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Improving Transparent Visualization of Large-Scale Laser-Scanned Point Clouds by Using Poisson Disk Sampling

机译:通过使用泊松磁盘采样提高大型激光扫描点云的透明可视化

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In recent years, due to the development of laser-measurement technology, 3D laser-scanned point clouds for cultural assets are often used as the recording format of digital archiving. The acquired point clouds are large-scale and precisely record complex 3D internal structures of the scanned objects. Visualization quality of such point clouds highly depends on density distributional uniformity, that is, the uniformity of the inter-point distances. The visualization quality can be improved by making point distances uniform. In addition, the visibility further improves by emphasizing edges. In this study, first the uniformity and flexible tuning of the point density based on Poisson disk sampling are examined. The resultant high-quality point clouds are then applied to transparent visualization. Moreover, edge emphasis visualization is realized by combining the principal component analysis calculating feature amount and Poisson disk sampling.
机译:近年来,由于激光测量技术的发展,用于文化财产的3D激光扫描点云通常被用作数字归档的记录格式。所采集的点云是大规模的,并且精确记录了扫描对象的复杂3D内部结构。这种点云的可视化质量高度依赖于密度分布均匀性,即点间距离的均匀性。通过使点距均匀,可以提高可视化质量。另外,通过强调边缘,可见性进一步提高。在这项研究中,首先研究基于泊松圆盘采样的点密度的均匀性和灵活调整。然后将生成的高质量点云应用于透明的可视化。此外,通过结合主成分分析计算特征量和泊松圆盘采样来实现边缘强调可视化。

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