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Reduction of noise-induced streak artifacts in X-ray computed tomography through penalized-likelihood sinogram smoothing

机译:通过惩罚似然正弦图平滑化减少X射线计算机断层扫描中噪声引起的条纹伪影

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We present a statistically principled sinogram smoothing approach for X-ray computed tomography (CT) with the intent of reducing noise-induced streak artifacts. Noise-induced streak artifacts arise in CT when some subset of the transmission measurements capture relatively few photons because of high attenuation along the measurement lines. Attempts to reduce these artifacts have focused on the use of adaptive filters that attempt to tailor the degree of smoothing to the local noise levels in the measurements. While these approaches involve loose consideration of the measurement statistics to determine smoothing levels, they are not explicitly statistical methods in that they do not explicitly model the statistical distribution of the measurement data. In this work, we present an explicitly statistical approach to sinogram smoothing in the presence of photon-starved measurements. It is an extension of a nonparametric sinogram smoothing approach using penalized Poisson likelihood functions that we have previously developed for emission tomography. Because the approach explicitly models the data statistics it is naturally adaptive - it will smooth more variable measurements more heavily than it does less variable measurements. We find that it significantly reduces streak artifacts and noise levels without comprising image resolution.
机译:我们提出用于X射线计算机断层扫描(CT)的统计原理正弦图平滑方法,目的是减少噪声引起的条纹伪影。当某些传输测量子集捕获相对较少的光子时,由于沿测量线的高衰减,在CT中会出现噪声引起的条纹伪影。减少这些伪像的尝试集中在自适应滤波器的使用上,这些滤波器试图使平滑度适应测量中的局部噪声水平。尽管这些方法涉及宽松地考虑测量统计以确定平滑级别,但它们不是显式统计方法,因为它们未显式对测量数据的统计分布建模。在这项工作中,我们提出了一种在光子匮乏的测量条件下进行正弦图平滑化的显式统计方法。它是使用我们先前为发射断层扫描开发的惩罚化泊松似然函数的非参数正弦图平滑方法的扩展。因为该方法显式地对数据统计数据进行建模,所以它自然是自适应的-与可变性较小的度量相比,它将使更多可变性的度量平滑得多。我们发现,它在不影响图像分辨率的情况下,可以显着减少条纹伪影和噪声水平。

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