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在复杂 CT 影像的三维分割和分类中,去噪和减少伪影的相关性。

On the relevance of denoising and artefact reduction in 3D segmentation and classification within complex computed tomography imagery.

机构信息

School of Engineering, Cranfield University, Bedfordshire, UK.

Department of Computer Science / Engineering, Durham University, Durham, UK.

出版信息

J Xray Sci Technol. 2019;27(1):51-72. doi: 10.3233/XST-180411.

DOI:10.3233/XST-180411
PMID:30347634
Abstract

We evaluate the impact of denoising and Metal Artefact Reduction (MAR) on 3D object segmentation and classification in low-resolution, cluttered dual-energy Computed Tomography (CT). To this end, we present a novel 3D materials-based segmentation technique based on the Dual-Energy Index (DEI) to automatically generate subvolumes for classification. Subvolume classification is performed using an extension of Extremely Randomised Clustering (ERC) forest codebooks, constructed using dense feature-point sampling and multiscale Density Histogram (DH) descriptors. Within this experimental framework, we evaluate the impact on classification accuracy and computational expense of pre-processing by intensity thresholding, Non-Local Means (NLM) filtering, Linear Interpolation-based MAR (LIMar) and Distance-Driven MAR (DDMar) in the domain of 3D baggage security screening. We demonstrate that basic NLM filtering, although removing fewer artefacts, produces state-of-the-art classification results comparable to the more complex DDMar but at a significant reduction in computational cost - bringing into question the importance (in terms of automated CT analysis) of computationally expensive artefact reduction techniques. Overall, it was found that the use of MAR pre-processing approaches produced only a marginal improvement in classification performance (< 1%) at considerable additional computational cost (> 10×) when compared to NLM pre-processing.

摘要

我们评估了去噪和金属伪影减少(MAR)对低分辨率、杂乱的双能计算机断层扫描(CT)中 3D 物体分割和分类的影响。为此,我们提出了一种新颖的基于 3D 材料的分割技术,该技术基于双能指数(DEI)自动生成用于分类的子体积。子体积分类使用扩展的极端随机聚类(ERC)森林代码本进行,该代码本使用密集特征点采样和多尺度密度直方图(DH)描述符构建。在这个实验框架内,我们评估了在 3D 行李安全检查领域中,通过强度阈值处理、非局部均值(NLM)滤波、基于线性插值的 MAR(LIMar)和距离驱动的 MAR(DDMar)进行预处理对分类准确性和计算费用的影响。我们证明,基本的 NLM 滤波虽然去除的伪影较少,但可以产生与更复杂的 DDMar 相当的最新分类结果,而计算成本却大大降低——这使得在自动 CT 分析方面,昂贵的去伪影技术的重要性受到质疑。总体而言,与 NLM 预处理相比,MAR 预处理方法的使用仅在分类性能上有较小的提高(<1%),但计算成本却显著增加(>10 倍)。

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