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Image reconstruction by Mumford-Shah regularization for low-dose CT with multi-GPU acceleration

机译:Mumford-Shah正规用多GPU加速的低剂量CT正规化的图像重建

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Mumford-Shah (MS) functional has emerged as a regularization technique in x-ray computed tomography (CT) recently. However, for high-resolution CT applications, the huge size of both projection data and image leads to an implementation difficulty. In this work, we propose an approach to implement and accelerate MS regularization on a multi-GPU platform to resolve the issue of data size and rich onboard memory and computing units. We have established a novel partition scheme of the 3D volume under reconstruction and corresponding multithread parallel acceleration strategy to fully utilize the computing resource of multi-GPUs. Our implementation is highly modularized and can be easily scaled with the configuration of GPUs. Experiment results with simulation data as well as real data demonstrate a superior reconstruction quality in contrast to the total variation regularization approach, especially for the ultra-low-dose case. Moreover, this is the first time that MS regularization is used for 3D reconstruction of huge images up to 3072(3) voxels within 12 min.
机译:Mumford-Shah(MS)功能是最近作为X射线计算机断层扫描(CT)的正则化技术。然而,对于高分辨率CT应用,投影数据和图像的大小导致实现难度。在这项工作中,我们提出了一种在多GPU平台上实施和加速MS正则化的方法,以解决数据大小和富裕的板载存储器和计算单元问题。我们已经建立了重建和相应的多线程并行加速策略下的3D音量的新配置方案,以充分利用多GPU的计算资源。我们的实现高度模块化,可以轻松缩放GPU的配置。实验结果具有模拟数据以及真实数据,与总变化正规方法相比,呈现出优越的重建质量,特别是对于超低剂量案例。此外,这是第一次在12分钟内用于3D重建巨大图像的巨大图像3D到3072(3)个体素。

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