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Relative Scale Estimation and 3D Registration of Multi-Modal Geometry Using Growing Least Squares

机译:使用最小二乘的多模几何的相对比例估计和3D配准

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摘要

The advent of low cost scanning devices and the improvement of multi-view stereo techniques have made the acquisition of 3D geometry ubiquitous. Data gathered from different devices, however, result in large variations in detail, scale, and coverage. Registration of such data is essential before visualizing, comparing and archiving them. However, state-of-the-art methods for geometry registration cannot be directly applied due to intrinsic differences between the models, e.g., sampling, scale, noise. In this paper we present a method for the automatic registration of multi-modal geometric data, i.e., acquired by devices with different properties (e.g., resolution, noise, data scaling). The method uses a descriptor based on Growing Least Squares, and is robust to noise, variation in sampling density, details, and enables scale-invariant matching. It allows not only the measurement of the similarity between the geometry surrounding two points, but also the estimation of their relative scale. As it is computed locally, it can be used to analyze large point clouds composed of millions of points. We implemented our approach in two registration procedures (assisted and automatic) and applied them successfully on a number of synthetic and real cases. We show that using our method, multi-modal models can be automatically registered, regardless of their differences in noise, detail, scale, and unknown relative coverage.
机译:低成本扫描设备的出现以及多视图立体技术的改进,使得3D几何图形的获取无处不在。但是,从不同设备收集的数据会导致详细信息,规模和覆盖范围的巨大差异。在可视化,比较和归档数据之前,必须注册此类数据。但是,由于模型之间的固有差异(例如,采样,比例,噪声),无法直接应用用于几何配准的最新方法。在本文中,我们提出了一种自动注册多模式几何数据的方法,即通过具有不同属性(例如分辨率,噪声,数据缩放)的设备获取的多模式几何数据。该方法使用基于最小二乘增长的描述符,并且对噪声,采样密度的变化,细节具有鲁棒性,并且能够实现尺度不变匹配。它不仅允许测量围绕两个点的几何形状之间的相似性,还可以估计它们的相对比例。由于它是本地计算的,因此可用于分析由数百万个点组成的大点云。我们在两种注册程序(辅助和自动)中实施了我们的方法,并成功地将其应用于许多综合案例和实际案例中。我们证明了使用我们的方法,无论其在噪声,细节,比例和未知相对覆盖率方面的差异如何,多模式模型都可以自动注册。

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