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A GPU-based parallel computing framework for accelerating the reconstruction of q-ball imaging

机译:基于GPU的并行计算框架,用于加速Q球成像的重建

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High-angular resolution diffusion imaging(HARDI) relative to the diffusion tensor imaging(DTI) can resolve the complex fiber crossing of each voxel in the brain, however, the image reconstruction time is longer than conventional technology, therefore, to improve the performance is a very important work to do. We used graphic processing unit (GPU) and CUDA to compute the spherical harmonic function on the reconstruction of QBI. It's very useful on massive performance data(Bid Data). With the large number of matrix elements in GPU for parallel computing. By evaluating with different video cards, the improved performance showed 179 to 574 speed up through shared memory access for computation. Finally, the results wiil be used in an extension of the three-dimensional spatial visualization and probabilistic tractography.
机译:相对于扩散张量成像(DTI)的高角度分辨率扩散成像(硬质)可以解析大脑中每个体素的复杂纤维交叉,然而,图像重建时间比传统技术长,因此,提高性能是一个非常重要的工作要做。我们使用图形处理单元(GPU)和CUDA来计算QBI重建的球面谐波功能。它对大规模性能数据(投标数据)非常有用。通过GPU中的大量矩阵元素进行并行计算。通过使用不同的视频卡进行评估,通过共享存储器访问来计算,改进的性能显示为179至574速度,以进行计算。最后,结果WiIL用于三维空间可视化和概率牵引的延伸。

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