Kernel Density Estimation and Intrinsic Alignment for Shape Priors in Level Set Segmentation
作者:Daniel Cremers, Stanley J. Osher, Stefano Soatto
摘要
In this paper, we make two contributions to the field of level set based image segmentation. Firstly, we propose shape dissimilarity measures on the space of level set functions which are analytically invariant under the action of certain transformation groups. The invariance is obtained by an intrinsic registration of the evolving level set function. In contrast to existing approaches to invariance in the level set framework, this closed-form solution removes the need to iteratively optimize explicit pose parameters. The resulting shape gradient is more accurate in that it takes into account the effect of boundary variation on the object’s pose.
论文关键词:image segmentation, shape priors, level set methods, Bayesian inference, alignment, kernel density estimation
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论文官网地址:https://doi.org/10.1007/s11263-006-7533-5