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Joint level-set shape modeling and appearance modeling for brain structure segmentation.

机译:用于脑结构分割的联合水平集形状建模和外观建模。

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摘要

This paper presents a new fully automatic model-based segmentation algorithm, which combines level-set methods to model the shape of brain structures and their variation with active appearance modeling to generate images that are used to drive the segmentation. The new algorithm incorporates multi-modality images to improve the segmentation performance and the recursive least square (RLS) algorithm is adopted to minimize the difference between test image and the one synthesized from the shape and appearance modeling. When compared with manual segmentation, the 2D and 3D experiments demonstrate that the new algorithm is computationally efficient and robust and is promising for automatic segmentation of the lateral ventricles.
机译:本文提出了一种新的基于模型的全自动分割算法,该算法结合了水平集方法对大脑结构的形状及其变化与活动外观建模进行建模,以生成用于驱动分割的图像。新算法结合了多模态图像以提高分割性能,并采用递归最小二乘(RLS)算法来最小化测试图像与从形状和外观模型合成的图像之间的差异。与手动分割相比,2D和3D实验表明,该新算法在计算效率和鲁棒性方面都非常有希望用于侧脑室的自动分割。

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