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Parameter-Free Selective Segmentation With Convex Variational Methods

机译:凸变分方法的无参数选择性分割

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摘要

Selective segmentation methods involve incorporating user input to partition an image into a foreground and background. These methods are often sensitive to some aspect of the user input in a counter intuitive manner, making their use in practice difficult. The most robust methods often involve laborious refinement on the part of the user, and sometimes editing/supervision. The proposed method reduces the burden of the user by simplifying the requirements in the input. Specifically, the fitting term does not depend on a distance function, and so no selection parameter is introduced. Instead, we consider how the user input relates to some general intensity fitting term to ensure the approach is less sensitive to the decisions or intuition of the user. We give comparisons to existing approaches to show the advantages of the new selective segmentation model.
机译:选择性分割方法涉及合并用户输入以将图像分为前景和背景。这些方法通常以相反的直观方式对用户输入的某些方面敏感,从而使其在实践中难以使用。最健壮的方法通常涉及用户方面的艰苦改进,有时还涉及编辑/监督。所提出的方法通过简化输入中的要求来减轻用户的负担。具体而言,拟合项不依赖于距离函数,因此不引入选择参数。相反,我们考虑用户输入如何与某个通用强度拟合术语相关联,以确保该方法对用户的决策或直觉不太敏感。我们对现有方法进行了比较,以显示新的选择性细分模型的优势。

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