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Reducing the X-ray phase contrast image bias via deep computed signal estimation technique

机译:通过深度计算信号估计技术减少X射线相位对比图像偏差

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Studies have shown that, the conventionally estimated visibility and differential phase signals in grating-based Talbot-Lau imaging system arc intrinsically biased signals. Since such bias arc mainly caused by applying the conventional signal estimation approach on noisy data, therefore, it remains an open question whether there has a better signal estimation method to reduce such bias. To answer this question, we proposed an end-to-end supervised deep computed signal estimation network (XP-NET) to extract the three unknown signals, i.e., the absorption, the dark-field, and the phase contrast. Numerical phase stepping data generated from natural images are utilized to train the network. Afterwards, both numerical and experimental studies are performed to validate the performance of the proposed XP-NET method. Results show that for high radiation dose levels, signals retrieved from the XP-NET method are identical as obtained from the conventional analytical method. However, the XP-NET method has the capability of reducing phase signal bias by as much as 15% when the radiation dose levels gets lower. As the phase signal becomes more unbiased, the phase images get more accurate.
机译:研究表明,在基于光栅的Talbot-Lau成像​​系统中,常规估计的可见性和差分相位信号是固有偏置信号。由于这样的偏置电弧主要是由对噪声数据应用常规信号估计方法引起的,因此,是否有更好的信号估计方法来减小这种偏置仍然是一个悬而未决的问题。为了回答这个问题,我们提出了一种端到端监督的深度计算信号估计网络(XP-NET),以提取三个未知信号,即吸收率,暗场和相位对比度。从自然图像产生的数字相位步进数据被用来训练网络。之后,进行了数值和实验研究,以验证所提出的XP-NET方法的性能。结果表明,对于高辐射剂量水平,从XP-NET方法获得的信号与从常规分析方法获得的信号相同。但是,当辐射剂量水平降低时,XP-NET方法具有将相位信号偏差降低15%的能力。随着相位信号变得更加无偏,相位图像将变得更加准确。

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