Spectral Graph Cut from a Filtering Point of View

20 May 2012 Chengxi Ye Yuxu Lin Mingli Song Chun Chen David W. Jacobs

Spectral graph theory is well known and widely used in computer vision. In this paper, we analyze image segmentation algorithms that are based on spectral graph theory, e.g., normalized cut, and show that there is a natural connection between spectural graph theory based image segmentationand and edge preserving filtering... (read more)

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