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A Bayesian Regression Approach to Terrain Mapping and an Application to Legged Robot Locomotion

机译:地形映射的贝叶斯回归方法及其在有腿机器人运动中的应用

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摘要

We deal with the problem of learning probabilistic models of terrain surfaces from sparse and noisy elevation measurements. The key idea is to formalize this as a regression problem and to derive a solution based on nonstationary Gaussian processes. We describe how to achieve a sparse approximation of the model, which makes the model applicablernto real-world data sets. The main benefits of our model are that (1) it does not require a discretization of space, (2) it also provides the uncertainty for its predictions, and (3) it adapts its covariance function to the observed data, allowing more accurate inference of terrain elevation at points that have not been observed directly. As a second contribution, we describe how a legged robot equipped with a laser range finder can utilize the developed terrain model to plan and execute a path over rough terrain. We show how a motion planner can use the learned terrain model to plan a path to a goal location, using a terrain-specific cost model to accept or reject candidate footholds. To the best of our knowledge, this was the first legged robotics system to autonomously sense, plan, and traverse a terrain surface of the given complexity.
机译:我们处理从稀疏和嘈杂的高程测量中学习地形表面概率模型的问题。关键思想是将其形式化为回归问题,并基于非平稳高斯过程得出解决方案。我们描述了如何实现模型的稀疏近似,这使模型适用于现实世界的数据集。我们模型的主要优点是(1)它不需要空间离散,(2)它也为其预测提供了不确定性,并且(3)它使协方差函数适应于观测到的数据,从而可以进行更准确的推断尚未直接观察到的点的地形标高的变化。作为第二个贡献,我们描述了装备有激光测距仪的有腿机器人如何利用开发的地形模型来计划和执行在崎rough地形上的路径。我们将展示运动计划者如何使用学习的地形模型来规划通往目标位置的路径,并使用特定于地形的成本模型来接受或拒绝候选立足点。据我们所知,这是第一个可自动感应,规划和遍历给定复杂性的地形表面的有腿机器人系统。

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  • 来源
    《Journal of Robotic Systems》 |2009年第10期|P.789-811|共23页
  • 作者单位

    Artificial Intelligence Lab Stanford University 353 Serra Mall Stanford, California 94305-9010;

    rnDepartment of Computer Science University of Freiburg Freiburg 79110, Germany;

    rnMassachusetts Institute of Technology, CSAIL Cambridge, Massachusetts 02139;

    rnDepartment of Knowledge Discovery Fraunhofer Institute IAIS Sankt Augustin 53756, Germany;

    rnMassachusetts Institute of Technology, CSAIL Cambridge, Massachusetts 02139;

    rnDepartment of Computer Science University of Freiburg Freiburg 79110, Germany;

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