Publication | Closed Access
Segmentation using superpixels: A bipartite graph partitioning approach
292
Citations
27
References
2012
Year
Unknown Venue
Bipartite GraphImage ClassificationScene AnalysisMachine VisionImage AnalysisData ScienceMachine LearningPattern RecognitionSegmentation AlgorithmsEngineeringScene UnderstandingComputer ScienceBerkeley Segmentation DatabaseEdge DetectionImage SegmentationComputer VisionImage Sequence AnalysisNovel Segmentation Framework
Grouping cues can affect the performance of segmentation greatly. In this paper, we show that superpixels (image segments) can provide powerful grouping cues to guide segmentation, where superpixels can be collected easily by (over)-segmenting the image using any reasonable existing segmentation algorithms. Generated by different algorithms with varying parameters, superpixels can capture diverse and multi-scale visual patterns of a natural image. Successful integration of the cues from a large multitude of superpixels presents a promising yet not fully explored direction. In this paper, we propose a novel segmentation framework based on bipartite graph partitioning, which is able to aggregate multi-layer superpixels in a principled and very effective manner. Computationally, it is tailored to unbalanced bipartite graph structure and leads to a highly efficient, linear-time spectral algorithm. Our method achieves significantly better performance on the Berkeley Segmentation Database compared to state-of-the-art techniques.
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