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Fully Bayesian Prediction Algorithms for Mobile Robotic Sensors under Uncertain Localization Using Gaussian Markov Random Fields

机译:高斯马尔可夫随机字段不确定定位下移动机器人传感器的完全贝叶斯预测算法

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摘要

In this paper, we present algorithms for predicting a spatio-temporal random field measured by mobile robotic sensors under uncertainties in localization and measurements. The spatio-temporal field of interest is modeled by a sum of a time-varying mean function and a Gaussian Markov random field (GMRF) with unknown hyperparameters. We first derive the exact Bayesian solution to the problem of computing the predictive inference of the random field, taking into account observations, uncertain hyperparameters, measurement noise, and uncertain localization in a fully Bayesian point of view. We show that the exact solution for uncertain localization is not scalable as the number of observations increases. To cope with this exponentially increasing complexity and to be usable for mobile sensor networks with limited resources, we propose a scalable approximation with a controllable trade-off between approximation error and complexity to the exact solution. The effectiveness of the proposed algorithms is demonstrated by simulation and experimental results.
机译:在本文中,我们提供了用于预测移动机器人传感器在定位和测量的不确定性下通过移动机器人传感器测量的时空随机场的算法。 Spatio-Temporal的感兴趣领域由一个时变的平均函数和高斯马尔可夫随机字段(GMRF)的总和进行建模,具有未知的超参数。我们首先派生了精确的贝叶斯解决方案来计算随机场的预测推断,考虑到观察,不确定的超参数,测量噪声和完全贝叶斯观点中的不确定定位。我们表明,随着观察人数增加,不确定定位的确切解决方案是不可扩展的。为了应对这种指数增加的复杂性,并且可用于具有有限资源的移动传感器网络,我们提出了一种可伸缩的近似,在近似误差和复杂性与确切的解决方案之间的可控权衡。通过模拟和实验结果证明了所提出的算法的有效性。

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