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A distributed information fusion method for localization based on Pareto optimization

机译:基于Pareto优化的定位分布式信息融合方法

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摘要

To overcome the limitations of specific positioning techniques for mobile wireless nodes and achieve a high accuracy, the fusion of heterogeneous sensor information is an appealing strategy. In this paper, the problem of optimal fusion of ranging information typically provided by Ultra-Wideband radio with speed and absolute orientation information is addressed. A new distributed recursive estimation method is proposed. The method does not assume any motion model of mobile nodes and is based on a Pareto optimization. The challenging part of the new estimator is the characterization of the statistical information needed to model the optimization problem. The proposed estimator is validated by Monte Carlo simulations, and the performance is compared to several Kalman-based filters commonly employed for localization and sensor fusion. Much better performance is achieved, but at the price of an increased computational complexity.
机译:为了克服移动无线节点的特定定位技术的局限性并实现高精度,异构传感器信息的融合是一种吸引力的策略。 在本文中,解决了超宽带无线电提供了速度和绝对取向信息的测距信息的最佳融合问题。 提出了一种新的分布式递归估计方法。 该方法不假设移动节点的任何运动模型,并且基于Pareto优化。 新估算器的具有挑战性的部分是对优化问题所需的统计信息的表征。 通过Monte Carlo模拟验证所提出的估算器,将性能与常用于本地化和传感器融合的若干基于卡尔曼的过滤器进行比较。 实现了更好的性能,但价格提高了计算复杂性的价格。

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