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TOA-based passive localization of multiple targets with inaccurate receivers based on belief propagation on factor graph

机译:基于因子图上信念传播的不精确接收器的基于TOA的多目标被动定位

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Location awareness is now becoming a vital requirement for many practical applications. In this paper, we consider passive localization of multiple targets with one transmitter and several receivers based on time of arrival (TOA) measurements. Existing studies assume that positions of receivers are perfectly known. However, in practice, receivers' positions might be inaccurate, which leads to localization error of targets. We propose factor graph (FG)-based belief propagation (BP) algorithms to locate the passive targets and improve the position accuracy of receivers simultaneously. Due to the nonlinearity of the likelihood function, messages on the FG cannot be derived in closed form. We propose both sample based and parametric methods to solve this problem. In the sample -based BP algorithm, particle swarm optimization is employed to reduce the number of particles required to represent messages. In parametric BP algorithm, the nonlinear terms in messages are linearized, which results in closed-form Gaussian message passing on FG. The Bayesian Cramer-Rao bound (BCRB) for passive targets localization with inaccurate receivers is derived to evaluate the performance of the proposed algorithms. Simulation results show that both the sample -based and parametric BP algorithms outperform the conventional method and attain the proposed BCRB. Receivers' positions can also be improved via the proposed BP algorithms. Although the parametric BP algorithm performs slightly worse than the sample -based BP method, it could be more attractive in practical applications due to the significantly lower computational complexity. (C) 2015 Elsevier Inc. All rights reserved.
机译:现在,位置感知已成为许多实际应用中的重要要求。在本文中,我们考虑基于到达时间(TOA)的测量,利用一个发射机和多个接收机对多个目标进行被动定位。现有研究假设接收机的位置是众所周知的。但是,实际上,接收器的位置可能不正确,这会导致目标的定位误差。我们提出基于因子图(FG)的置信传播(BP)算法来定位被动目标并同时提高接收器的定位精度。由于似然函数的非线性,因此无法以封闭形式导出FG上的消息。我们提出了基于样本和参数的方法来解决这个问题。在基于样本的BP算法中,采用了粒子群优化算法来减少表示消息所需的粒子数量。在参数BP算法中,消息中的非线性项被线性化,从而导致封闭形式的高斯消息在FG上传递。推导了具有不准确接收器的被动目标定位的贝叶斯Cramer-Rao界(BCRB),以评估所提出算法的性能。仿真结果表明,基于样本的BP算法和基于参数的BP算法均优于传统方法,并且达到了建议的BCRB。接收者的位置也可以通过提出的BP算法来改善。尽管参数BP算法的性能比基于样本的BP方法稍差,但由于计算复杂度大大降低,因此在实际应用中可能更具吸引力。 (C)2015 Elsevier Inc.保留所有权利。

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