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Gaussian process occupancy maps

机译:高斯过程占用图

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摘要

We introduce a new statistical modelling technique for building occupancy maps. The problem of mapping is addressed as a classification task where the robot's environment is classified into regions of occupancy and free space. This is obtained by employing a modified Gaussian process as a non-parametric Bayesian learning technique to exploit the fact that real-world environments inherently possess structure. This structure introduces dependencies between points on the map which are not accounted for by many common mapping techniques such as occupancy grids. Our approach is an 'anytime' algorithm that is capable of generating accurate representations of large environments at arbitrary resolutions to suit many applications. It also provides inferences with associated variances into occluded regions and between sensor beams, even with relatively few observations. Crucially, the technique can handle noisy data, potentially from multiple sources, and fuse it into a robust common probabilistic representation of the robot's surroundings. We demonstrate the benefits of our approach on simulated datasets with known ground truth and in outdoor urban environments.
机译:我们介绍了一种用于构建占用地图的新统计建模技术。映射问题通过分类任务解决,其中机器人的环境分为占用区域和自由空间区域。这是通过采用改进的高斯过程作为非参数贝叶斯学习技术来获得的,以利用现实环境固有地具有结构这一事实。这种结构引入了地图上各点之间的依存关系,而这在许多常见的映射技术(例如,占用网格)中都没有解决。我们的方法是一种“随时”算法,能够以任意分辨率生成大型环境的准确表示,以适合多种应用。它还提供了与被遮挡区域以及传感器光束之间的相关方差相关的推论,即使只有很少的观察结果也是如此。至关重要的是,该技术可以处理可能来自多个来源的嘈杂数据,并将其融合为机器人周围环境的鲁棒通用概率表示。我们在已知地面事实的模拟数据集上以及在室外城市环境中展示了我们的方法的好处。

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