Expansion target tracking method based on GLMB filtering and Gibbs sampling

A technology for expanding targets and targets, which is applied in the field of multi-extended target tracking based on the label random finite set framework, and can solve the problems that the point target model is no longer applicable, and the point target assumption is no longer satisfied.

Active Publication Date: 2018-02-09
HANGZHOU DIANZI UNIV
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Problems solved by technology

Because the traditional tracking algorithm no longer satisfies the point target assumption, the traditional point target model is no longer applicable

Method used

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  • Expansion target tracking method based on GLMB filtering and Gibbs sampling
  • Expansion target tracking method based on GLMB filtering and Gibbs sampling
  • Expansion target tracking method based on GLMB filtering and Gibbs sampling

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specific Embodiment approach

[0088] The present invention proposes a finite mixture model multi-extended target tracking method based on GLMB filtering and Gibbs sampling. Estimation of object shape. Its specific implementation is as follows:

[0089] Step 1 System Modeling

[0090] Step 1.1 Target Dynamic Model

[0091] Under the random finite set (RFS) framework, the state of multiple extended targets at time k is represented by the following RFS set:

[0092]

[0093] Over time, the state set X k Contains all the dynamic information of multiple targets at time k. At the next moment, some targets will die or continue to survive and their states will change, and there will also be some regeneration targets and newborn targets. The state model of the target RFS can be written as follows:

[0094]

[0095] Among them, S k|k-1 (x), B k|k-1 (x) and Γ k Indicates the survival, regeneration and newborn of the target, respectively.

[0096] Considering the situation of tracking N(k) extended targe...

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Abstract

The invention discloses an expansion target tracking method based on GLMB (Generalized labelled multi-bernoulli) filtering and Gibbs sampling. The expansion target tracking method based on GLMB filtering and Gibbs sampling estimates the target number and the shape of the expansion target, provides a multiple expansion target tracking method under a labelled random finite sets (L-RFS) framework, and mainly includes two aspects: dynamic modeling of multiple expansion targets and tracking estimation of multiple expansion targets. The expansion target tracking method based on GLMB filtering and Gibbs sampling includes the steps: combined with a generalized label multi-bernoulli filter, establishing a measurement limit hybrid model of the expansion targets, by means of Gibbs sampling and Bayesian information criterion, deriving the parameters of the limit hybrid model to learn tracking of the state of the multiple expansion targets, using an equivalent measurement method to replace measurement generated from the expansion targets, and performing ellipse approximating modeling on the shape of the expansion targets to realize estimation of the shape of the expansion targets. The simulation experiment shows that the expansion target tracking method based on GLMB filtering and Gibbs sampling can effectively track the multiple expansion targets, can accurately estimate the state and theshape of the expansion targets, and can obtain the track of the targets.

Description

technical field [0001] The invention belongs to the field of multi-extended target tracking. Aiming at the state estimation of multi-extended targets under clutter conditions, the estimation of the number of targets, and the estimation of the shape of extended targets, a label based random finite set (Labelled random finite sets, L-RFS) is proposed. Multi-extension object tracking method under the framework. Background technique [0002] Traditional target tracking algorithms generally assume that the tracked target is a point target, that is, one target produces at most one measurement, but with the continuous development of modern sensor technology, the increasing resolution of radar enables us to obtain multiple measurements from a single target. A measurement, that is, a target produces more than one measurement point in a sampling period, this type of target is called an extended target. Extended target tracking can provide us with precise movement information and shap...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01S7/02G01S13/70
CPCG01S7/02G01S13/70
Inventor 陈一梅刘伟峰王煦东
Owner HANGZHOU DIANZI UNIV
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