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A novel approach for curve evolution in segmentation of medical images.

机译:医学图像分割中曲线演化的新方法。

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摘要

A new joint parametric and nonparametric curve evolution algorithm is proposed for medical image segmentation. In this algorithm, both the nonlinear space of level set function (nonparametric model) and the linear subspace of level set function spanned by the principle components (parametric model) are employed in the evolution procedure. The nonparametric curve evolution can drive the curve precisely to object boundaries while the parametric model acts as a statistical constraint based on the Bayesian framework in order to match object shape more robustly. As a result, our new algorithm is as robust as the parametric curve evolution algorithms and at the same time, yields more accurate segmentation results by using the shape prior information. Comparative results on segmenting ventricle frontal horns and putamen shapes in MR brain images confirm the advantages of the proposed joint curve evolution algorithm.
机译:提出了一种新的联合参数和非参数曲线演化算法用于医学图像分割。在该算法中,水平集函数的非线性空间(非参数模型)和由主成分跨越的水平集函数的线性子空间(参数模型)都用于演化过程。非参数曲线演化可以将曲线精确地驱动到对象边界,而参数模型则基于贝叶斯框架充当统计约束,以便更可靠地匹配对象形状。结果,我们的新算法与参数曲线演化算法一样强大,同时通过使用形状先验信息可以产生更准确的分割结果。在MR脑图像中分割脑室额角和壳状形状的比较结果证实了所提出的联合曲线演化算法的优势。

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