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Integrating spatial fuzzy clustering with level set methods for automated medical image segmentation.

机译:将空间模糊聚类与水平集方法集成,以实现医学图像自动分割。

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The performance of the level set segmentation is subject to appropriate initialization and optimal configuration of controlling parameters, which require substantial manual intervention. A new fuzzy level set algorithm is proposed in this paper to facilitate medical image segmentation. It is able to directly evolve from the initial segmentation by spatial fuzzy clustering. The controlling parameters of level set evolution are also estimated from the results of fuzzy clustering. Moreover the fuzzy level set algorithm is enhanced with locally regularized evolution. Such improvements facilitate level set manipulation and lead to more robust segmentation. Performance evaluation of the proposed algorithm was carried on medical images from different modalities. The results confirm its effectiveness for medical image segmentation.
机译:水平集分割的性能取决于适当的初始化和控制参数的最佳配置,这需要大量的人工干预。提出了一种新的模糊水平集算法,以促进医学图像的分割。它能够通过空间模糊聚类直接从初始分割中演化出来。水平集演化的控制参数也是从模糊聚类的结果中估计出来的。此外,模糊水平集算法通过局部正则化演化得到增强。此类改进有助于进行水平集操纵并导致更可靠的分割。所提出算法的性能评估是在不同形式的医学图像上进行的。结果证实了其对医学图像分割的有效性。

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