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A Robust Probabilistic Model for Motion Layer Separation in X-ray Fluoroscopy

机译:X射线荧光检查中运动层分离的鲁棒概率模型

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Fluoroscopic images are characterized by a transparent projection of 3-D structures from all depths to 2-D. Differently moving structures, for example due to breathing and heartbeat, can be described approximately using independently moving 2-D layers. Separating the fluoroscopic images into the motion layers is desirable to facilitate interpretation and diagnosis. Given the motion of each layer, it is state of the art to compute the layer separation by minimizing a least-squares objective function. However, due to high noise levels and inaccurate motion estimates, the results are not satisfactory in X-ray images. In this work, we propose a probabilistic model for motion layer separation. In this model, we analyze various data terms and regularization terms theoretically and experimentally. We show that a robust penalty function is required in the data term to deal with noise and shortcomings of the image formation model. For the regularization term, we propose to enforce smoothness of the layers using bilateral total variation. On synthetic data, the mean squared error between the estimated layers and the ground truth is improved by 18% compared to the state of the art. In addition, we show qualitative improvements on real X-ray data.
机译:透视图像的特征是从所有深度到2-D的3-D结构的透明投影。例如由于呼吸和心跳引起的不同运动的结构可以近似地使用独立运动的二维层来描述。期望将荧光镜图像分离到运动层中以促进解释和诊断。给定每一层的运动,通过最小化最小二乘目标函数来计算层间距是现有技术。但是,由于高噪声水平和不准确的运动估计,因此在X射线图像中的结果并不令人满意。在这项工作中,我们提出了运动层分离的概率模型。在此模型中,我们从理论上和实验上分析各种数据项和正则化项。我们表明,在数据项中需要鲁棒的罚函数来处理图像形成模型的噪声和缺点。对于正则化项,我们建议使用双边总变化来增强图层的平滑度。在合成数据上,与现有技术相比,估计层与地面真实度之间的均方误差提高了18%。此外,我们还展示了对真实X射线数据的定性改进。

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