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Efficient Relative Fingerprinting Based UAV Localization via Tensor Completion

机译:基于张量补全的基于相对指纹的高效无人机定位

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Recently, unmanned Aerial Vehicles (UAVs) localization is becoming a major research focus. In this paper, we propose a novel efficient relative fingerprinting-based passive UAV localization algorithm via a tensor completion approach. We first introduce a new relative fingerprint framework by exploring the correlations between the UAV fingerprint and the fingerprint database, the correction factors can be achieved to apply the fingerprint idea into the passive localization case. Then, we exploit the spatial correlation of the RSS data and propose a new training scheme which utilizes tensor completion. Simulation results highlight the superior performance of the proposed algorithm in terms of reconstruction error and localization accuracy.
机译:最近,无人飞行器(UAV)的本地化已成为主要的研究重点。在本文中,我们通过张量完成方法提出了一种新颖的基于相对指纹的高效有效无源无人机定位算法。通过探索无人机指纹与指纹数据库之间的相关性,我们首先引入了一个新的相对指纹框架,可以实现将指纹思想应用于被动定位的校正因子。然后,我们利用RSS数据的空间相关性,提出一种利用张量完成的新训练方案。仿真结果突出了所提算法在重构误差和定位精度方面的优越性能。

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