首页> 外文会议>International symposium on experimental robotics;ISER'11; 20080713-16;20080713-16; Athens(GR);Athens(GR) >Comparison of Boosting Based Terrain Classification Using Proprioceptive and Exteroceptive Data
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Comparison of Boosting Based Terrain Classification Using Proprioceptive and Exteroceptive Data

机译:使用本体感受和本体感受数据对基于Boosting的地形分类进行比较

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摘要

The terrain classification is a very important subject to the all-terrain robotics community. The knowledge of the type of terrain allows a rover to deal with its environment more efficiently. The work presented in this paper shows that it is possible to differentiate terrains based on their aspects, using exteroceptive sensors, as well as based on their influence on the rover's behavior, using proprioceptive sensors. Using a boosting method (AdaBoost), these two sets of classifiers are trained and applied independently. The resulting dual algorithm identifies offline the nature of the terrain on which the vehicle is virtually driving and classifies it according to categories previously labeled, such as sand or grass. Due to the good results obtained for the classification based solely on each type of sensor, this paper concludes that the correlation between data from proprioceptive and exteroceptive sensors could be used for further applications. This paper is a summarized version of the one presented at the ISER conference.
机译:地形分类是全地形机器人界非常重要的主题。对地形类型的了解使流动站能够更有效地应对其环境。本文介绍的工作表明,可以使用感受性传感器根据地形的不同来区分地形,也可以使用感受性传感器来根据地形对流动站行为的影响来区分地形。使用增强方法(AdaBoost),这两套分类器被独立训练和应用。最终的双重算法可离线识别车辆实际行驶的地形的性质,并根据先前标记的类别(例如沙子或草丛)对其进行分类。由于仅基于每种类型的传感器进行分类所获得的良好结果,本文得出的结论是,本体感受性和躯体感受性传感器的数据之间的相关性可用于进一步的应用。本文是在ISER会议上提出的摘要。

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