成像体模
背景(考古学)
虚假关系
算法
计算机科学
人工智能
噪音(视频)
医学影像学
计算机视觉
物理
图像(数学)
光学
机器学习
生物
古生物学
作者
Philipp Roser,Annette Birkhold,Alexander Preuhs,Christopher Syben,Lina Felsner,Elisabeth Hoppe,Norbert Strobel,Markus Kowarschik,Rebecca Fahrig,Andreas Maier
标识
DOI:10.1109/tmi.2021.3074712
摘要
X-ray scatter compensation is a very desirable technique in flat-panel X-ray imaging and cone-beam computed tomography. State-of-the-art U-net based scatter removal approaches yielded promising results. However, as there are no physics' constraints applied to the output of the U-Net, it cannot be ruled out that it yields spurious results. Unfortunately, in the context of medical imaging, those may be misleading and could lead to wrong conclusions. To overcome this problem, we propose to embed B-splines as a known operator into neural networks. This inherently constrains their predictions to well-behaved and smooth functions. In a study using synthetic head and thorax data as well as real thorax phantom data, we found that our approach performed on par with U-net when comparing both algorithms based on quantitative performance metrics. However, our approach not only reduces runtime and parameter complexity, but we also found it much more robust to unseen noise levels. While the U-net responded with visible artifacts, the proposed approach preserved the X-ray signal's frequency characteristics.
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