图像分割使用通用,快速和非参数的方法

C. Fiorio, R. Nock
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引用次数: 4

摘要

我们研究了区域合并的图像分割方法。给定任意区域之间的相似性度量,在满足一些弱约束的情况下,我们给出了在分割过程中回答两个区域是否合并的一般谓词。我们的谓词是泛型的,有六个属性。第一个是它相对于相似性度量的独立性,这导致了一个独立于用户和自适应的谓词。其次,它是非参数的,不依赖于任何关于图像的假设。第三,由于其弱约束,知识可以包含在谓词中以更好地适应用户的行为。第四,如果用户很好地选择了相似度,我们就能够在图像分割过程中对一种错误进行上限处理。第五,它不依赖于特定的分割算法,可以与几乎所有的区域合并算法在不同的应用领域中使用。第六,它的计算速度快,并且可以导致适当的算法非常有效的分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image segmentation using a generic, fast and non-parametric approach
We investigate image segmentation by region merging. Given any similarity measure between regions, satisfying some weak constraints, we give a general predicate for answering if two regions are to be merged or not during the segmentation process. Our predicate is generic and has six properties. The first one is its independence with respect to the similarity measure, that leads to a user-independent and adaptative predicate. Second, it is non-parametric, and does not rely on any assumption concerning the image. Third, due to its weak constraints, knowledge may be included in the predicate to fit better to the user's behaviour. Fourth, provided the similarity is well chosen by the user, we are able to upperbound one type of error made during the image segmentation. Fifth, it does not rely on a particular segmentation algorithm and can be used with almost all region merging algorithms in various application domains. Sixth, it is calculated quickly, and can lead with appropriated algorithms to very efficient segmentation.
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