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Entropy-Based Registration of Point Clouds Using Terrestrial Laser Scanning and Smartphone GPS

机译:使用地面激光扫描和智能手机GPS的基于熵的点云配准

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Automatic registration of terrestrial laser scanning point clouds is a crucial but unresolved topic that is of great interest in many domains. This study combines terrestrial laser scanner with a smartphone for the coarse registration of leveled point clouds with small roll and pitch angles and height differences, which is a novel sensor combination mode for terrestrial laser scanning. The approximate distance between two neighboring scan positions is firstly calculated with smartphone GPS coordinates. Then, 2D distribution entropy is used to measure the distribution coherence between the two scans and search for the optimal initial transformation parameters. To this end, we propose a method called Iterative Minimum Entropy (IME) to correct initial transformation parameters based on two criteria: the difference between the average and minimum entropy and the deviation from the minimum entropy to the expected entropy. Finally, the presented method is evaluated using two data sets that contain tens of millions of points from panoramic and non-panoramic, vegetation-dominated and building-dominated cases and can achieve high accuracy and efficiency.
机译:地面激光扫描点云的自动配准是至关重要的但尚未解决的主题,在许多领域中都引起了极大的兴趣。这项研究将地面激光扫描仪与智能手机结合使用,可以对水平点云进行粗略配准,并具有较小的侧倾角和俯仰角以及高度差,这是一种用于地面激光扫描的新型传感器组合模式。首先使用智能手机GPS坐标计算两个相邻扫描位置之间的近似距离。然后,使用2D分布熵来测量两次扫描之间的分布相干性,并搜索最佳的初始转换参数。为此,我们提出了一种称为迭代最小熵(IME)的方法,该方法基于两个标准来校正初始转换参数:平均和最小熵之间的差以及从最小熵到期望熵的偏差。最后,使用两个数据集对提出的方法进行评估,该两个数据集包含来自全景和非全景,植被为主和建筑物为主的案例的数千万个点,并且可以实现高精度和高效率。

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