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Decentralized estimation of sensor systematic error and target state vector

机译:传感器系统误差和目标状态向量的分散估计

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摘要

An accurate estimation of the sensor systematic error is significant for improving the performance of target tracking system. The existing methods usually append the bias states directly to the variable states to form augmented state vectors and utilize the conventional Kalman estimator to achieve state vectors estimate. So doing is expensive in computation, and much work is devoted to decoupling variable states and systematic error. But the decentralied estimation of systematic errors and reduction of the amount of computation as well as decentralied track fusion are far from being realized. This paper addresses distributed track fusion problem in multi-sensor tracking system in the presence of sensor bias. By this method, variable states and systematic error is decoupled. Decentralized systematic error estimation and track fusion are achieved. Simulation results verify that this method can get accurate estimation of systematic error and state vector.
机译:传感器系统误差的准确估计对于提高目标跟踪系统的性能非常重要。现有方法通常将偏置状态直接附加到可变状态以形成增强状态向量,并利用常规的卡尔曼估计器来实现状态向量估计。因此,这样做在计算上是昂贵的,并且许多工作致力于将变量状态和系统误差解耦。但是,系统误差的分散估计和计算量的减少以及分散的轨迹融合远未实现。本文针对存在传感器偏差的多传感器跟踪系统中的分布式跟踪融合问题进行了研究。通过这种方法,变量状态和系统误差是分离的。实现了分散的系统误差估计和航迹融合。仿真结果表明,该方法可以准确估计系统误差和状态向量。

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