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首页> 外文期刊>Computer vision and image understanding >Surface reconstruction from unorganized points with l_0 gradient minimization
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Surface reconstruction from unorganized points with l_0 gradient minimization

机译:使用l_0梯度最小化从无组织点进行表面重建

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摘要

To reconstruct surface from unorganized points in three-dimensional Euclidean space, we propose a novel efficient and fast method by usingl0gradient minimization, which can directly measure the sparsity of a solution and produce sharper surfaces. Therefore, the proposed method is particularly effective for sharpening major edges and removing noise. Unlike the Poisson surface reconstruction approach and its extensions, our method does not depend on the accurate directions of normal vectors of the unorganized points. The resulting algorithm is developed using a half-quadratic splitting method and is based on decoupled iterations that are alternating over a smoothing step realized by a Poisson approach and an edge-preserving step through an optimization formulation. This iterative algorithm is easy to implement. Various tests are presented to demonstrate that our method is robust to point noise, normal noise and data holes, and thus produces good surface reconstruction results.
机译:为了从三维欧几里得空间中的无组织点重建曲面,我们提出了一种新的高效且快速的方法,即使用梯度最小化,可以直接测量溶液的稀疏度并生成更锐利的曲面。因此,所提出的方法对于锐化主要边缘和去除噪声特别有效。与泊松曲面重构方法及其扩展方法不同,我们的方法不依赖于无组织点的法向矢量的准确方向。生成的算法是使用半二次分裂方法开发的,并且基于解耦迭代,这些迭代在通过泊松方法实现的平滑步骤和通过优化公式实现的边保留步骤之间交替进行。该迭代算法易于实现。进行了各种测试,以证明我们的方法对点噪声,法向噪声和数据孔具有鲁棒性,因此可以产生良好的表面重建结果。

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