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Target Tracking in Wireless Sensor Networks Based on the Combination of KF and MLE Using Distance Measurements

机译:基于距离测量的KF和MLE组合的无线传感器网络目标跟踪

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摘要

A common technical difficulty in target tracking in a wireless sensor network is that individual homogeneous sensors only measure their distances to the target whereas the state of the target composes of its position and velocity in the Cartesian coordinates. That is, the senor measurements are nonlinear in the target state. Extended Kalman filtering is a commonly used method to deal with the nonlinearity, but this often leads to unsatisfactory or even unstable tracking performances. In this paper, we present a new target tracking approach which avoids the instability problem and offers superior tracking performances. We first propose an improved noise model which incorporates both additive noises and multiplicative noises in distance sensing. We then use a maximum likelihood estimator for prelocalization to remove the sensing nonlinearity before applying a standard Kalman filter. The advantages of the proposed approach are demonstrated via experimental and simulation results.
机译:无线传感器网络中目标跟踪的一个常见技术难题是,各个同质传感器仅测量其到目标的距离,而目标的状态由其在笛卡尔坐标中的位置和速度组成。即,传感器测量在目标状态下是非线性的。扩展卡尔曼滤波是处理非线性的一种常用方法,但是这通常会导致跟踪性能不理想甚至不稳定。在本文中,我们提出了一种新的目标跟踪方法,该方法避免了不稳定问题并提供了出色的跟踪性能。我们首先提出一种改进的噪声模型,该模型在距离感测中同时包含了加性噪声和乘性噪声。然后,在应用标准卡尔曼滤波器之前,我们使用最大似然估计器进行预定位以消除感测非线性。通过实验和仿真结果证明了该方法的优势。

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