Regularized Reconstruction of Shapes with Statistical a priori Knowledge

作者:Matthias Fuchs, Otmar Scherzer

摘要

The reconstruction of geometry or, in particular, the shape of objects is a common issue in image analysis. Starting from a variational formulation of such a problem on a shape manifold we introduce a regularization technique incorporating statistical shape knowledge. The key idea is to consider a Riemannian metric on the shape manifold which reflects the statistics of a given training set. We investigate the properties of the regularization functional and illustrate our technique by applying it to region-based and edge-based segmentation of image data. In contrast to previous works our framework can be considered on arbitrary (finite-dimensional) shape manifolds and allows the use of Riemannian metrics for regularization of a wide class of variational problems in image processing.

论文关键词:Statistical shape analysis, Variational methods, Regularization theory, Image segmentation, Shape recognition

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论文官网地址:https://doi.org/10.1007/s11263-007-0103-7