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Graph Cut Based Mesh Segmentation Using Feature Points and Geodesic Distance

机译:使用特征点和测地距离的基于图割的网格分割

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Both prominent feature points and geodesic distance are key factors for mesh segmentation. With these two factors, this paper proposes a graph cut based mesh segmentation method. The mesh is first preprocessed by Laplacian smoothing. According to the Gaussian curvature, candidate feature points are then selected by a predefined threshold. With DBSCAN (Density-Based Spatial Clustering of Application with Noise), the selected candidate points are separated into some clusters, and the points with the maximum curvature in every cluster are regarded as the final feature points. We label these feature points, and regard the faces in the mesh as nodes for graph cut. Our energy function is constructed by utilizing the ratio between the geodesic distance and the Euclidean distance of vertex pairs of the mesh. The final segmentation result is obtained by minimizing the energy function using graph cut. The proposed algorithm is pose-invariant and can robustly segment the mesh into different parts in line with the selected feature points.
机译:突出的特征点和测地距都是网状分割的关键因素。通过这两个因素,本文提出了一种基于曲线图的网格分割方法。网格首先通过拉普拉斯平滑预处理。根据高斯曲率,然后通过预定义的阈值选择候选特征点。利用DBSCAN(基于密度的应用程序的空间聚类),所选择的候选点被分成一些集群,并且每个集群中的最大曲率的点被视为最终特征点。我们标记这些功能点,并将网格中的面为曲线图削减。我们的能量函数是通过利用网格的顶点对的欧几里德距离之间的比率构造的。最终的分割结果是通过使用图形切割最小化能量函数来获得的。所提出的算法是姿势不变的,可以稳健地将网格逐行与所选特征点的不同部分。

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