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Significance Tests and Statistical Inequalities for Segmentation by Region Growing on Graph

机译:图上区域增长分割的显着性检验和统计不等式

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摘要

Bottom-up segmentation methods merge similar neighboring regions according to a decision rule and a merging order. In this paper, we propose a contribution for each of these two points. Firstly, under statistical hypothesis of similarity, we provide an improved decision rule for region merging based on significance tests and the recent statistical inequality of McDiarmid. Secondly, we propose a dynamic merging order based on our merging predicate. This last heuristic is justified by considering an energy minimisation framework. Experimental results on both natural and medical images show the validity of our method.
机译:自下而上的分割方法根据决策规则和合并顺序合并相似的相邻区域。在本文中,我们对这两点都提出了建议。首先,在相似性的统计假设下,我们基于显着性检验和最近的McDiarmid统计不等式,为区域合并提供了改进的决策规则。其次,我们基于合并谓词提出了动态合并顺序。通过考虑能源最小化框架可以证明这是最后的启发。在自然和医学图像上的实验结果证明了我们方法的有效性。

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