基于机器学习的基于分析仪的相衬成像参数图像估计

Oriol Caudevilla, J. Brankov
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引用次数: 0

摘要

通过生物组织的x射线束被偏转(即折射)一个小的角度,通常< 10 μrad。基于分析仪的相位对比成像(ABI)系统能够通过采样光束在不同传播方向上的强度来测量这种微小的折射。分析仪晶体是这项任务的关键元素,因为它充当窄角滤波器。由于折射效应高度依赖于辐射波长,x射线束必须是准单色的。因此,到达物体和探测器的光子量比传统的射线照相要低得多。利用合理的曝光时间,获得了折射图像的噪声重构。在本文中,我们提出了一种机器学习参数图像估计方法,以从噪声原始数据中获得准确的折射图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning based parametric image estimation for Analyzer-based phase contrast imaging
An X-ray beam passing through biological tissue is deflected (i.e., refracted) by a small angle typically <;10 μrad. Analyzer-based phase contrast imaging (ABI) systems are capable of measuring this tinny refraction by sampling the intensity of the beam at different propagation directions. An Analyzer crystal is the key element for this task as it acts as a narrow angular filter. Since refraction effects are highly dependent of the radiation wavelength, X-ray beam must be quasi-monochromatic. Therefore the amount of photons that reach the object and detector is much lower then that in traditional radiography. Using a reasonable exposure time, noisy reconstructions of refraction images are obtained. In this manuscript, we present a machine learning parametric image estimation approach to obtain accurate refraction images from noisy raw data.
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