Dabravolski Andrei, Batenburg Kees Joost, Sijbers Jan
iMinds-Vision lab, University of Antwerp, Antwerp, Belgium.
iMinds-Vision lab, University of Antwerp, Antwerp, Belgium; Centrum Wiskunde & Informatica (CWI), Amsterdam, The Netherlands; Mathematical Institute, Leiden University, Leiden, The Netherlands.
PLoS One. 2014 Sep 5;9(9):e106090. doi: 10.1371/journal.pone.0106090. eCollection 2014.
In discrete tomography, a scanned object is assumed to consist of only a few different materials. This prior knowledge can be effectively exploited by a specialized discrete reconstruction algorithm such as the Discrete Algebraic Reconstruction Technique (DART), which is capable of providing more accurate reconstructions from limited data compared to conventional reconstruction algorithms. However, like most iterative reconstruction algorithms, DART suffers from long computation times. To increase the computational efficiency as well as the reconstruction quality of DART, a multiresolution version of DART (MDART) is proposed, in which the reconstruction starts on a coarse grid with big pixel (voxel) size. The resulting reconstruction is then resampled on a finer grid and used as an initial point for a subsequent DART reconstruction. This process continues until the target pixel size is reached. Experiments show that MDART can provide a significant speed-up, reduce missing wedge artefacts and improve feature reconstruction in the object compared with DART within the same time, making its use with large datasets more feasible.
在离散断层成像中,假定被扫描物体仅由少数几种不同材料组成。这种先验知识可以通过专门的离散重建算法(如离散代数重建技术(DART))得到有效利用,与传统重建算法相比,该算法能够从有限的数据中提供更准确的重建结果。然而,与大多数迭代重建算法一样,DART存在计算时间长的问题。为了提高DART的计算效率和重建质量,提出了一种多分辨率版本的DART(MDART),其中重建从具有大像素(体素)尺寸的粗网格开始。然后将得到的重建结果在更精细的网格上重新采样,并用作后续DART重建的初始点。这个过程一直持续到达到目标像素尺寸。实验表明,与DART相比,MDART可以在相同时间内显著加快速度、减少缺失楔形伪影并改善物体中的特征重建,使其在处理大型数据集时更可行。