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Entropy Maximization of Occupancy Grid Map for Selecting Good Registration of SLAM Algorithms

机译:占用网格图的熵最大化,用于选择良好的SLAM算法注册

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This paper analyzes entropy of occupancy grid map (OGM) for evaluating registration performance of SLAM (simultaneous localization and mapping) algorithms. So far, there are a number of SLAM algorithms having been proposed, but we do not have general measure to evaluate the registration performance of point clouds obtained by LRF (laser range finder) for SLAM algorithms. This paper analyzes to show that good registration seems corresponding to large overlap of point clouds in OGM as well as large entropy, large uncertainty and low information of OGM. This analysis indicates a method of entropy maximization of OGM for selecting good registration of SLAM algorithms. By means of executing numerical experiments, we show the validity and the effectiveness of the entropy of OGM to evaluate the registration performance.
机译:本文分析了占用网格地图(OGM)的熵评估了SLAM的登记性能(同时定位和映射)算法。到目前为止,已经提出了许多SLAM算法,但我们没有一般措施来评估由LRF(激光测距仪)获得的LRF(激光测距仪)为SLAM算法获得的登记性能。本文分析显示,良好的注册似乎对应于OGM中的点云的大重叠以及大的熵,大的不确定性和OGM的低信息。该分析表明,用于选择良好的SLAM算法注册的OGM熵最大化的方法。通过执行数值实验,我们展示了OGM熵的有效性和有效性来评估注册性能。

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