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Computing Probabilistic Optical Flow Using Markov Random Fields

机译:使用Markov随机字段计算概率光学流量

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Optical flow methods are often used in image processing, for example for object recognition and image segmentation. Traditional optical flow methods use numerical methods, assuming intensity constancy of pixels' movements. In this work we describe a probabilistic method of modeling the optical flow problem, and discuss the use of Gibbs sampling for optimization of the computed optical flow vector field. In experiments involving test images as well as medical image slices through the short-axis of the left ventricle of the heart, our probabilistic method is compared with the classic Horn-Schunck optical flow method. We demonstrate that our proposed approach probabilistic optical flow method is robust to changes in the shape and intensity of objects tracked. This is a useful property when identifying cardiac structures from time-resolved medical images of the heart, where the shape of the cardiac structures change between consecutive temporal frames of the cardiac cycle.
机译:光学流方法通常用于图像处理,例如用于对象识别和图像分割。传统的光学流量方法使用数值方法,假设像素运动的强度恒定。在这项工作中,我们描述了一种模拟光学流动问题的概率方法,并探讨了GIBBS采样来优化计算光流量矢量场的应用。在涉及测试图像的实验中以及通过心脏左心室的短轴的医学图像切片,我们的概率方法与经典的喇叭静克光学流量进行比较。我们证明我们所提出的方法概率光学流量方法是鲁棒的,以跟踪物体的形状和强度的变化。这是识别心脏的时间分辨医学图像的心脏结构时的有用财产,其中心脏结构的形状在心脏周期的连续时间帧之间变化。

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