基于摄影测量的三维重建软件实验验证

Razeen Hussain, Marianna Pizzo, Giorgio Ballestin, Manuela Chessa, F. Solari
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引用次数: 1

摘要

三维重建是几个领域感兴趣的。然而,获得3D模型通常是一项耗时的任务,涉及使用CAD软件手动测量和复制对象,这并不总是可行的(例如有机形状)。快速获得物体尺寸精确的3D模型的必要性导致了几种重建技术的发展,要么基于视觉(与摄影测量),使用激光扫描仪,或两者的结合。本研究的贡献在于分析了目前可用的3D重建框架的性能,目的是为可能不熟悉3D重建技术的新手用户提供指导。我们在一个表示各种形状和大小的对象的合成数据集上评估各种软件包。为了进行比较,我们考虑了各种指标,如重建云点和网格的平均误差和重建时间。结果表明,Colmap的重建效果最好。
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Experimental Validation of Photogrammetry based 3D Reconstruction Software
3D reconstruction is of interest to several fields. However, obtaining the 3D model is usually a time-consuming task that involves manual measurements and reproduction of the object using CAD software, which is not always feasible (e.g. for organic shapes). The necessity of quickly obtaining a dimensionally accurate 3D model of an object has led to the development of several reconstruction techniques, either vision based (with photogrammetry), using laser scanners, or a combination of the two. The contribution of this study is in the analysis of the performances of currently available 3D reconstruction frameworks with the aim of providing a guideline to novice users who may be unfamiliar with 3D reconstruction technologies. We evaluate various software packages on a synthetic dataset representing objects of various shapes and sizes. For comparison, we consider various metrics such as mean errors in the reconstructed cloud point and meshes and reconstruction time. Our results indicate that Colmap produces the best reconstruction.
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