首页> 外文会议>IAPR-TC-15 International Workshop on Graph-Based Representations in Pattern Recognition(GbRPR 2007); 20070611-13; Alicante(ES) >A Fast Construction of the Distance Graph Used for the Classification of Heterogeneous Electron Microscopic Projections
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A Fast Construction of the Distance Graph Used for the Classification of Heterogeneous Electron Microscopic Projections

机译:用于异质电子显微投影分类的距离图的快速构建

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It has been demonstrated that the difficult problem of classifying heterogeneous projection images, similar to those found in 3D electron microscopy (3D-EM) of macromolecules, can be successfully solved by finding an approximate Max k-Cut of an appropriately constructed weighted graph. Despite of the large size (thousands of nodes) of the graph and the theoretical computational complexity of finding even an approximate Max k-Cut, an algorithm has been proposed that finds a good (from the classification perspective) approximate solution within several minutes (running on a standard PC). However, the task of constructing the complete weighted graph (that represents an instance of the projection image classification problems) is computationally expensive. Due to the large number of edges, the computation of edge weights can take tens of hours for graphs containing several thousand nodes. We propose a method, which utilizes an early termination technique, to significantly reduce the computational cost of constructing such graphs. We compare, on synthetic data sets that resemble projection sets encountered in 3D-EM, the performance of our method with that of a brute-force approach and a method based on nearest neighbor search.
机译:已经证明,与大分子的3D电子显微镜(3D-EM)中发现的相似,对异构投影图像进行分类的难题可以通过找到适当构造的加权图的近似Max k-Cut来成功解决。尽管图的尺寸很大(成千上万个节点),并且即使找到近似的最大k-Cut都具有理论上的计算复杂性,但还是提出了一种算法,该算法可在几分钟内(从分类的角度)找到一个好的(近似的)近似解在标准PC上)。但是,构造完整的加权图(代表投影图像分类问题的一个实例)的任务在计算上很昂贵。由于边缘数量众多,对于包含数千个节点的图,边缘权重的计算可能要花费数十小时。我们提出了一种利用早期终止技术的方法,可以显着降低构建此类图的计算成本。我们在类似于3D-EM中遇到的投影集的合成数据集上,比较了我们的方法与蛮力方法和基于最近邻居搜索的方法的性能。

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