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首页> 外文期刊>ACM Transactions on Graphics >Edge-Aware Point Set Resampling
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Edge-Aware Point Set Resampling

机译:边缘感知点集重采样

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摘要

Points acquired by laser scanners are not intrinsically equipped with normals, which are essential to surface reconstruction and point set rendering using surfels. Normal estimation is notoriously sensitive to noise. Near sharp features, the computation of noise-free normals becomes even more challenging due to the inherent undersampling problem at edge singularities. As a result, common edge-aware consolidation techniques such as bilateral smoothing may still produce erroneous normals near the edges.We propose a resampling approach to process a noisy and possibly outlier-ridden point set in an edge-aware manner. Our key idea is to first resample away from the edges so that reliable normals can be computed at the samples, and then based on reliable data, we progressively resample the point set while approaching the edge singularities. We demonstrate that our Edge-Aware Resampling (EAR) algorithm is capable of producing consolidated point sets with noise-free normals and clean preservation of sharp features. We also show that EAR leads to improved performance of edge-aware reconstruction methods and point set rendering techniques.
机译:激光扫描仪获取的点本质上并没有配备法线,这对于使用曲面进行曲面重建和点集渲染至关重要。正常的估计对噪声非常敏感。由于边缘奇点处固有的欠采样问题,接近尖锐的特征时,无噪声法线的计算变得更具挑战性。因此,常见的边缘感知合并技术(如双边平滑)可能仍会在边缘附近生成错误的法线。我们提出了一种重采样方法,以边缘感知的方式处理嘈杂且可能离群的点集。我们的关键思想是首先从边缘重新采样,以便可以在采样处计算出可靠的法线,然后基于可靠的数据,在接近边缘奇异点的同时逐步对点集进行重新采样。我们证明了我们的边缘感知重采样(EAR)算法能够生成具有无噪声法线和清晰保留清晰特征的合并点集。我们还表明,EAR可以提高边缘感知重构方法和点集渲染技术的性能。

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