CEA, LIST, 91191 Gif-sur-Yvette, France.
CEA, LIST, 91191 Gif-sur-Yvette, France.
Comput Biol Med. 2018 Jan 1;92:9-21. doi: 10.1016/j.compbiomed.2016.11.001. Epub 2016 Nov 9.
In this paper, a framework to create a statistical content-adapted sampling (SCAS) for 3D X-ray Computed Tomography (CT) is introduced. SCAS aims at providing an accurate but light reconstruction volume. Based on decision theory, the 3D reconstruction space is sampled from the raw projection data in three steps to directly fit the sample. To do so, the structural information is first extracted from the projections by edge detection. This information is then merged in the reconstruction space, providing a pointcloud which accurately delineates the 3D interfaces of the specimen. From this pointcloud, a 3D mesh, closely fitting the shape of the studied object, is finally built via constrained Delaunay tetrahedralization. To assess the potential of the proposed SCAS for CT imaging, an iterative reconstruction was performed by classical Ordered Subset Simultaneous Algebraic Reconstruction Technique (OS-SART) - with fitting projection operator. The SCAS was evaluated on both numerical and experimental data. Results show that the use of statistical testing enabled the design of a robust, automated and fast method to build accurate pointclouds from a limited number of projections. The 3D meshes generated from these pointclouds are composed of few cells when compared to the regular voxel representation, leading to a downsize in computational cost and achieving up to 90% of memory footprint reduction. Simulations showed that performed reconstruction on such meshes provide accurate description of the object due to the finer sampling at interfaces.
本文提出了一种用于三维 X 射线计算机断层扫描(CT)的统计内容自适应采样(SCAS)框架。SCAS 的目的是提供准确但轻便的重建体积。基于决策理论,通过三个步骤从原始投影数据中对 3D 重建空间进行采样,以直接拟合样本。为此,首先通过边缘检测从投影中提取结构信息。然后,该信息在重建空间中合并,提供一个准确描绘样本 3D 界面的点云。最后,通过约束 Delaunay 四面体化,从该点云中构建与研究对象形状紧密贴合的 3D 网格。为了评估所提出的 SCAS 在 CT 成像中的潜力,通过经典的有序子集同时代数重建技术(OS-SART)进行了迭代重建-带有拟合投影算子。对数值和实验数据都进行了 SCAS 的评估。结果表明,统计测试的使用使得设计一种稳健、自动化和快速的方法来从有限数量的投影中构建准确的点云成为可能。与常规体素表示相比,从这些点云中生成的 3D 网格包含的单元较少,从而降低了计算成本,并实现了高达 90%的内存占用减少。模拟表明,对这些网格进行的重建由于在界面处进行了更精细的采样,因此可以对物体进行准确的描述。