El-Baz Ayman, Yuksel Seniha E, Shi Hongjian, Farag Aly A, El-Ghar Mohamed A, Eldiasty Tarek, Ghoneim Mohamed A
Computer Vision and Image Processing Laboratory, University of Louisville, Louisville, KY 40292, USA.
Med Image Comput Comput Assist Interv. 2005;8(Pt 2):821-9. doi: 10.1007/11566489_101.
A novel shape based segmentation approach is proposed by modifying the external energy component of a deformable model. The proposed external energy component depends not only on the gray level of the images but also on the shape information which is obtained from the signed distance maps of objects in a given data set. The gray level distribution and the signed distance map of the points inside and outside the object of interest are accurately estimated by modelling the empirical density function with a linear combination of discrete Gaussians (LCDG) with positive and negative components. Experimental results on the segmentation of the kidneys from low-contrast DCE-MRI and on the segmentation of the ventricles from brain MRI's show how the approach is accurate in segmenting 2-D and 3-D data sets. The 2D results for the kidney segmentation have been validated by a radiologist and the 3D results of the ventricle segmentation have been validated with a geometrical phantom.
通过修改可变形模型的外部能量分量,提出了一种基于形状的新型分割方法。所提出的外部能量分量不仅取决于图像的灰度级,还取决于从给定数据集中对象的符号距离图获得的形状信息。通过用具有正分量和负分量的离散高斯(LCDG)线性组合对经验密度函数进行建模,可以准确估计感兴趣对象内部和外部点的灰度级分布和符号距离图。在低对比度DCE-MRI的肾脏分割以及脑MRI的心室分割上的实验结果表明了该方法在分割二维和三维数据集时的准确性。肾脏分割的二维结果已由放射科医生验证,心室分割的三维结果已用几何模型验证。