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Markov random field segmentation for industrial computed tomography with metal artefacts

机译:具有金属伪像的工业计算机断层扫描的马尔可夫随机场分割

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摘要

X-ray Computed Tomography (XCT) has become an important tool for industrial measurement and quality control through its ability to measure internal structures and volumetric defects. Segmentation of constituent materials in the volume acquired through XCT is one of the most critical factors that influence its robustness and repeatability. Highly attenuating materials such as steel can introduce artefacts in CT images that adversely affect the segmentation process, and results in large errors during quantification. This paper presents a Markov Random Field (MRF) segmentation method as a suitable approach for industrial samples with metal artefacts. The advantages of employing the MRF segmentation method are shown in comparison with Otsu thresholding on CT data from two industrial objects.
机译:X射线计算机断层扫描(XCT)通过测量内部结构和体积缺陷的能力已成为工业测量和质量控制的重要工具。通过XCT获得的体积中组成材料的细分是影响其鲁棒性和可重复性的最关键因素之一。高度衰减的材料(例如钢)会在CT图像中引入伪影,从而对分割过程产生不利影响,并在量化过程中导致较大的误差。本文提出了一种马尔可夫随机场(MRF)分割方法,作为一种适用于具有金属伪影的工业样品的方法。与对来自两个工业对象的CT数据进行Otsu阈值处理相比,显示了使用MRF分割方法的优势。

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