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Sparse-view neutron-photon computed tomography: Object reconstruction and material discrimination

机译:稀疏视图中子 - 光子计算断层扫描:物体重建和物质歧视

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Abstract Taking into account the advantages of both neutron- and photon-based systems, we propose combined neutron-photon computed tomography (CT) under a sparse-view setting and demonstrate its performance for 3D object visualization and material discrimination. We use a high-performance regularization method for CT reconstruction by combining regularization based on total variation (TV) and curvelet transform in cone beam geometry. It is coupled with proposed 2D material signatures which is pairs of photon to neutron transmission ratios and neutron transmission values per object space voxels. Classification of materials is performed by association of a voxel signature with library signatures; and per object - by majority of voxels in the object. Representation of object-material pairs, for the model in our experiment, a complex scene with group of high-Z and low-Z materials, attains the reconstruction accuracy of 92.1% and the overall high-Z discrimination accuracy of object representation is 85%, and by about 7.5% higher discrimination accuracy than that with 1D signatures which are ratios of photon to neutron transmissions. With a relative noise level of 10%, the method yields the reconstruction accuracies of 87.2%. The analyses are performed in cone beam configuration, with Monte Carlo modeling of neutron-photon transport for the model of object geometry and material contents. Highlights ? Sparse-view cone-beam neutron-photon computed tomography is presented. ? A 2D signature based method is proposed for material discrimination. ? Full 3D object reconstruction in neutron-photon computed tomography is evaluated. ? A library is created for material identification purposes. ? A robust regularization model based on combination of total variation and the curvelet transform is introduced for CT reconstruction.
机译:摘要考虑到基于中子和光子的系统的优点,我们在稀疏视图设置下提出了组合中子光子计算机断层扫描(CT),并展示了其对3D对象可视化和材料辨别的性能。通过基于总变化(TV)和锥形光束几何的Curvelet变换,使用基于总变化(TV)和Curvelet变换来使用高性能正则化方法进行CT重建。它与所提出的2D材料签名相耦合,该材料签名是每对物体空间体素的中子透射比和中子透射值对的光子对。通过与图书馆签名的体素签名的关联进行材料的分类;并且每个物体 - 对象中的大多数体素。对象材料对的表示,对于我们的实验中的模型,具有高Z和低Z材料组的复杂场景,达到了92.1%的重建精度,对象表示的总体高Z歧视精度为85% ,辨别精度高出约7.5%,具有1D签约,其具有光子与中子传输的比例。具有10%的相对噪声水平,该方法产生87.2%的重建精度。分析以锥形光束配置执行,具有用于物体几何形状和材料内容的模型的中子光子传输的蒙特卡罗建模。强调 ?稀疏 - 查看锥形光束中子 - 光子计算断层扫描。还提出了一种基于2D签名的方法,用于物质歧视。还评估中子光子计算断层扫描中的全3D对象重建。还为材料识别目的创建一个库。还引入了基于总变化和曲线变换的组合的鲁棒正则化模型,用于CT重建。

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