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Motion competition: A variational approach to piecewise parametric motion segmentation

机译:运动竞赛:分段参数运动分割的变分方法

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摘要

We present a novel variational approach for segmenting the image plane into a set of regions of parametric motion on the basis of two consecutive frames from an image sequence. Our model is based on a conditional probability for the spatio-temporal image gradient, given a particular velocity model, and on a geometric prior on the estimated motion field favoring motion boundaries of minimal length.Exploiting the Bayesian framework, we derive a cost functional which depends on parametric motion models for each of a set of regions and on the boundary separating these regions. The resulting functional can be interpreted as an extension of the Mumford-Shah functional from intensity segmentation to motion segmentation. In contrast to most alternative approaches, the problems of segmentation and motion estimation are jointly solved by continuous minimization of a single functional. Minimizing this functional with respect to its dynamic variables results in an eigenvalue problem for the motion parameters and in a gradient descent evolution for the motion discontinuity set.We propose two different representations of this motion boundary: an explicit spline-based implementation which can be applied to the motion-based tracking of a single moving object, and an implicit multiphase level set implementation which allows for the segmentation of an arbitrary number of multiply connected moving objects.Numerical results both for simulated ground truth experiments and for real-world sequences demonstrate the capacity of our approach to segment objects based exclusively on their relative motion.
机译:我们提出了一种新颖的变体方法,用于根据图像序列中的两个连续帧将图像平面分割为一组参量运动区域。我们的模型基于给定特定速度模型的时空图像梯度的条件概率,并基于估计的运动场的几何先验,有利于最小长度的运动边界。利用贝叶斯框架,我们得出了一个成本函数取决于一组区域中每个区域的参数运动模型以及分隔这些区域的边界。所得到的功能可以解释为Mumford-Shah功能从强度分割到运动分割的扩展。与大多数替代方法相反,分段和运动估计的问题是通过单个功能的连续最小化共同解决的。相对于其动态变量最小化此功能会导致运动参数的特征值问题以及运动不连续集的梯度下降演化。我们提出了该运动边界的两种不同表示形式:可以应用的基于样条的显式实现单个运动物体的基于运动的跟踪,以及隐式多相水平集实现,该实现可以分割任意数量的多重连接的运动物体。模拟地面真实性实验和真实世界序列的数值结果均表明我们仅根据对象的相对运动来分割对象的能力。

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