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Shape Indexing Using Relational Vectors and Neural Networks

机译:使用关系向量和神经网络形状索引

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In this paper, we propose a novel approach to generating topology preserving mapping of structural shapes using the self-organising maps (SOM). The structural information of the geometrical shapes is captured by the relational vectors. These relational attribute vectors are quantised using an SOM. Using this quatisation SOM, a histogram is generated for every shape. These histograms are treated as inputs to train another SOM which yields a topology preserving mapping of the geometric shapes. By appropriately choosing the relational vectors, it is possible to generate the mapping invariant to some chosen transformations such as rotation, translation, scale, affine or perspective. These SOMs may be organised into a tree-structure so that during the application phase the histogram of the query shape and the shapes most similar to the query shape can be retrieved efficiently.
机译:在本文中,我们提出了一种使用自组织地图(SOM)产生结构形状的拓扑映射的新方法。几何形状的结构信息由关系向量捕获。这些关系属性向量使用SOM量化。使用该Quatation SOM,为每个形状生成直方图。这些直方图被视为训练另一个SOM的输入,这产生了几何形状的保存映射的拓扑结构。通过适当地选择关系向量,可以生成映射不变的一些所选择的变换,例如旋转,转换,缩放,仿射或透视图。可以将这些SOM组织成树结构,使得在应用程序期间,可以有效地检索查询形状的直方图和最常见的形状。

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