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Hybrid Sequential Fusion Estimation for Asynchronous Sensor Network-Based Target Tracking

机译:基于异步传感器网络的目标跟踪的混合顺序融合估计

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摘要

This brief presents a sequential fusion estimation method for maneuvering target tracking in asynchronous wireless sensor networks. The modeling error caused by asynchronous sampling and communication uncertainties is considered and compensated for by introducing a time-varying fading factor into the unscented Kalman filter (UKF). A square root form of the unscented strong tracking filter (SR-USTF) based on QR decomposition is proposed to improve the stability and performance of the USTF. Moreover, a hybrid sequential fusion estimation method is presented to estimate the state of the target, and the proposed sequential fusion estimation method combines the superiorities of both the SR-USTF and the conventional UKF, and is able to deal with communication uncertainties such as time delay and packet loss in a unified framework. Both simulations and experiments of an E-puck robot tracking example are provided to demonstrate the effectiveness and superiorities of the proposed sequential fusion estimation method.
机译:该摘要提出了一种用于在异步无线传感器网络中操纵目标跟踪的顺序融合估计方法。通过将时变衰落因子引入无味卡尔曼滤波器(UKF),可以考虑并补偿由异步采样和通信不确定性引起的建模误差。为了提高USTF的稳定性和性能,提出了基于QR分解的无味强跟踪滤波器(SR-USTF)的平方根形式。此外,提出了一种混合顺序融合估计方法来估计目标的状态,并且所提出的顺序融合估计方法结合了SR-USTF和常规UKF的优势,并且能够处理诸如时间等通信不确定性统一框架中的延迟和数据包丢失。提供了E-puck机器人跟踪示例的仿真和实验,以证明所提出的顺序融合估计方法的有效性和优越性。

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