Mahapatra Dwarikanath
Department of Computer Science, Swiss Federal Institute of Technology, CAB E65.1, Universitatstrasse 6, Zurich, 8092, Switzerland,
J Digit Imaging. 2014 Dec;27(6):794-804. doi: 10.1007/s10278-014-9705-0.
We propose a fully automated method for segmenting the cardiac right ventricle (RV) from magnetic resonance (MR) images. Given a MR test image, it is first oversegmented into superpixels and each superpixel is analyzed to detect the presence of RV regions using random forest (RF) classifiers. The superpixels containing RV regions constitute the region of interest (ROI) which is used to segment the actual RV. Probability maps are generated for each ROI pixel using a second set of RF classifiers which give the probabilities of each pixel belonging to RV or background. The negative log-likelihood of these maps are used as penalty costs in a graph cut segmentation framework. Low-level features like intensity statistics, texture anisotropy and curvature asymmetry, and high level context features are used at different stages. Smoothness constraints are imposed based on semantic information (importance of each feature to the classification task) derived from the second set of learned RF classifiers. Experimental results show that compared to conventional method our algorithm achieves superior performance due to the inclusion of semantic knowledge and context information.
我们提出了一种从磁共振(MR)图像中分割心脏右心室(RV)的全自动方法。给定一幅MR测试图像,首先将其过分割为超像素,然后使用随机森林(RF)分类器对每个超像素进行分析,以检测RV区域的存在。包含RV区域的超像素构成感兴趣区域(ROI),该区域用于分割实际的RV。使用第二组RF分类器为每个ROI像素生成概率图,这些分类器给出每个像素属于RV或背景的概率。这些图的负对数似然用作图割分割框架中的惩罚成本。在不同阶段使用强度统计、纹理各向异性和曲率不对称等低级特征以及高级上下文特征。基于从第二组学习到的RF分类器得出的语义信息(每个特征对分类任务的重要性)施加平滑约束。实验结果表明,与传统方法相比,我们的算法由于包含语义知识和上下文信息而具有卓越的性能。