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Numerical Aspects of Spectral Segmentation on Polygonal Grids

机译:多边形网格光谱分割的数值方面

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We present an implementation of the Normalized Cuts method for the solution of the image segmentation problem on polygonal grids. We show that in the presence of rounding errors the eigenvector corresponding to the k-th smallest eigenvalue of the generalized graph Laplacian is likely to contain more than k nodal domains. It follows that the Fiedler vector alone is not always suitable for graph partitioning, while the eigenvector subspace, corresponding to just a few of the lowest eigenvalues, contains sufficient information needed for obtaining meaningful segmentation. At the same time, the eigenvector corresponding to the trivial solution often carries nontrivial information about the nodal domains in the image and can be used as an initial guess for the Krylov subspace eigensolver. We show that proposed algorithm performs favorably when compared to the Multiscale Normalized Cuts and Segmentation by Weighted Aggregation.
机译:我们提出了归一化切割方法的实现,用于解决多边形网格上的图像分割问题。我们表明,在存在舍入误差的情况下,对应于广义图拉普拉斯算子的第k个最小特征值的特征向量可能包含超过k个节点域。由此得出结论,仅Fiedler向量并不总是适合于图分割,而仅与几个最低特征值相对应的特征向量子空间包含获得有意义的分割所需的足够信息。同时,与平凡解相对应的特征向量通常携带有关图像中节点域的非平凡信息,并且可以用作Krylov子空间特征求解器的初始猜测。我们表明,与通过加权聚合进行的多尺度归一化割和分割相比,该算法具有良好的性能。

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