超分辨率压缩x射线断层成像的编码孔径设计

Edson Mojica, Said Pertuz, H. Arguello
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引用次数: 2

摘要

计算机断层扫描获得物体的内部结构。然而,在保持低辐射剂量的情况下获得准确的图像重建是一个具有挑战性的问题。为此,压缩感知已被研究以减少所需的测量次数。在这项工作中,我们提出了一种用于设计压缩感知计算机断层扫描的高分辨率编码孔径的算法。其目的是将高分辨率孔径与低分辨率探测器相结合,以实现超分辨率。该方法在压缩感知过程中编码孔径的均匀性约束下,采用梯度下降算法对随机编码孔径进行迭代改进。利用合成数据进行的计算实验表明,与随机编码孔径相比,设计编码孔径的CT图像重建质量显著提高,PSNR高达3dB。在不同的透射率和镜头下进行了进一步的仿真,以评估所提出方法的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coded aperture design for super-resolution compressive X-ray tomography
Computed tomography obtains the inner structure of an object. However, obtaining an accurate image reconstruction while keeping a low radiation dose is a challenging problem. For this purpose, compressed sensing has been studied to reduce the number of measurements required. In this work, we present an algorithm for the design of high-resolution coded apertures for compressed sensing computed tomography. The aim is to combine high-resolution apertures with low-resolution detectors in order to achieve super-resolution. To design the coded apertures, the proposed method iteratively improves random coded apertures using a gradient descending algorithm subject to constraints on the homogeneity induced by the coded aperture of the compressive sensing process. Computational experiments using synthetic data show a significant improvement in the quality of CT image reconstructions achieved with the designed coded apertures over the random coded apertures up to 3dB in terms of PSNR. Further simulations are performed with different transmittances and shots to assess the robustness of the proposed approach.
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