基于改进并行非局部均值滤波的低剂量CT图像快速处理

Zhikun Zhuang, Yang Chen, H. Shu, L. Luo, C. Toumoulin, J. Coatrieux
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引用次数: 3

摘要

低剂量CT (LDCT)虽然有效地减少了患者的辐射暴露,但由于严重增加的斑驳噪声/伪影,低剂量CT图像通常会显着降低,这可能导致临床诊断准确性降低。非局部均值滤波(nonlocal means, NLM)利用LDCT图像中大规模的斑块相似度信息,可以有效地去除斑点噪声/伪影。但NLM滤波在LDCT成像中的应用也伴随着较高的计算成本,因为为了抑制噪声/伪影,通常需要一个大的搜索窗口来包含大量的相邻信息。为了加快NLM滤波的速度并提高其临床可行性,本文提出了一种改进的基于gpu的并行化方法。除了直接的像素并行化之外,改进的并行化方法还利用了GPU共享内存的高I/O速度。定量实验表明,与传统的逐像素并行化相比,该方法实现了显著的加速。
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Fast Low-Dose CT Image Processing Using Improved Parallelized Nonlocal Means Filtering
Although effectively reducing the radiation exposure to patients, 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 is also accompanied with high computation cost as a large searching window is often required to include much neighboring information for noise/artifact suppression. To accelerate the NLM filtering and improve its clinical feasibility, we propose in this paper an improved GPUbased parallelization approach. In addition to the straight pixel wise parallelization, the improved parallelization approach exploits the high I/O speed of GPU shared memory. Quantitative experiment demonstrates that significant acceleration is achieved with respect to the traditional pixel-wise parallelization.
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