Towards real-time segmentation of 3D point cloud data into local planar regions

Aparna Tatavarti, J. Papadakis, A. Willis
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引用次数: 9

Abstract

This article describes an algorithm for efficient segmentation of point cloud data into local planar surface regions. This is a problem of generic interest to researchers in the computer graphics, computer vision, artificial intelligence and robotics community where it plays an important role in applications such as object recognition, mapping, navigation and conversion from point clouds representations to 3D surface models. Prior work on the subject is either computationally burdensome, precluding real time applications such as robotic navigation and mapping, prone to error for noisy measurements commonly found at long range or requires availability of coregistered color imagery. The approach we describe consists of 3 steps: (1) detect a set of candidate planar surfaces, (2) cluster the planar surfaces merging redundant plane models, and (3) segment the point clouds by imposing a Markov Random Field (MRF) on the data and planar models and computing the Maximum A-Posteriori (MAP) of the segmentation labels using Bayesian Belief Propagation (BBP). In contrast to prior work which relies on color information for geometric segmentation, our implementation performs detection, clustering and estimation using only geometric data. Novelty is found in the fast clustering technique and new MRF clique potentials that are heretofore unexplored in the literature. The clustering procedure removes redundant detections of planes in the scene prior to segmentation using BBP optimization of the MRF to improve performance. The MRF clique potentials dynamically change to encourage distinct labels across depth discontinuities. These modifications provide improved segmentations for geometry-only depth images while simultaneously controlling the computational cost. Algorithm parameters are tunable to enable researchers to strike a compromise between segmentation detail and computational performance. Experimental results apply the algorithm to depth images from the NYU depth dataset which indicate that the algorithm can accurately extract large planar surfaces from depth sensor data.
三维点云数据实时分割成局部平面区域
本文描述了一种将点云数据高效分割为平面局部区域的算法。这是计算机图形学、计算机视觉、人工智能和机器人社区研究人员普遍感兴趣的问题,它在物体识别、映射、导航和从点云表示到3D表面模型的转换等应用中起着重要作用。在此之前的工作要么是计算上的负担,排除了实时应用,如机器人导航和测绘,容易出现误差的噪声测量通常发现在远距离或需要可用的共配彩色图像。我们描述的方法包括3个步骤:(1)检测一组候选平面,(2)合并冗余平面模型对平面进行聚类,(3)通过对数据和平面模型施加马尔可夫随机场(MRF)并使用贝叶斯信念传播(BBP)计算分割标签的最大a -后验(MAP)来分割点云。与先前依赖颜色信息进行几何分割的工作相反,我们的实现仅使用几何数据进行检测,聚类和估计。在快速聚类技术和新的MRF团电位中发现了新奇之处,这是迄今为止文献中未探索的。聚类过程在分割前使用MRF的BBP优化去除场景中平面的冗余检测以提高性能。磁流变场团势动态变化,以鼓励不同的标签跨越深度不连续。这些改进为仅几何深度图像提供了更好的分割,同时控制了计算成本。算法参数是可调的,使研究人员能够在分割细节和计算性能之间达成妥协。将该算法应用于纽约大学深度数据集的深度图像,实验结果表明,该算法可以准确地从深度传感器数据中提取大型平面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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