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Structured Low-Rank Matrix Factorization for Point-Cloud Denoising

机译:用于点云降噪的结构化低秩矩阵分解

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In this work we address the problem of point-cloud denoising where we assume that a given point-cloud comprises (noisy) points that were sampled from an underlying surface that is to be denoised. We phrase the point-cloud denoising problem in terms of a dictionary learning framework. To this end, for a given point-cloud we (robustly) extract planar patches covering the entire point-cloud, where each patch contains a (noisy) description of the local structure of the underlying surface. Based on the general assumption that many of the local patches (in the noise-free point-cloud) contain redundant information (e.g. due to smoothness of the surface, or due to repetitive structures), we find a low-dimensional affine subspace that (approximately) explains the extracted (noisy) patches. Computationally, this is achieved by solving a structured low-rank matrix factorization problem, where we impose smoothness on the patch dictionary and sparsity on the coefficients. We experimentally demonstrate that our method outperforms existing denoising approaches in various noise scenarios.
机译:在这项工作中,我们解决了点云去噪的问题,其中我们假定给定的点云包含从要去噪的基础表面采样的(嘈杂)点。我们根据字典学习框架对点云去噪问题进行表述。为此,对于给定的点云,我们(稳健)提取覆盖整个点云的平面斑块,其中每个斑块都包含对底层表面局部结构的(嘈杂)描述。基于许多局部补丁(在无噪声的点云中)包含冗余信息的一般假设(例如,由于表面的平滑性或由于重复的结构),我们找到了一个低维仿射子空间,该子空间(大约)说明提取的(嘈杂的)补丁。在计算上,这是通过解决结构化的低秩矩阵分解问题而实现的,在该问题中,我们在补丁字典上施加了平滑度,在系数上施加了稀疏性。我们通过实验证明了我们的方法在各种噪声情况下均优于现有的去噪方法。

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