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引用次数: 19

摘要

提出了一种激光雷达移动地图数据的大规模条带平差方法,可获得高精度地图。它使用了几个概念来实现可伸缩性。首先,采用高效的基于图的预分割方法,直接对激光雷达扫描条带数据进行分割,而不是对点云进行分割。其次,从密集匹配中获得观测方程,该匹配是根据潜在映射的估计来表示的。由于这种公式,观测方程的数目不是二次的,而是扫描条数目的线性。第三,将所有观测方程和条件方程得到的动态贝叶斯网络划分为两个子网络。因此,所有位置和方向修正的估计矩阵在未知数数量上都是线性的,而不是二次的,并且可以使用交替最小二乘方法非常有效地求解。它展示了如何将这种方法映射到标准的键/值MapReduce实现,其中每个处理节点在小块数据上独立操作,从而导致本质上的线性可伸缩性。结果显示了一个由10亿个测量激光雷达点和27.8万个未知点组成的数据集,导致地图的精度达到几毫米。
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Scalable estimation of precision maps in a MapReduce framework
This paper presents a large-scale strip adjustment method for LiDAR mobile mapping data, yielding highly precise maps. It uses several concepts to achieve scalability. First, an efficient graph-based pre-segmentation is used, which directly operates on LiDAR scan strip data, rather than on point clouds. Second, observation equations are obtained from a dense matching, which is formulated in terms of an estimation of a latent map. As a result of this formulation, the number of observation equations is not quadratic, but rather linear in the number of scan strips. Third, the dynamic Bayes network, which results from all observation and condition equations, is partitioned into two sub-networks. Consequently, the estimation matrices for all position and orientation corrections are linear instead of quadratic in the number of unknowns and can be solved very efficiently using an alternating least squares approach. It is shown how this approach can be mapped to a standard key/value MapReduce implementation, where each of the processing nodes operates independently on small chunks of data, leading to essentially linear scalability. Results are demonstrated for a dataset of one billion measured LiDAR points and 278,000 unknowns, leading to maps with a precision of a few millimeters.
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