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A Bilinear Model for Temporally Coherent Respiratory Motion

机译:暂时相干呼吸运动的双线性模型

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摘要

We propose a bilinear model of respiratory organ motion. The advantages of classical statistical shape modelling are combined with a preconditioned trajectory basis for separately modelling the shape and motion components of the data. The separation of a linear basis into bilinear form leads to a more compact representation of the underlying physical process and the resulting model respects the temporal regularity within the training data, which is an important property for modelling quasi-periodic data. Bilinear modelling is combined with a Bayesian reconstruction algorithm for sparse data under observation noise. By applying the model to liver motion data, we show that our bilinear formulation of respiratory motion is significantly more parsimonious and can even outperform linear PCA-based models.
机译:我们提出了呼吸器官运动的双线性模型。经典统计形状建模的优点与预处理的轨迹基础相结合,可以分别对数据的形状和运动分量进行建模。将线性基础分离为双线性形式会导致对基础物理过程的更紧凑表示,并且所得模型会尊重训练数据中的时间规律性,这对于建模准周期性数据而言是重要的属性。双线性建模与贝叶斯重构算法相结合,用于在观察噪声下稀疏数据。通过将该模型应用于肝脏运动数据,我们发现呼吸运动的双线性公式明显更简化,甚至可以胜过基于线性PCA的模型。

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