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Geodesic Models With Convexity Shape Prior

Da Chen, Jean‐Marie Mirebeau, Minglei Shu, Xue‐Cheng Tai, Laurent D. Cohen

2022IEEE Transactions on Pattern Analysis and Machine Intelligence12 citationsDOIOpen Access PDF

Abstract

The minimal geodesic models established upon the eikonal equation framework are capable of finding suitable solutions in various image segmentation scenarios. Existing geodesic-based segmentation approaches usually exploit image features in conjunction with geometric regularization terms, such as euclidean curve length or curvature-penalized length, for computing geodesic curves. In this paper, we take into account a more complicated problem: finding curvature-penalized geodesic paths with a convexity shape prior. We establish new geodesic models relying on the strategy of orientation-lifting, by which a planar curve can be mapped to an high-dimensional orientation-dependent space. The convexity shape prior serves as a constraint for the construction of local geodesic metrics encoding a particular curvature constraint. Then the geodesic distances and the corresponding closed geodesic paths in the orientation-lifted space can be efficiently computed through state-of-the-art Hamiltonian fast marching method. In addition, we apply the proposed geodesic models to the active contours, leading to efficient interactive image segmentation algorithms that preserve the advantages of convexity shape prior and curvature penalization.

Topics & Concepts

GeodesicConvexityCurvatureFast marching methodGaussian curvatureMathematicsShape analysis (program analysis)Eikonal equationSegmentationImage segmentationArtificial intelligenceGeodesic mapComputer scienceComputer visionGeometryMathematical analysisFinancial economicsProgramming languageEconomicsStatic analysisMedical Image Segmentation Techniques3D Shape Modeling and AnalysisMedical Imaging and Analysis