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Multiscale Symmetry Detection in Scalar Fields by Clustering Contours

机译:基于聚类轮廓的标量场多尺度对称检测

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The complexity in visualizing volumetric data often limits the scope of direct exploration of scalar fields. Isocontour extraction is a popular method for exploring scalar fields because of its simplicity in presenting features in the data. In this paper, we present a novel representation of contours with the aim of studying the similarity relationship between the contours. The representation maps contours to points in a high-dimensional transformation-invariant descriptor space. We leverage the power of this representation to design a clustering based algorithm for detecting symmetric regions in a scalar field. Symmetry detection is a challenging problem because it demands both segmentation of the data and identification of transformation invariant segments. While the former task can be addressed using topological analysis of scalar fields, the latter requires geometry based solutions. Our approach combines the two by utilizing the contour tree for segmenting the data and the descriptor space for determining transformation invariance. We discuss two applications, query driven exploration and asymmetry visualization, that demonstrate the effectiveness of the approach.
机译:可视化体积数据的复杂性通常会限制直接探索标量场的范围。等值线提取是一种用于探索标量场的流行方法,因为它在呈现数据特征方面非常简单。在本文中,我们提出了一种新颖的轮廓表示方法,旨在研究轮廓之间的相似关系。该表示将轮廓映射到高维变换不变描述符空间中的点。我们利用这种表示的能力来设计一种基于聚类的算法,用于检测标量场中的对称区域。对称性检测是一个具有挑战性的问题,因为它既需要对数据进行分段,又需要对变换不变段进行标识。虽然可以使用标量场的拓扑分析解决前一项任务,但后者需要基于几何的解决方案。我们的方法通过利用轮廓树分割数据和描述符空间来确定变换不变性,从而将两者结合起来。我们讨论了两种应用,即查询驱动的探索和不对称可视化,它们证明了该方法的有效性。

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