Publication record · 18.cifr/2000.shi.normalized-cuts
18.cifr/2000.shi.normalized-cutsWe propose a novel approach for solving the perceptual grouping problem in vision. Rather than focusing on local features and their consistencies in the image data, our approach aims at extracting the global impression of an image. We treat image segmentation as a graph partitioning problem and propose a novel global criterion, the normalized cut, for segmenting the graph. The normalized cut criterion measures both the total dissimilarity between the different groups as well as the total similarity within the groups. We show that an efficient computational technique based on a generalized eigenvalue problem can be used to optimize this criterion.
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The authors note approximation error from discretizing the continuous eigenvector solution and suggest better rounding strategies. Scalability to high-resolution images remains a challenge, motivating hierarchical or multiresolution eigenproblem solvers. Extensions to color, texture, and motion cues, as well as direct multi-class partitioning beyond recursive bisection, are identified as natural next steps.