对象协同骨架化与协同分割

Koteswar Rao Jerripothula, Jianfei Cai, Jiangbo Lu, Junsong Yuan
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引用次数: 54

摘要

近年来在图像联合处理方面的进展已经显示出其相对于单独处理的优势。不同于现有的共同分割或共同定位的工作,本文探索了一个新的联合处理主题:共同骨架化,即在一组语义相似的图像中提取共同目标的联合骨架。现实世界图像中的物体骨架化是一个具有挑战性的问题,因为如果我们只考虑一张图像,就没有关于物体形状的先验知识。这促使我们求助于对象共骨架化的想法,希望类似图像之间存在的共性可以有所帮助,就像它对其他联合处理问题(如共分割)所做的那样。注意到骨架可以为分割提供良好的草稿,而骨架化反过来又需要良好的分割,我们提出了一个耦合框架,用于共同骨架化和共同分割任务,使它们相互了解,并相互协同受益。由于这是一个新问题,我们还为协同骨架化任务构建了一个基准数据集。大量的实验表明,该方法取得了很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Co-skeletonization with Co-segmentation
Recent advances in the joint processing of images have certainly shown its advantages over the individual processing. Different from the existing works geared towards co-segmentation or co-localization, in this paper, we explore a new joint processing topic: co-skeletonization, which is defined as joint skeleton extraction of common objects in a set of semantically similar images. Object skeletonization in real world images is a challenging problem, because there is no prior knowledge of the objects shape if we consider only a single image. This motivates us to resort to the idea of object co-skeletonization hoping that the commonness prior existing across the similar images may help, just as it does for other joint processing problems such as co-segmentation. Noting that skeleton can provide good scribbles for segmentation, and skeletonization, in turn, needs good segmentation, we propose a coupled framework for co-skeletonization and co-segmentation tasks so that they are well informed by each other, and benefit each other synergistically. Since it is a new problem, we also construct a benchmark dataset for the co-skeletonization task. Extensive experiments demonstrate that proposed method achieves very competitive results.
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