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Spectral Sequencing Based on Graph Distance

机译:基于图距离的光谱排序

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The construction of linear mesh layouts has found various applications, such as implicit mesh filtering and mesh streaming, where a variety of layout quality criteria, e.g., span and width, can be considered. While spectral sequencing, derived from the Fiedler vector, is one of the best-known heuristics for minimizing width, it does not perform as well as the Cuthill-Mckee (CM) scheme in terms of span. In this paper, we treat optimal mesh layout generation as a problem of preserving graph distances and propose to use the sub dominant eigenvector of a kernel (affinity) matrix for sequencing. Despite the non-sparsity of the affinity operators we use, the layouts can be computed efficiently for large meshes through subsampling and eigenvector extrapolation. Our experiments show that the new sequences obtained outperform those derived from the Fiedler vector, in terms of spans, and those obtained from CM, in terms of widths and other important quality criteria. Therefore, in applications where several such quality criteria can influence algorithm performance simultaneously, e.g., mesh streaming and implicit mesh filtering, the new mesh layouts could potentially provide a better trade-off.
机译:线性网格布局的构造已经发现了各种应用,例如隐式网格过滤和网格流,其中可以考虑各种布局质量标准,例如跨度和宽度。虽然从Fiedler向量派生的频谱排序是使宽度最小化的最著名启发式方法之一,但在跨度方面却不如Cuthill-Mckee(CM)方案。在本文中,我们将最佳网格布局生成问题视为保留图距的问题,并建议使用核(亲和力)矩阵的次优势特征向量进行排序。尽管我们使用了亲和算子的稀疏性,但可以通过子采样和特征向量外推有效地计算大型网格的布局。我们的实验表明,在跨度方面,获得的新序列优于从Fiedler矢量获得的序列,而在宽度和其他重要质量标准方面,则优于从CM获得的序列。因此,在几个这样的质量标准可以同时影响算法性能的应用中,例如网格流传输和隐式网格过滤,新的网格布局可以潜在地提供更好的权衡。

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