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首页> 外文期刊>Journal of Scientific Computing >Nonlinear Dynamical Shape Priors for Level Set Segmentation
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Nonlinear Dynamical Shape Priors for Level Set Segmentation

机译:水平集分割的非线性动力学形状先验

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The introduction of statistical shape knowledge into level set based segmentation methods was shown to improve the segmentation of familiar structures in the presence of noise, clutter or partial occlusions. While most work has been focused on shape priors which are constant in time, it is clear that when tracking deformable shapes certain silhouettes may become more or less likely over time. In fact, the deformations of familiar objects such as the silhouettes of a walking person are often characterized by pronounced temporal correlations. In this paper, we propose a nonlinear dynamical shape prior for level set based image segmentation. Specifically, we propose to approximate the temporal evolution of the eigen-modes of the level set function by means of a mixture of autoregressive models. We detail how such shape priors "with memory" can be integrated into a variational framework for level set segmentation. As an application, we experimentally validate that the nonlinear dynamical prior drastically improves the tracking of a person walking in different directions, despite large amounts of clutter and noise.
机译:将统计形状知识引入基于水平集的分割方法中,可以改善存在噪声,混乱或部分遮挡的情况下熟悉结构的分割。虽然大多数工作都集中在时间上恒定的形状先验上,但很明显,当跟踪可变形形状时,某些轮廓可能会随着时间的流逝变得或多或少。实际上,诸如步行者的轮廓之类的熟悉物体的变形通常以明显的时间相关性为特征。在本文中,我们提出了一种基于水平集的图像分割的非线性动力学形状。具体来说,我们建议通过自回归模型的混合来近似水平集函数的本征模式的时间演化。我们将详细介绍如何将“具有记忆”的形状先验信息集成到用于级集分割的变体框架中。作为一种应用,我们通过实验验证了非线性动力学先验可以极大地改善人们在不同方向行走的跟踪能力,尽管存在许多杂波和噪声。

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