Interactive image segmentation using geodesic appearance overlap graph cut
Image segmentation is a fundamental step in many applications such as image editing, medical image analysis and processing. It is quite common to use graph cuts for image segmentation in recent years. Tang, Gorelick, Veksler, and Boykov proposed a new image segmentation model which uses the appearan...
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Veröffentlicht in: | Signal processing. Image communication 2019-10, Vol.78, p.159-170 |
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Sprache: | eng |
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Zusammenfassung: | Image segmentation is a fundamental step in many applications such as image editing, medical image analysis and processing. It is quite common to use graph cuts for image segmentation in recent years. Tang, Gorelick, Veksler, and Boykov proposed a new image segmentation model which uses the appearance overlap on unnormalized histograms and graph cut framework. Their model is highly effective for interactive segmentation but is prone to isolated points. To avoid that problem, we propose an effective interactive image segmentation method, that is appropriately incorporating geodesic distance information, appearance overlap information, and edge information together into the well-known graph-cut framework. Rather than a simple union of these information, the respective strengths of each information term can be tuned adaptively in our method. We utilize the user’s scribbles to obtain the estimated foreground/background color models via fast kernel density estimation, and then get the appearance overlap intricateness according to the inferred color models. By taking comprehensive advantage of the geodesic distance and the global appearance overlap color clues, our method requires less user effort and achieves higher accuracy of segmentation than the latest interactive segmentation techniques, such as Geodesic Graph Cut, GrabCut in One Cut, Semi-Supervised Normalized Cuts, and Convexity Shape Prior for Binary Segmentation, as shown in our experiments.
•A graph-based method integrating geodesic, appearance, edge information is proposed.•Proposed algorithm overcomes the defects of OneCut which prones to isolated points.•Experiments in three standard benchmarks verify the validity of the proposed method. |
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ISSN: | 0923-5965 1879-2677 |
DOI: | 10.1016/j.image.2019.06.012 |