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首页> 外文期刊>Journal of robotic systems >Adaptive Rover Behavior Based on Online Empirical Evaluation: Rover-Terrain Interaction and Near-to-Far Learning
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Adaptive Rover Behavior Based on Online Empirical Evaluation: Rover-Terrain Interaction and Near-to-Far Learning

机译:基于在线经验评估的自适应漫游者行为:漫游者与人的互动和近距离学习

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摘要

Owing to the fundamental nature of all-terrain exploration, autonomous rovers are confronted with unknown environments. This is especially apparent regarding soil interactions, as the nature of the soil is typically unknown. This work aims at establishing a framework from which the rover can learn from its interaction with the terrains encountered and shows the importance of such a method. We introduce a set of rover-terrain interaction (RTI) and remote data metrics that are expressed in different subspaces. In practice, the information characterizing the terrains, obtained from remote sensors (e.g., a camera) and local sensors (e.g., an inertial measurement unit) is used to characterize the respective remote data and RTI model. In each subspace, which can be described as a feature space encompassing either a remote data measurement or an RTI, similar features are grouped to form classes, and the probability distribution function over the features is learned for each one of those classes. Subsequently, data acquired on the same terrain are used to associate the corresponding models in each subspace and to build an inference model. Based on the remote sensor data measured, the RTI model is predicted using the inference model. This process corresponds to a near-to-far approach and provides the most probable RTI metrics of the terrain lying ahead of the rover. The predicted RTI metrics are then used to plan an optimal path with respect to the RTI model and therefore influence the rover trajectory. The CRAB rover is used in this work for the implementation and testing of the approach, which we call rover-terrain interactions learned from experiments (RTILE). This article presents RTILE, describes its implementation, and concludes with results from field tests that validate the approach.
机译:由于全地形勘探的基本性质,自主漫游车面临着未知的环境。就土壤相互作用而言,这一点尤其明显,因为土壤的性质通常是未知的。这项工作旨在建立一个框架,通过该框架,流动站可以从其与遇到的地形的交互中学习,并显示出这种方法的重要性。我们介绍了一组在不同子空间中表示的漫游者地形交互(RTI)和远程数据指标。实际上,从远程传感器(例如,照相机)和本地传感器(例如,惯性测量单元)获得的表征地形的信息用于表征各个远程数据和RTI模型。在可以描述为包含远程数据测量或RTI的特征空间的每个子空间中,将相似的特征分组以形成类别,并为这些类别中的每一个学习特征上的概率分布函数。随后,在相同地形上获取的数据将用于关联每个子空间中的相应模型并构建推理模型。基于测得的远程传感器数据,使用推理模型预测RTI模型。该过程对应于近距离方法,并提供了流动站前方地形的最可能的RTI度量。然后,将预测的RTI度量用于相对于RTI模型规划最佳路径,从而影响流动站的轨迹。在这项工作中,CRAB流动站用于该方法的实施和测试,我们称之为从实验中学到的流动站与地形的交互作用(RTILE)。本文介绍了RTILE,描述了其实现,并以验证该方法的现场测试结果作了总结。

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  • 来源
    《Journal of robotic systems》 |2010年第2期|158-180|共23页
  • 作者单位

    Autonomous Systems Laboratory, Swiss Federal Institute of Technology Zuerich (ETHZ), 8092 Zuerich, Switzerland;

    Autonomous Systems Laboratory, Swiss Federal Institute of Technology Zuerich (ETHZ), 8092 Zuerich, Switzerland;

    Autonomous Systems Laboratory, Swiss Federal Institute of Technology Zuerich (ETHZ), 8092 Zuerich, Switzerland;

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