资源论文Hedgehog Shape Priors for Multi-object Segmentation

Hedgehog Shape Priors for Multi-object Segmentation

2019-12-20 | |  84 |   52 |   0

Abstract

Star-convexity prior is popular for interactive single object segmentation due to its simplicity and amenability to binary graph cut optimization. We propose a more general multi-object segmentation approach. Moreover, each object can be constrained by a more descriptive shape prior, “hedgehog”. Each hedgehog shape has its surface normals locally constrained by an arbitrary given vector fifield, e.g. gradient of the user-scribble distance transform. In contrast to star-convexity, the tightness of our normal constraint can be changed giving better control over allowed shapes. For example, looser constraints, i.e. wider cones of allowed normals, give more relaxed hedgehog shapes. On the other hand, the tightest constraint enforces skeleton consistency with the scribbles. In general, hedgehog shapes are more descriptive than a star, which is only a special case corresponding to a radial vector fifield and weakest tightness. Our approach has signifificantly more applications than standard single star-convex segmentation, e.g. in medical data we can separate multiple non-star organs with similar appearances and weak edges. Optimization is done by our modifified α-expansion moves shown to be submodular for multi-hedgehog shapes

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