University of Münster.
IEEE Trans Vis Comput Graph. 2010 Nov-Dec;16(6):1358-65. doi: 10.1109/TVCG.2010.208.
Although direct volume rendering is established as a powerful tool for the visualization of volumetric data, efficient and reliable feature detection is still an open topic. Usually, a tradeoff between fast but imprecise classification schemes and accurate but time-consuming segmentation techniques has to be made. Furthermore, the issue of uncertainty introduced with the feature detection process is completely neglected by the majority of existing approaches.In this paper we propose a guided probabilistic volume segmentation approach that focuses on the minimization of uncertainty. In an iterative process, our system continuously assesses uncertainty of a random walker-based segmentation in order to detect regions with high ambiguity, to which the user's attention is directed to support the correction of potential misclassifications. This reduces the risk of critical segmentation errors and ensures that information about the segmentation's reliability is conveyed to the user in a dependable way. In order to improve the efficiency of the segmentation process, our technique does not only take into account the volume data to be segmented, but also enables the user to incorporate classification information. An interactive workflow has been achieved by implementing the presented system on the GPU using the OpenCL API. Our results obtained for several medical data sets of different modalities, including brain MRI and abdominal CT, demonstrate the reliability and efficiency of our approach.
虽然直接体绘制已经成为了一种强大的体数据可视化工具,但高效可靠的特征检测仍然是一个尚未解决的问题。通常,必须在快速但不精确的分类方案和准确但耗时的分割技术之间进行权衡。此外,大多数现有方法完全忽略了特征检测过程中引入的不确定性问题。
在本文中,我们提出了一种基于引导的概率体分割方法,该方法专注于最小化不确定性。在迭代过程中,我们的系统不断评估基于随机游走的分割的不确定性,以检测具有高歧义的区域,并将用户的注意力引导到这些区域,以支持纠正潜在的误分类。这降低了关键分割错误的风险,并确保以可靠的方式向用户传达有关分割可靠性的信息。为了提高分割过程的效率,我们的技术不仅考虑要分割的体数据,还允许用户合并分类信息。通过在 GPU 上使用 OpenCL API 实现所提出的系统,我们实现了交互式工作流程。我们针对来自不同模态的多个医学数据集(包括脑 MRI 和腹部 CT)获得的结果证明了我们方法的可靠性和效率。