Shape statistics in kernel space for variational image segmentation

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摘要

We present a variational integration of nonlinear shape statistics into a Mumford–Shah based segmentation process. The nonlinear statistics are derived from a set of training silhouettes by a novel method of density estimation which can be considered as an extension of kernel PCA to a probabilistic framework.We assume that the training data forms a Gaussian distribution after a nonlinear mapping to a higher-dimensional feature space. Due to the strong nonlinearity, the corresponding density estimate in the original space is highly non-Gaussian.Applications of the nonlinear shape statistics in segmentation and tracking of 2D and 3D objects demonstrate that the segmentation process can incorporate knowledge on a large variety of complex real-world shapes. It makes the segmentation process robust against misleading information due to noise, clutter and occlusion.

论文关键词:Probabilistic kernel PCA,Nonlinear shape statistics,Density estimation,Image segmentation,Variational methods,Diffusion snakes

论文评审过程:Received 15 January 2003, Accepted 15 January 2003, Available online 22 April 2003.

论文官网地址:https://doi.org/10.1016/S0031-3203(03)00056-6