Joint space-time image sequence segmentation based on volume competition and level sets

Mirko Ristivojevic, J. Konrad
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引用次数: 14

Abstract

We address the issue of joint space-time segmentation of image sequences. Typical approaches to such segmentation consider two image frames at a time, and perform tracking of individual segments across time. We propose to perform this segmentation jointly over multiple frames. This leads to a 3D segmentation, i.e., a search for a volume "carved out" by a moving object in the (3D) image sequence domain. We pose the problem in a Bayesian framework and use the MAP criterion. Under suitable structural and segmentation/motion models we convert MAP estimation to a functional minimization. The resulting problem can be viewed as volume competition, a 3D generalization of region competition. We parameterize the unknown surface to be estimated, but rather than solving for it using an active-surface approach, we embed it into a higher-dimensional function and use the level-set methodology. We show experimental results for the simpler case of object motion against a still background although, given suitable models, the general formulation can handle complex motion too.
基于体积竞争和水平集的空时图像序列联合分割
研究了图像序列的联合时空分割问题。这种分割的典型方法一次考虑两个图像帧,并跨时间执行单个片段的跟踪。我们建议在多个帧上联合执行此分割。这导致了3D分割,即在(3D)图像序列域中搜索由移动对象“雕刻”出来的体积。我们在贝叶斯框架中提出问题,并使用MAP准则。在合适的结构和分割/运动模型下,我们将MAP估计转换为函数最小化。由此产生的问题可以看作是体积竞争,是区域竞争的三维泛化。我们参数化待估计的未知曲面,但不是使用活动曲面方法求解它,而是将其嵌入到高维函数中并使用水平集方法。我们展示了在静止背景下物体运动的简单情况下的实验结果,尽管给定合适的模型,一般公式也可以处理复杂的运动。
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