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Discrete Representation of Top Points via Scale Space Tessellation

机译:通过尺度空间细分来离散表示最高点

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摘要

In previous work, singular points (or top points) in the scale space representation of generic images have proven valuable for image matching. In this paper, we propose a construction that encodes the scale space description of top points in the form of a directed acyclic graph. This representation allows us to utilize graph matching algorithms for comparing images represented in terms of top point configurations instead of using solely the top points and their features in a point matching algorithm, as was done previously. The nodes of the graph represent the critical paths together with their top points. The edge set will capture the neighborhood distribution of vertices in scale space, and is constructed through a Delaunay triangulation scheme. We also will present a many-to-many matching algorithm for comparing such graph-based representations. This algorithm is based on a metric-tree representation of labelled graphs and their low-distortion embeddings into normed vector spaces via spherical encoding. This is a two-step transformation that reduces the matching problem to that of computing a distribution-based distance measure between two such embeddings. To evaluate the quality of our representation, two sets of experiments are considered. First, the stability of this representation under Gaussian noise of increasing magnitude is examined. In the second set of experiments, a series of recognition experiments is run on a small face database.
机译:在以前的工作中,已证明通用图像的比例空间表示中的奇异点(或最高点)对于图像匹配很有价值。在本文中,我们提出了一种构造,该构造以有向无环图的形式编码顶点的比例空间描述。这种表示方式使我们能够利用图形匹配算法来比较以最高点配置表示的图像,而不是像以前一样,仅在最高点匹配算法中仅使用最高点及其特征。图的节点代表关键路径及其最高点。边集将捕获比例空间中顶点的邻域分布,并通过Delaunay三角剖分方案构建。我们还将提出一种多对多匹配算法,以比较这种基于图的表示形式。该算法基于标记图的度量树表示及其通过球形编码将它们的低失真嵌入规范向量空间中。这是一个两步转换,将匹配问题简化为计算两个此类嵌入之间基于分布的距离度量的问题。为了评估我们表示的质量,考虑了两组实验。首先,检查了这种表示在高斯噪声不断增加的情况下的稳定性。在第二组实验中,在小型人脸数据库上运行一系列识别实验。

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