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Gaussian Process Modeling of Large-Scale Terrain

机译:大规模地形的高斯过程建模

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摘要

Building a model of large-scale terrain that can adequately handle uncertainty and incompleteness in a statistically sound way is a challenging problem. This work proposes the use of Gaussian processes as models of large-scale terrain. The proposed model naturally provides a multiresolution representation of space, incorporates and handles uncertainties aptly, and copes with incompleteness of sensory information. Gaussian process regression techniques are applied to estimate and interpolate (to fill gaps in occluded areas) elevation information across the field. The estimates obtained are the best linear unbiased estimates for the data under consideration. A single nonstationary (neural network) Gaussian process is shown to be powerful enough to model large and complex terrain, effectively handling issues relating to discontinuous data. A local approximation method based on a "moving window" methodology and implemented using k-dimensional (KD)-trees is also proposed. This enables the approach to handle extremely large data sets, thereby completely addressing its scalability issues. Experiments are performed on large-scale data sets taken from real mining applications. These data sets include sparse mine planning data, which are representative of a global positioning system-based survey, as well as dense laser scanner data taken at different mine sites. Further, extensive statistical performance evaluation and benchmarking of the technique has been performed through cross-validation experiments. They conclude that for dense and/or flat data, the proposed approach will perform very competitively with grid-based approaches using standard interpolation techniques and triangulated irregular networks using triangle-based interpolation techniques; for sparse and/or complex data, however, it would significantly Outperform them.
机译:建立能够以统计上合理的方式充分处理不确定性和不完整性的大规模地形模型是一个具有挑战性的问题。这项工作建议使用高斯过程作为大规模地形的模型。所提出的模型自然可以提供空间的多分辨率表示,可以适当地合并和处理不确定性,并可以应付感官信息的不完整。高斯过程回归技术用于估计和插值(以填补被遮挡区域的空白)整个场的高程信息。获得的估计是所考虑数据的最佳线性无偏估计。单个非平稳(神经网络)高斯过程显示出足够强大的功能,可以对大型复杂地形进行建模,从而有效处理与不连续数据有关的问题。还提出了一种基于“移动窗口”方法并使用k维(KD)树实现的局部逼近方法。这使该方法能够处理非常大的数据集,从而完全解决其可伸缩性问题。实验是对来自实际采矿应用程序的大规模数据集进行的。这些数据集包括稀疏的矿山规划数据,这些数据代表了基于全球定位系统的勘测,以及在不同矿山现场采集的密集激光扫描仪数据。此外,已经通过交叉验证实验对技术进行了广泛的统计性能评估和基准测试。他们得出结论,对于密集和/或平坦的数据,所提出的方法将与使用标准插值技术的基于网格的方法和使用基于三角形的插值技术的不规则三角网相竞争。但是,对于稀疏和/或复杂的数据,它将明显胜过它们。

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  • 来源
    《Journal of Robotic Systems》 |2009年第10期|P.812-840|共29页
  • 作者单位

    Australian Centre for Field Robotics University of Sydney Sydney, New South Wales 2006 Australia;

    rnAustralian Centre for Field Robotics University of Sydney Sydney, New South Wales 2006 Australia;

    rnAustralian Centre for Field Robotics University of Sydney Sydney, New South Wales 2006 Australia;

    rnAustralian Centre for Field Robotics University of Sydney Sydney, New South Wales 2006 Australia;

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