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Shape Priors in Variational Image Segmentation: Convexity, Lipschitz Continuity and Globally Optimal Solutions

机译:变形图像分割中的形状前沿:凸,Lipschitz连续性和全球最佳解决方案

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In this work, we introduce a novel implicit representation of shape which is based on assigning to each pixel a probability that this pixel is inside the shape. This probabilistic representation of shape resolves two important drawbacks of alternative implicit shape representations such as the level set method: Firstly, the space of shapes is convex in the sense that arbitrary convex combinations of a set of shapes again correspond to a valid shape. Secondly, we prove that the introduction of shape priors into variational image segmentation leads to functionals which are convex with respect to shape deformations. For a large class of commonly considered (spatially continuous) functionals, we prove that - under mild regularity assumptions - segmentation and tracking with statistical shape priors can be performed in a globally optimal manner. In experiments on tracking a walking person through a cluttered scene we demonstrate the advantage of global versus local optimality.
机译:在这项工作中,我们介绍了一种基于分配给每个像素的形状的新颖隐式表示,该像素是该像素在形状内部的概率。这种形状的概率表示解决了诸如电平集的替代隐式形状表示的两个重要缺点:首先,在诱导中,形状的空间是凸出的,即一组形状再次对应于有效形状的任意凸组合。其次,我们证明将形状前置的引入变分图像分割导致相对于形状变形的凸起的功能。对于一大类常见的(空间连续的)功能,我们证明 - 根据温和的规律性假设 - 使用统计形状前沿的分割和跟踪可以以全局最佳的方式执行。在通过杂乱的场景跟踪行走人员的实验中,我们展示了全球与当地最优的优势。

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