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Graph characteristics from the heat kernel trace

机译:热核迹线的图形特征

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摘要

Graph structures have been proved important in high level-vision since they call be used to represent structural and relational arrangements of objects in a scene. One of the problems that arises in the analysis of structural abstractions of objects is graph clustering. In this paper, we explore how permutation invariants computed from the trace of the heat kernel can be used to characterize graphs for the purposes of measuring similarity and clustering. The heat kernel is the Solution of the heat equation and is a compact representation of the path-length distribution oil a graph. The trace of the heat kernel is given by the sum of the Laplacian eigenvalues exponentiated with time. We explore three different approaches to characterizing the heat kernel trace as a function of time. Our first characterization is based on the zeta function, which from the Mellin transform is the moment generating function of the heat kernel trace. Our second characterization is unary and is found by computing the derivative of the zeta function at the origin. The third characterization is derived from the heat content, i.e. the sum of the elements of the heat kernel. We show how the heat content call be expanded as a power series in time, and the coefficients of the series can be computed using the Laplacian spectrum. We explore the use of these characterizations as a means of representing graph structure for the purposes of clustering, and compare them with the use of the Laplacian spectrum. Experiments with the synthetic and real-world databases reveal that each of the three proposed invariants is effective and outperforms the traditional Laplacian spectrum. Moreover, the heat-content invariants appear to consistently give the best results in both synthetic sensitivity studies and on real-world object recognition problems.
机译:图形结构已被证明在高水平视觉中很重要,因为它们被称为代表场景中对象的结构和关系排列。在分析对象的结构抽象时出现的问题之一是图聚类。在本文中,我们探索了如何根据热核的踪迹计算出的排列不变性来表征图,以测量相似度和聚类。热核是热方程的解,是光程分布的紧凑表示。热核的轨迹由随时间指数化的拉普拉斯特征值之和给出。我们探索了三种不同的方法来表征热核迹线随时间的变化。我们的第一个表征是基于zeta函数,该函数来自Mellin变换是热核迹线的矩生成函数。我们的第二个特征是一元的,可以通过在起点处计算zeta函数的导数找到。第三个特征是从热量即热核元素的总和得出的。我们展示了热量含量如何随时间扩展为幂级数,并且该级数的系数可以使用拉普拉斯谱来计算。我们探索将这些特征用作表示图结构以达到聚类目的的一种方法,并将其与拉普拉斯谱图进行比较。综合和真实数据库的实验表明,三个提出的不变式均有效,并且优于传统的拉普拉斯谱。此外,在合成敏感性研究和现实物体识别问题上,热含量不变量似乎始终能提供最佳结果。

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