Convex Relaxation for Maximum-Likelihood Network Localization Using Distance and Direction Data

H. Naseri, V. Koivunen
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引用次数: 4

Abstract

A reliable and accurate positioning technology is crucial for a large variety of wireless services and applications. High-resolution estimates of distance and direction data are available in most current and emerging wireless systems. Combining these two sensing modalities can improve the estimation performance and identifiability of the localization problem. However, the problem of cooperative localization using joint distance and direction estimates is still a largely unexplored problem. A novel convex relaxation of the maximum likelihood (ML) estimator for this problem called Semidefinite Programming Hybrid Localization (SDHL) algorithm is proposed in this paper. Numerical results are presented showing that the localization error is significantly reduced in almost every simulation scenario compared to the state of the art. This improvement in localization performance is due to the close approximation of the ML estimator.
基于距离和方向数据的最大似然网络定位的凸松弛
可靠和准确的定位技术对于各种无线服务和应用至关重要。在大多数当前和新兴的无线系统中,都可以获得距离和方向数据的高分辨率估计。结合这两种传感方式,可以提高定位问题的估计性能和可辨识性。然而,利用关节距离和方向估计的协同定位问题仍然是一个很大程度上未被探索的问题。针对这一问题,本文提出了一种新的最大似然估计的凸松弛算法——半定规划混合定位算法。数值结果表明,与目前的定位技术相比,在几乎所有仿真场景下,定位误差都显著降低。这种定位性能的改进是由于ML估计器的近似值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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