Scale-Invariant Fast Functional Registration

Muchen Sun, Allison Pinosky, Ian Abraham, T. Murphey
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Abstract

Functional registration algorithms represent point clouds as functions (e.g. spacial occupancy field) avoiding unreliable correspondence estimation in conventional least-squares registration algorithms. However, existing functional registration algorithms are computationally expensive. Furthermore, the capability of registration with unknown scale is necessary in tasks such as CAD model-based object localization, yet no such support exists in functional registration. In this work, we propose a scale-invariant, linear time complexity functional registration algorithm. We achieve linear time complexity through an efficient approximation of L2-distance between functions using orthonormal basis functions. The use of orthonormal basis functions leads to a formulation that is compatible with least-squares registration. Benefited from the least-square formulation, we use the theory of translation-rotation-invariant measurement to decouple scale estimation and therefore achieve scale-invariant registration. We evaluate the proposed algorithm, named FLS (functional least-squares), on standard 3D registration benchmarks, showing FLS is an order of magnitude faster than state-of-the-art functional registration algorithm without compromising accuracy and robustness. FLS also outperforms state-of-the-art correspondence-based least-squares registration algorithm on accuracy and robustness, with known and unknown scale. Finally, we demonstrate applying FLS to register point clouds with varying densities and partial overlaps, point clouds from different objects within the same category, and point clouds from real world objects with noisy RGB-D measurements.
尺度不变快速函数注册
功能配准算法将点云表示为函数(如空间占用场),避免了传统最小二乘配准算法中不可靠的对应估计。然而,现有的函数配准算法在计算上是昂贵的。此外,在基于CAD模型的物体定位等任务中,未知尺度的配准能力是必要的,但在功能配准中却没有这样的支持。在这项工作中,我们提出了一种尺度不变的线性时间复杂度函数配准算法。我们通过使用标准正交基函数有效地逼近l2 -函数之间的距离来实现线性时间复杂度。使用标准正交基函数可以得到与最小二乘配准相容的公式。利用最小二乘公式,我们利用平移-旋转-不变测量理论来解耦尺度估计,从而实现尺度不变配准。我们在标准3D配准基准上评估了FLS(函数最小二乘)算法,表明FLS比最先进的函数配准算法快一个数量级,而不会影响准确性和鲁棒性。在已知和未知尺度下,FLS在精度和鲁棒性方面也优于最先进的基于对应的最小二乘配准算法。最后,我们演示了将FLS应用于配准不同密度和部分重叠的点云、同一类别内不同物体的点云以及具有噪声RGB-D测量值的现实世界物体的点云。
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