首页> 外文会议>6th International Conference on Medical Image Computing and Computer-Assisted Intervention (MICCAI 2003) Pt.II; Nov 15-18, 2003; Montreal, Canada >Gibbs Prior Models, Marching Cubes, and Deformable Models: A Hybrid Framework for 3D Medical Image Segmentation
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Gibbs Prior Models, Marching Cubes, and Deformable Models: A Hybrid Framework for 3D Medical Image Segmentation

机译:Gibbs先验模型,前进多维数据集和可变形模型:用于3D医学图像分割的混合框架

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摘要

Hybrid frameworks combining region-based and boundary-based segmentation methods have been used in 3D medical image segmentation applications. In this paper we propose a hybrid 3D segmentation framework which combines Gibbs models, marching cubes and deformable models. We use Gibbs models to create 3D binary masks of the object. Then we use the marching cubes method to initialize a deformable model based on the mask. The deformable model will fit to the object surface driven by the gradient information in the original image. The deformation result will then be used to update the parameters of Gibbs models. These methods will work recursively to achieve a final segmentation. By using the marching cubes method, we succeed in improving the accurancy and efficiency of 3D segmentation. We validate our method by comparing the segmentation result with expert manual segmentation, the results show that high quality segmentation can be achieved with computational efficiency.
机译:结合了基于区域和基于边界的分割方法的混合框架已用于3D医学图像分割应用中。在本文中,我们提出了一个混合的3D分割框架,该框架结合了Gibbs模型,行进立方体和可变形模型。我们使用Gibbs模型创建对象的3D二进制蒙版。然后,我们使用行进立方体方法基于蒙版初始化可变形模型。可变形模型将适合原始图像中由梯度信息驱动的物体表面。然后将变形结果用于更新Gibbs模型的参数。这些方法将递归工作以实现最终分割。通过使用行进立方体方法,我们成功地提高了3D分割的准确性和效率。我们通过将分割结果与专家手动分割进行比较来验证我们的方法,结果表明,可以以计算效率实现高质量的分割。

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