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Robust Feature-Preserving Mesh Denoising Based on Consistent Subneighborhoods

机译:基于一致邻域的鲁棒特征保持网格去噪

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In this paper, we introduce a feature-preserving denoising algorithm. It is built on the premise that the underlying surface of a noisy mesh is piecewise smooth, and a sharp feature lies on the intersection of multiple smooth surface regions. A vertex close to a sharp feature is likely to have a neighborhood that includes distinct smooth segments. By defining the consistent subneighborhood as the segment whose geometry and normal orientation most consistent with those of the vertex, we can completely remove the influence from neighbors lying on other segments during denoising. Our method identifies piecewise smooth subneighborhoods using a robust density-based clustering algorithm based on shared nearest neighbors. In our method, we obtain an initial estimate of vertex normals and curvature tensors by robustly fitting a local quadric model. An anisotropic filter based on optimal estimation theory is further applied to smooth the normal field and the curvature tensor field. This is followed by second-order bilateral filtering, which better preserves curvature details and alleviates volume shrinkage during denoising. The support of these filters is defined by the consistent subneighborhood of a vertex. We have applied this algorithm to both generic and CAD models, and sharp features, such as edges and corners, are very well preserved.
机译:在本文中,我们介绍了一种保留特征的去噪算法。它的前提是,嘈杂的网格的基础表面是分段光滑的,并且在多个光滑表面区域的交点上具有鲜明的特征。接近尖锐特征的顶点可能具有包含不同平滑段的邻域。通过将一致的子区域定义为几何和法线方向与顶点最一致的线段,可以在去噪过程中完全消除来自其他线段上的邻居的影响。我们的方法使用基于共享最近邻的鲁棒基于密度的聚类算法,识别分段平滑子邻域。在我们的方法中,我们通过稳健地拟合局部二次模型来获得顶点法线和曲率张量的初始估计。进一步应用基于最优估计理论的各向异性滤波器来平滑法向场和曲率张量场。其次是二阶双边滤波,可以更好地保留曲率细节并减轻去噪期间的体积收缩。这些过滤器的支持由顶点的一致子邻域定义。我们将此算法应用于通用模型和CAD模型,并且很好地保留了诸如边缘和拐角之类的鲜明特征。

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