Distributed Extended Object Tracking Using Coupled Velocity Model from WLS Perspective
Zhifei Li, Yan Liang, and Linfeng Xu

TL;DR
This paper introduces a coupled velocity model for extended object tracking that improves accuracy by linking orientation and velocity, and develops a distributed weighted least squares filtering approach using consensus schemes.
Contribution
It presents a novel coupled velocity model for EOT and a distributed WLS filtering method that maintains interdependencies through iterative linearization and consensus.
Findings
Enhanced tracking accuracy and robustness demonstrated.
Effective distributed filtering over realistic networks.
Preservation of state interdependencies in the filtering process.
Abstract
This study proposes a coupled velocity model (CVM) that establishes the relation between the orientation and velocity using their correlation, avoiding that the existing extended object tracking (EOT) models treat them as two independent quantities. As a result, CVM detects the mismatch between the prior dynamic model and actual motion pattern to correct the filtering gain, and simultaneously becomes a nonlinear and state-coupled model with multiplicative noise. The study considers CVM to design a feasible distributed weighted least squares (WLS) filter. The WLS criterion requires a linear state-space model containing only additive noise about the estimated state. To meet the requirement, we derive such two separate pseudo-linearized models by using the first-order Taylor series expansion. The separation is merely in form, and the estimates of interested states are embedded as…
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