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Kernel Density Estimation and Intrinsic Alignment for Knowledge-Driven Segmentation: Teaching Level Sets to Walk

机译:知识驱动的细分的内核密度估计和本征比对:行走的教学水平集

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We address the problem of image segmentation with statistical shape priors in the context of the level set framework. Our paper makes two contributions: Firstly, we propose a novel multi-modal statistical shape prior which allows to encode multiple fairly distinct training shapes. This prior is based on an extension of classical kernel density estimators to the level set domain. Secondly, we propose an intrinsic registration of the evolving level set function which induces an invariance of the proposed shape energy with respect to translation. We demonstrate the advantages of this multi-modal shape prior applied to the segmentation and tracking of a partially occluded walking person.
机译:我们在水平集框架的背景下解决了具有统计形状先验的图像分割问题。我们的论文有两个贡献:首先,我们提出了一种新颖的多模态统计形状,该形状可以对多个相当不同的训练形状进行编码。该先验是基于经典核密度估计器到水平集域的扩展。其次,我们提出了演化水平集函数的内在配准,该内在配准引起了拟议形状能相对于平移的不变性。我们演示了此多模式形状的优势,适用于对部分被遮挡的步行者进行细分和跟踪。

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