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Surrogate-Driven Estimation of Respiratory Motion and Layers in X-Ray Fluoroscopy

机译:X射线荧光检查中呼吸运动和层的替代驱动估计

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Dense motion estimation in X-ray fluoroscopy is challenging due to low soft-tissue contrast and the transparent projection of 3-D information to 2-D. Motion layers have been introduced as an intermediate representation, but so far failed to generate plausible motions because their estimation is ill-posed. To attain plausible motions, we include prior information for each motion layer in the form of a surrogate signal. In particular, we extract a respiratory signal from the images using manifold learning and use it to define a surrogate-driven motion model. The model is incorporated into an energy minimization framework with smoothness priors to enable motion estimation. Experimentally, our method estimates 48% of the 2-D motion field on XCAT phantom data. On real X-ray sequences, the target registration error of manually annotated landmarks is reduced by 52%. In addition, we qualitatively show that a meaningful separation into motion layers is achieved.
机译:由于低的软组织对比度以及3D信息向2D的透明投影,因此X射线透视中的密集运动估计具有挑战性。运动层已被引入作为中间表示,但是到目前为止,由于它们的估计是不正确的,因此未能生成合理的运动。为了获得合理的运动,我们以替代信号的形式包括了每个运动层的先验信息。特别是,我们使用流形学习从图像中提取呼吸信号,并使用它来定义替代驱动的运动模型。将该模型结合到具有平滑先验的能量最小化框架中,以实现运动估计。实验上,我们的方法估计了XCAT幻象数据上的二维运动场的48%。在真实的X射线序列上,手动注释的地标的目标配准误差减少了52%。此外,我们定性地显示了实现了运动层之间有意义的分离。

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