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Model-based Iterative CT Image Reconstruction on GPUs

机译:基于模型的GPU上的迭代CT图像重建

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Computed Tomography (CT) Image Reconstruction is an important technique used in a variety of domains, including medical imaging, electron microscopy, non-destructive testing and transportation security. Model-based Iterative Reconstruction (MBIR) using Iterative Coordinate Descent (ICD) is a CT algorithm that produces state-of-the-art results in terms of image quality. However, MBIR is highly computationally intensive and challenging to parallelize, and has traditionally been viewed as impractical in applications where reconstruction time is critical. We present the first GPU-based algorithm for ICD-based MBIR. The algorithm leverages the recently-proposed concept of SuperVoxels [1], and efficiently exploits the three levels of parallelism available in MBIR to better utilize the GPU hardware resources. We also explore data layout transformations to obtain more coalesced accesses and several GPU-specific optimizations for MBIR that boost performance. Across a suite of 3200 test cases, our GPU implementation obtains a geometric mean speedup of 4.43X over a state-of-the-art multi-core implementation on a 16-core iso-power CPU.
机译:计算机断层扫描(CT)图像重建是在各种领域,包括医学成像,电子显微镜,非破坏性测试和运输安全性的使用的重要技术。使用迭代坐标下降(ICD)基于模型的迭代重建(MBIR)是产生在图像质量方面的国家的最先进的结果的CT算法。然而,MBIR是高度计算密集型和挑战并行,并且历来在重建时间非常关键的应用被认为是不切实际的。我们提出了基于ICD-MBIR第一基于GPU的算法。该算法利用了最近提出的SuperVoxels [1]的概念,并有效地利用了三个层次MBIR可用的并行,以更好地利用GPU硬件资源。我们还探讨了数据布局的变换,以获得更多的凝聚的访问和几个GPU特定的优化为MBIR是提升性能。横跨一套3200测试情况下,我们GPU实现获得4.43X的在16芯异功率CPU上的状态下的最先进的多核心执行的几何平均的加速。

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