuvering target tracking. Multi-target tracking(MTT) is based on two main parts, data association and estimation.In data association(DA), the best observations are assigned to the considered tracks. In real conditions, the number of observations is more than targets and also locations of observations are often so scattered that the association between targets and observations cannot be done simply. In this case, for general MTT problems with unknown numbers of targets, we present a Markov chain MonteCarlo DA(MCMCDA) algorithm that approximates the optimal Bayesian filter with low complexity in computations. After DA, estimation and tracking should be done. Since in general cases, many targets can have maneuvering motions, then AIE is proposed to cover both the non-maneuvering and maneuvering parts of motion and the maneuver detection procedure is eliminated. This model with an input estimation(IE) approach is a special augmentation in the state space model which considers both the state vector and the unknown input vector as a new augmented state vector. Some comparisons based on the Monte-Carlo simulations are also made to evaluate the performances of the proposed method and other older methods in MTT.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2019年第5期841-851,共11页 系统工程与电子技术(英文版)
关键词 MULTI-TARGET tracking (MTT) MARKOV chain Monte-Carlodata ASSOCIATION (MCMCDA) DATA ASSOCIATION (DA) augmentedinput estimation (AIE) multi-target tracking(MTT) Markov chain Monte-Carlo data association(MCMCDA) data association(DA) augmented input estimation(AIE)
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