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Optimized Parallelization for Nonlocal Means Based Low Dose CT Image Processing

机译:基于非局部均值的低剂量CT图像处理的优化并行化

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摘要

Low dose CT (LDCT) images are often significantly degraded by severely increased mottled noise/artifacts, which can lead to lowered diagnostic accuracy in clinic. The nonlocal means (NLM) filtering can effectively remove mottled noise/artifacts by utilizing large-scale patch similarity information in LDCT images. But the NLM filtering application in LDCT imaging also requires high computation cost because intensive patch similarity calculation within a large searching window is often required to be used to include enough structure-similarity information for noise/artifact suppression. To improve its clinical feasibility, in this study we further optimize the parallelization of NLM filtering by avoiding the repeated computation with the row-wise intensity calculation and the symmetry weight calculation. The shared memory with fast I/O speed is also used in row-wise intensity calculation for the proposed method. Quantitative experiment demonstrates that significant acceleration can be achieved with respect to the traditional straight pixel-wise parallelization.
机译:低剂量CT(LDCT)图像通常由于斑驳噪声/伪影的严重增加而大大降低,这可能导致临床诊断准确性降低。通过利用LDCT图像中的大规模补丁相似性信息,非本地均值(NLM)过滤可以有效地去除斑驳的噪声/伪像。但是,LDCT成像中的NLM滤波应用也需要很高的计算成本,因为通常需要使用大搜索窗口中的密集补丁相似度计算来包括足够的结构相似度信息,以抑制噪声/伪影。为了提高其临床可行性,在本研究中,我们通过避免重复使用行方向强度计算和对称权重计算来进一步优化NLM滤波的并行化。该方法在行强度计算中也使用了具有快速I / O速度的共享内存。定量实验表明,相对于传统的直像素并行,可以实现显着的加速。

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