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Bayesian Spatial Event Distribution Grid Maps for Modeling the Spatial Distribution of Gas Detection Events

机译:用于气体检测事件的空间分布建模的贝叶斯空间事件分布网格图

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In this paper we introduce a novel gas distribution mapping algorithm, Bayesian Spatial Event Distribution (BASED), that, instead of modeling the spatial distribution of a quasi-continuous gas concentration, models the spatial distribution of gas events, for example detection and non-detection of a target gas. The proposed algorithm is based on the Bayesian Inference framework and models the likelihood of events at a certain location with a Bernoulli distribution. In order to avoid overfitting, a Bayesian approach is used with a beta distribution prior for the parameter μ that governs the Bernoulli distribution. In this way, the posterior distribution maintains the same form of the prior, i.e., will be a beta distribution as well, enabling a simple approach for sequential learning. To learn a map composed of beta distributions, we discretize the inspection area into a grid and extrapolate from local measurements using Gaussian kernels. We demonstrate the proposed algorithm for MOX sensors and a photo ionization detector mounted on a mobile robot and show how qualitatively similar maps are obtained from very different gas sensors.
机译:在本文中,我们介绍了一种新颖的气体分布映射算法,即贝叶斯空间事件分布(BASED),该算法不是对准连续气体浓度的空间分布建模,而是对气体事件的空间分布进行建模,例如检测和非气体分布。检测目标气体。所提出的算法基于贝叶斯推理框架,并使用伯努利分布对特定位置的事件可能性进行建模。为了避免过度拟合,在控制伯努利分布的参数μ之前使用贝叶斯方法进行贝塔分布。通过这种方式,后验分布保持与先验分布相同的形式,即也将成为beta分布,从而为顺序学习提供了一种简单的方法。要学习由β分布组成的地图,我们将检查区域离散为网格,并使用高斯核从局部测量值中推断出来。我们演示了针对MOX传感器和安装在移动机器人上的光电离检测器的拟议算法,并展示了如何从非常不同的气体传感器中获得定性相似的图。

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