3D peak based long range rover localization

Li Wei, Sukhan Lee
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引用次数: 4

Abstract

The dead-reckoning techniques such as visual and wheel odometry for Rover localization is proved to be effective on short to medium-range traverses. However the accumulated error would lead to a degraded performance in a long range travel. In this paper, a global localization algorithm is proposed to deal with the long-range rover localization in lunar/planetary environment. This algorithm is designed to localize a rover by matching 3D peak features extracted from rover imagery with their correspondences extracted from simulated imagery based on digital elevation map. We present a method to represent peak's 3D shape by a multivariate distribution, and match it with other peaks using hotelling's t-square test. After matching, Bayesian network is applied to estimate the position of the rover using matched corresponding peaks. Devon island dataset is used for testing and evaluating the proposed method, as well as comparing it with VIPER. Test results show that proposed method provides an accurate localization in an absolute frame of reference, and achieves a better result than VIPER system.
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基于3D峰值的远程漫游车定位
航迹推算技术,如视觉和车轮里程计定位火星车被证明是有效的中短程穿越。然而,在长距离飞行中,累积误差会导致性能下降。针对月球车在月/行星环境下的远程定位问题,提出了一种全局定位算法。该算法基于数字高程图,将从漫游者图像中提取的三维峰值特征与模拟图像中提取的对应特征进行匹配,实现漫游者的局部定位。我们提出了一种用多元分布来表示峰的三维形状的方法,并使用霍特林的t方检验将其与其他峰进行匹配。匹配后,应用贝叶斯网络利用匹配的对应峰估计漫游车的位置。德文岛数据集用于测试和评估所提出的方法,并与VIPER进行比较。实验结果表明,该方法在绝对参照系下实现了精确定位,取得了比VIPER系统更好的定位效果。
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