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Medical Image Segmentation Using a Geometric Active Contour Model Based on Level Set Method

机译:基于水平集方法的几何主动轮廓模型医学图像分割

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We present a level set framework for medical image segmentation using a new defined speed function. This function combines the alignment term, which makes a level set as close as possible to a boundary of object, the minimal variance term, which best separates the interior and exterior in the contour and the smoothing term, which makes a segmented boundary become less sensitive to noise. The use of a proposed speed function can improve the segmentation accuracy while making the boundaries of each object much smoother. Finally, we have demonstrated that the design of the speed function plays an important part in segmenting the synthetic and CT images reliably.
机译:我们提出了使用新定义的速度函数进行医学图像分割的水平集框架。此功能将对齐项(使水平集尽可能接近对象的边界),最小方差项(使轮廓的内部和外部最佳分离)和平滑项结合在一起,这使分段的边界变得不太敏感发出噪音。使用建议的速度函数可以提高分割精度,同时使每个对象的边界更加平滑。最后,我们证明了速度函数的设计在可靠地分割合成图像和CT图像中起着重要的作用。

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