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Robust normal estimation in unstructured 3D point clouds by selective normal space exploration

机译:通过选择性法向空间探索在非结构化3D点云中进行稳健的法向估计

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摘要

We present a fast and practical approach for estimating robust normal vectors in unorganized point clouds. Our proposed technique is robust to noise and outliers and can preserve sharp features in the input model while being significantly faster than the current state-of-the-art alternatives. The key idea to this is a novel strategy for the exploration of the normal space: First, an initial candidate normal vector, optimal under a robust least median norm, is selected from a discrete subregion of this space, chosen conservatively to include the correct normal; then, the final robust normal is computed, using a simple, robust procedure that iteratively refines the candidate normal initially selected. This strategy allows us to reduce the computation time significantly with respect to other methods based on sampling consensus and yet produces very reliable normals even in the presence of noise and outliers as well as along sharp features. The validity of our approach is confirmed by an extensive testing on both synthetic and real-world data and by a comparison against the most relevant state-of-the-art approaches.
机译:我们提出了一种快速实用的方法来估计无组织点云中的鲁棒法向向量。我们提出的技术对噪声和离群值具有鲁棒性,并且可以在输入模型中保留清晰的特征,同时比当前的最新技术要快得多。这样做的关键思想是探索法线空间的新策略:首先,从该空间的离散子区域中选择一个在稳健的最小中位范数下最优的初始候选法线向量,保守地选择它以包含正确的法线;然后,使用简单的,鲁棒的过程来迭代地细化最初选择的候选法线,从而计算出最终的鲁棒法线。与其他基于采样共识的方法相比,这种策略使我们可以大大减少计算时间,并且即使在存在噪声和异常值以及沿尖锐特征的情况下,也可以生成非常可靠的法线。我们的方法的有效性通过对合成数据和实际数据的广泛测试以及与最相关的最新方法的比较得到证实。

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