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Efficient Convex Relaxation Methods for Robust Target Localization by a Sensor Network Using Time Differences of Arrivals

机译:利用到达时间差的传感器网络进行鲁棒目标定位的高效凸松弛方法

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摘要

We consider the problem of target localization by a network of passive sensors. When an unknown target emits an acoustic or a radio signal, its position can be localized with multiple sensors using the time difference of arrival (TDOA) information. In this paper, we consider the maximum likelihood formulation of this target localization problem and provide efficient convex relaxations for this nonconvex optimization problem. We also propose a formulation for robust target localization in the presence of sensor location errors. Two Cramer-Rao bounds are derived corresponding to situations with and without sensor node location errors. Simulation results confirm the efficiency and superior performance of the convex relaxation approach as compared to the existing least squares based approach when large sensor node location errors are present.
机译:我们考虑了通过无源传感器网络定位目标的问题。当未知目标发出声学或无线电信号时,可以使用到达时间差 (TDOA) 信息通过多个传感器定位其位置。在本文中,我们考虑了该目标定位问题的最大似然公式,并为该非凸优化问题提供了有效的凸松弛。我们还提出了一种在存在传感器定位误差的情况下进行稳健目标定位的公式。推导了两个 Cramer-Rao 边界,对应于有和没有传感器节点定位错误的情况。仿真结果证实,当存在较大的传感器节点定位误差时,与现有的基于最小二乘法的方法相比,凸松弛方法的效率和优越性能。

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