Distributed cosegmentation via submodular optimization on anisotropic diffusion

Gunhee Kim, E. Xing, Li Fei-Fei, T. Kanade
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引用次数: 311

Abstract

The saliency of regions or objects in an image can be significantly boosted if they recur in multiple images. Leveraging this idea, cosegmentation jointly segments common regions from multiple images. In this paper, we propose CoSand, a distributed cosegmentation approach for a highly variable large-scale image collection. The segmentation task is modeled by temperature maximization on anisotropic heat diffusion, of which the temperature maximization with finite K heat sources corresponds to a K-way segmentation that maximizes the segmentation confidence of every pixel in an image. We show that our method takes advantage of a strong theoretic property in that the temperature under linear anisotropic diffusion is a submodular function; therefore, a greedy algorithm guarantees at least a constant factor approximation to the optimal solution for temperature maximization. Our theoretic result is successfully applied to scalable cosegmentation as well as diversity ranking and single-image segmentation. We evaluate CoSand on MSRC and ImageNet datasets, and show its competence both in competitive performance over previous work, and in much superior scalability.
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基于各向异性扩散的次模优化分布共分割
如果图像中的区域或对象在多个图像中重复出现,则可以显著增强其显著性。利用这一思想,共分割将多个图像中的共同区域分割出来。在本文中,我们提出了CoSand,一种用于高度可变的大规模图像集合的分布式共分割方法。该分割任务采用各向异性热扩散的温度最大化模型,其中有限K个热源的温度最大化对应于K-way分割,使图像中每个像素的分割置信度最大化。我们的方法利用了一个很强的理论性质,即线性各向异性扩散下的温度是一个次模函数;因此,贪心算法至少保证了温度最大化最优解的常数因子近似值。我们的理论结果已成功地应用于可扩展共分割、多样性排序和单幅图像分割。我们在MSRC和ImageNet数据集上对CoSand进行了评估,并展示了它在竞争性能和可扩展性方面的能力。
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