We propose to learn a probabilistic motion model from a sequence of images for spatio-temporal registration. Our model encodes motion in a low-dimensional probabilistic space - the motion matrix - which enables various motion analysis tasks such as simulation and interpolation of realistic motion patterns allowing for faster data acquisition and data augmentation. More precisely, the motion matrix allows to transport the recovered motion from one subject to another simulating for example a pathological motion in a healthy subject without the need for inter-subject registration. The method is based on a conditional latent variable model that is trained using amortized variational inference. This unsupervised generative model follows a novel multivariate Gaussian process prior and is applied within a temporal convolutional network which leads to a diffeomorphic motion model. Temporal consistency and generalizability is further improved by applying a temporal dropout training scheme. Applied to cardiac cine-MRI sequences, we show improved registration accuracy and spatio-temporally smoother deformations compared to three state-of-the-art registration algorithms. Besides, we demonstrate the model's applicability for motion analysis, simulation and super-resolution by an improved motion reconstruction from sequences with missing frames compared to linear and cubic interpolation.
翻译:我们建议从一个图像序列中学习一个概率运动模型,用于spatio-时空登记。我们的模型编码在一个低维概率空间(即运动矩阵)中运动,这样可以进行各种运动分析任务,例如模拟和对现实运动模式的内插,以便更快地获取数据并增加数据。更准确地说,运动矩阵允许将回收的运动从一个主体传送到另一个主体,例如将一个健康主题的病理运动传送到另一个主体,而不必进行相互登记。该方法基于一个条件性潜伏变异模型,该模型是使用分解变异感应法来训练的。这一不受监督的基因变异模型遵循一个创新的多变制过程,之前,并应用于一个时间变动网络,从而导致形成一种二变形运动模型模型模型模型模型模型。我们用一种缺失的模型模型模型模拟和模型间比对分辨率模型的模型分析,然后用一个缺失的线性模型模拟和线性模型比模型,然后用一个模型模型的模型比对分辨率模型进行测试。