A Fast Leading Eigenvector Approximation for Segmentation and GroupingDownload PDFOpen Website

2002 (modified: 03 Nov 2022)ICPR (2) 2002Readers: Everyone
Abstract: We present a fast non-iterative method for approximating the leading eigenvector so as to render graph-spectral based grouping algorithms more efficient. The approximation is based on a linear perturbation analysis and applies to matrices that are non-sparse, non-negative and symmetric. For an N/spl times/N matrix, the approximation can be implemented with complexity as low as O(4N/sup 2/). We provide a performance analysis and demonstrate the usefulness of our method on image segmentation problems.
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