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Locally-adaptive slip prediction for planetary rovers using Gaussian processes

机译:使用高斯过程的行星漫游器局部自适应滑移预测

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This paper presents a method for predicting slip using Gaussian process regression. Slip models are learned for visually classified terrain types as a function of terrain geometry. Spatial correlations between terrain properties are leveraged for on-line slip model adaptation. Results show that regression-based modeling using in-situ rover data outperforms the state-of-practice, terrestrially-calibrated slip curves in both mean prediction and uncertainty bounds. Local adaptation improves slip prediction results, particularly in high-slip sand areas that pose the greatest threat to rovers. Slip estimates made using a visual classifier to identify terrain type are compared to estimates using on-line model selection with only proprioceptive slip measurements as inputs. The proprioceptive results nearly match the visual results, showing that this approach could work even when a visual classifier is not available.
机译:本文提出了一种使用高斯过程回归预测滑移的方法。学习滑移模型,以根据地形几何形状对外观类型进行视觉分类。可以利用地形属性之间的空间相关性来进行在线滑模模型调整。结果表明,在均值预测和不确定性范围内,使用原地流动站数据进行的基于回归的建模均优于实践中的地面校准滑移曲线。局部适应可以改善滑坡预测结果,特别是在对滑行者构成最大威胁的高滑砂地区。使用视觉分类器识别地形类型的滑差估算值与仅使用本体感受滑差测量值作为输入的在线模型选择估算值进行了比较。本体感受结果几乎与视觉结果相符,表明即使没有视觉分类器,该方法也可以使用。

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