Philips Research Lab Hamburg, Hamburg, Germany.
IEEE Trans Vis Comput Graph. 2013 Mar;19(3):353-66. doi: 10.1109/TVCG.2012.136.
The concept of curvature and shape-based rendering is beneficial for medical visualization of CT and MRI image volumes. Color-coding of local shape properties derived from the analysis of the local Hessian can implicitly highlight tubular structures such as vessels and airways, and guide the attention to potentially malignant nodular structures such as tumors, enlarged lymph nodes, or aneurysms. For some clinical applications, however, the evaluation of the Hessian matrix does not yield satisfactory renderings, in particular for hollow structures such as airways, and densely embedded low contrast structures such as lymph nodes. Therefore, as a complement to Hessian-based shape-encoding rendering, this paper introduces a combination of an efficient sparse radial gradient sampling scheme in conjunction with a novel representation, the radial structure tensor (RST). As an extension of the well-known general structure tensor, which has only positive definite eigenvalues, the radial structure tensor correlates position and direction of the gradient vectors in a local neighborhood, and thus yields positive and negative eigenvalues which can be used to discriminate between different shapes. As Hessian-based rendering, also RST-based rendering is ideally suited for GPU implementation. Feedback from clinicians indicates that shape-encoding rendering can be an effective image navigation tool to aid diagnostic workflow and quality assurance.
基于曲率和形状的渲染概念对于 CT 和 MRI 图像体积的医学可视化非常有益。从分析局部Hessian 得出的局部形状属性的颜色编码可以隐式突出管状结构,如血管和气道,并引导注意力关注潜在的恶性结节结构,如肿瘤、肿大的淋巴结或动脉瘤。然而,对于某些临床应用,Hessian 矩阵的评估不能产生令人满意的渲染效果,特别是对于气道等中空结构和淋巴结等密集嵌入的低对比度结构。因此,作为基于 Hessian 的形状编码渲染的补充,本文引入了一种有效的稀疏径向梯度采样方案与一种新的表示形式,即径向结构张量 (RST) 的组合。作为众所周知的广义结构张量的扩展,它只有正定的特征值,径向结构张量在局部邻域中关联梯度向量的位置和方向,从而产生可以用于区分不同形状的正和负特征值。与基于 Hessian 的渲染一样,基于 RST 的渲染也非常适合 GPU 实现。临床医生的反馈表明,形状编码渲染可以成为一种有效的图像导航工具,辅助诊断工作流程和质量保证。