在商用图形硬件(GPU)上加速正则化迭代ct重构

W. Xu, K. Mueller
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引用次数: 7

摘要

经过正则化增强的迭代重建算法可以在少量视图甚至存在明显噪声的情况下产生高质量的重建。在本文中,我们关注与这些GPU加速相关的特殊性。首先,我们介绍了使用穷举基准测试来确定迭代算法中各种参数的最佳设置的思想,这里是OS-SIRT,这证明了获得最佳GPU性能的决定性。然后,我们引入双边滤波作为一种可行且经济有效的正则化方法,并证明gpu加速将其开销降低到非常适中的水平。
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Accelerating regularized iterative ct reconstruction on commodity graphics hardware (GPU)
Iterative reconstruction algorithms augmented with regularization can produce high-quality reconstructions from few views and even in the presence of significant noise. In this paper we focus on the particularities associated with the GPU acceleration of these. First, we introduce the idea of using exhaustive benchmark tests to determine the optimal settings of various parameters in iterative algorithm, here OS-SIRT, which proofs decisive for obtaining optimal GPU performance. Then we introduce bilateral filtering as a viable and cost-effective means for regularization, and we show that GPU-acceleration reduces its overhead to very moderate levels.
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