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Shape Priors for Level Set Representations

机译:级别设置表示的形状前视图

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Level Set Representations, the pioneering framework introduced by Osher and Sethian [14] is the most common choice for the implementation of variational frameworks in Computer Vision since it is implicit, intrinsic, parameter and topology free. However, many Computer vision applications refer to entities with physical meanings that follow a shape form with a certain degree of variability. In this paper, we propose a novel energetic form to introduce shape constraints to level set representations. This formulation exploits all advantages of these representations resulting on a very elegant approach that can deal with a large number of parametric as well as continuous transformations. Furthermore, it can be combined with existing well known level set-based segmentation approaches leading to paradigms that can deal with noisy, occluded and missing or physically corrupted data. Encouraging experimental results are obtained using synthetic and real images.
机译:级别设置表示,由Osher和Sethian引入的先驱框架[14]是最常见的选择计算机视觉中变分框架,因为它是隐含的,内在的,参数和拓扑。然而,许多电脑视觉应用程序指的是具有遵循具有一定程度的变异性的形状形式的物理意义。在本文中,我们提出了一种新颖的精力表单来引入形状约束来级别设定表示。该配方利用这些表示的所有优点导致非常优雅的方法,可以处理大量参数以及连续变换。此外,它可以与现有的基于众所周知的基于级别的分段方法相结合,导致范式可以处理嘈杂,遮挡和缺失或物理损坏的数据。使用合成和真实图像获得令人振奋的实验结果。

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