神经辐射场(nerfs)与地面激光扫描(tls)几何精度分析

I. Petrovska, M. Jäger, D. Haitz, B. Jutzi
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引用次数: 0

摘要

摘要神经辐射场(nerf)使用一组相机姿势和相关图像,通过给定空间位置的位置相关密度和亮度来表示场景。通过光线跟踪和沿着光线的密度和颜色采样3D点来生成点云的几何表示。在这篇论文中,我们利用结构光成像(SLI)网格形式的地面真实数据,评估了nerf在三维度量空间中对地面激光扫描(TLS)的物体重建,并研究了密度对重建精度的影响。我们将精度评估从2D扩展到3D空间,并通过使用36MP分辨率的相机图像对nerf进行高分辨率调查,并将超过2000万个点的点云与0.1mm的地面真值网格进行比较。TLS的几何精度结果最高,标准差为1.68mm,而NeRFδt=300与地面真实值相差18.61mm。所有NeRF重建都包含物体内部的3D点,这些点与地面真实值的位移最高,因此对精度结果的贡献最大。由于完整性的提高,随着密度阈值的增加,nerf的精度也会提高,因为除了噪声和离群值之外,物体点也会被去除。
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GEOMETRIC ACCURACY ANALYSIS BETWEEN NEURAL RADIANCE FIELDS (NERFS) AND TERRESTRIAL LASER SCANNING (TLS)
Abstract. Neural Radiance Fields (NeRFs) use a set of camera poses with associated images to represent a scene through a position-dependent density and radiance at given spatial location. Generating a geometric representation in form of a point cloud is gained by ray tracing and sampling 3D points with density and color along the rays. In this contribution we evaluate object reconstruction by NeRFs in 3D metric space against Terrestrial Laser Scanning (TLS) using ground truth data in form of a Structured Light Imaging (SLI) mesh and investigate the influence of the density to the reconstruction’s accuracy. We extend the accuracy assessment from 2D to 3D space and perform high resolution investigations on NeRFs by using camera images with 36MP resolution as well as comparison among point clouds of more than 20 million points against a 0.1mm ground truth mesh. TLS achieves the highest geometric accuracy results with a standard deviation of 1.68mm, while NeRFδt=300 diverges 18.61mm from the ground truth. All NeRF reconstructions contain 3D points inside the object which have the highest displacements from the ground truth, thus contribute the most to the accuracy results. NeRFs accuracy improves with increasing the density threshold as a consequence of completeness, since beside noise and outliers the object points are also being removed.
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CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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