Image Segmentation by Bilayer Superpixel Grouping

M. Yang
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引用次数: 1

Abstract

The task of image segmentation is to group image pixels into visually meaningful objects. It has long been a challenging problem in computer vision and image processing. In this paper we address the segmentation as a super pixel grouping problem. We propose a novel graph-based segmentation framework which is able to integrate different cues from bilayer super pixels simultaneously. The key idea is that segmentation is formulated as grouping a subset of super pixels that partitions a bilayer graph over super pixels, with graph edges encoding super pixel similarity. We first construct a bipartite graph incorporating super pixel cue and long-range cue. Furthermore, mid-range cue is also incorporated in a hybrid graph model. Segmentation is solved by spectral clustering. Our approach is fully automatic, bottom-up, and unsupervised. We evaluate our proposed framework by comparing it to other generic segmentation approaches on the state-of-the-art benchmark database.
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基于双层超像素分组的图像分割
图像分割的任务是将图像像素分组为视觉上有意义的对象。长期以来,它一直是计算机视觉和图像处理领域的一个难题。在本文中,我们将分割作为一个超像素分组问题来解决。我们提出了一种新的基于图的分割框架,该框架能够同时整合来自双层超像素的不同线索。关键思想是,分割被表述为对超级像素的子集进行分组,该子集在超级像素上划分双层图,图边编码超级像素相似性。我们首先构造了一个包含超像素线索和远程线索的二部图。此外,还在混合图模型中加入了中程线索。采用谱聚类方法解决分割问题。我们的方法是全自动的,自下而上的,无监督的。我们通过将其与最先进的基准数据库上的其他通用分割方法进行比较来评估我们提出的框架。
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