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GPU-based streaming architectures for fast cone-beam CT image reconstruction and demons deformable registration

机译:基于GPU的流传输体系结构可用于快速锥束CT图像重建和恶魔可变形配准

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This paper shows how to significantly accelerate cone-beam CT reconstruction and 3D deformable image registration using the stream-processing model. We describe data-parallel designs for the Feldkamp, Davis and Kress (FDK) reconstruction algorithm, and the demons deformable registration algorithm, suitable for use on a commodity graphics processing unit. The streaming versions of these algorithms are implemented using the Brook programming environment and executed on an NVidia 8800 GPU. Performance results using CT data of a preserved swine lung indicate that the GPU-based implementations of the FDK and demons algorithms achieve a substantial speedup-up to 80 times for FDK and 70 times for demons when compared to an optimized reference implementation on a 2.8 GHz Intel processor. In addition, the accuracy of the GPU-based implementations was found to be excellent. Compared with CPU-based implementations, the RMS differences were less than 0.1 Hounsfield unit for reconstruction and less than 0.1 mm for deformable registration.
机译:本文展示了如何使用流处理模型显着加速锥束CT重建和3D变形图像配准。我们描述了适用于商品图形处理单元的Feldkamp,Davis和Kress(FDK)重建算法以及恶魔可变形配准算法的数据并行设计。这些算法的流版本使用Brook编程环境实现,并在NVidia 8800 GPU上执行。使用保存的猪肺部CT数据获得的性能结果表明,与2.8 GHz的优化参考实现相比,FDK和恶魔算法的基于GPU的实现将FDK和恶魔的实现显着加速,分别达到80倍和70倍。英特尔处理器。另外,发现基于GPU的实现的准确性非常好。与基于CPU的实现相比,RMS差异在重建中小于0.1 Hounsfield单位,在可变形套准中小于0.1 mm。

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