基于最大似然tdoa的源定位局部强凸性及其算法意义

Huikang Liu, Yuen-Man Pun, A. M. So
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引用次数: 9

摘要

我们考虑了利用到达时间差(TDOA)测量的单源定位问题。通过分析问题的最大似然(ML)公式,我们表明,在对测量噪声的某些温和假设下,[1]中提出的闭式最小二乘估计和ML估计的估计误差,通过它们到真实源位置的距离来测量,是相同数量级的。然后,我们用它来建立一个奇怪的结果,即ML估计问题的目标函数实际上在最优解处是局部强凸的。这意味着一些轻量级的解决方法,如梯度下降(GD)和Levenberg-Marquardt (LM)方法,在适当初始化时将收敛到ML估计问题的最优解,并且收敛速度可以由标准参数确定。据我们所知,这些结果是新的,并有助于对结构化非凸优化问题的轻量级解决方法的有效性的文献增长。最后,我们通过仿真证明,GD和LM方法确实可以比一些现有的方法,包括广泛使用的基于半定松弛的方法,产生更准确的源位置估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local strong convexity of maximum-likelihood TDOA-Based source localization and its algorithmic implications
We consider the problem of single source localization using time-difference-of-arrival (TDOA) measurements. By analyzing the maximum-likelihood (ML) formulation of the problem, we show that under certain mild assumptions on the measurement noise, the estimation errors of both the closed-form least-squares estimate proposed in [1] and the ML estimate, as measured by their distances to the true source location, are of the same order. We then use this to establish the curious result that the objective function of the ML estimation problem is actually locally strongly convex at an optimal solution. This implies that some lightweight solution methods, such as the gradient descent (GD) and Levenberg-Marquardt (LM) methods, will converge to an optimal solution to the ML estimation problem when properly initialized, and the convergence rates can be determined by standard arguments. To the best of our knowledge, these results are new and contribute to the growing literature on the effectiveness of lightweight solution methods for structured non-convex optimization problems. Lastly, we demonstrate via simulations that the GD and LM methods can indeed produce more accurate estimates of the source location than some existing methods, including the widely used semidefinite relaxation-based methods.
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