Fully Automatic Registration of 3D Point Clouds

A. Makadia, Alexander Patterson, Kostas Daniilidis
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引用次数: 352

Abstract

We propose a novel technique for the registration of 3D point clouds which makes very few assumptions: we avoid any manual rough alignment or the use of landmarks, displacement can be arbitrarily large, and the two point sets can have very little overlap. Crude alignment is achieved by estimation of the 3D-rotation from two Extended Gaussian Images even when the data sets inducing them have partial overlap. The technique is based on the correlation of the two EGIs in the Fourier domain and makes use of the spherical and rotational harmonic transforms. For pairs with low overlap which fail a critical verification step, the rotational alignment can be obtained by the alignment of constellation images generated from the EGIs. Rotationally aligned sets are matched by correlation using the Fourier transform of volumetric functions. A fine alignment is acquired in the final step by running Iterative Closest Points with just few iterations.
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全自动注册3D点云
我们提出了一种新的3D点云配准技术,它只做了很少的假设:我们避免了任何人工粗糙对准或使用地标,位移可以任意大,两个点集可以有很少的重叠。粗糙对齐是通过估计两个扩展高斯图像的三维旋转来实现的,即使诱导它们的数据集有部分重叠。该技术是基于两个egi在傅里叶域中的相关性,并利用球面和旋转谐波变换。对于没有通过关键验证步骤的低重叠对,可以通过对EGIs生成的星座图像进行对齐来获得旋转对准。旋转对齐的集合通过使用体积函数的傅里叶变换进行相关匹配。在最后一步中,通过运行迭代最近点(Iterative nearest Points)来获得精确的对齐。
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