Object co-segmentation via discriminative low rank matrix recovery

Yong Li, J. Liu, Zechao Li, Yang Liu, Hanqing Lu
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引用次数: 7

Abstract

The goal of this paper is to simultaneously segment the object regions appearing in a set of images of the same object class, known as object co-segmentation. Different from typical methods, simply assuming that the regions common among images are the object regions, we additionally consider the disturbance from consistent backgrounds, and indicate not only common regions but salient ones among images to be the object regions. To this end, we propose a Discriminative Low Rank matrix Recovery (DLRR) algorithm to divide the over-completely segmented regions (i.e.,superpixels) of a given image set into object and non-object ones. In DLRR, a low-rank matrix recovery term is adopted to detect salient regions in an image, while a discriminative learning term is used to distinguish the object regions from all the super-pixels. An additional regularized term is imported to jointly measure the disagreement between the predicted saliency and the objectiveness probability corresponding to each super-pixel of the image set. For the unified learning problem by connecting the above three terms, we design an efficient optimization procedure based on block-coordinate descent. Extensive experiments are conducted on two public datasets, i.e., MSRC and iCoseg, and the comparisons with some state-of-the-arts demonstrate the effectiveness of our work.
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基于判别低秩矩阵恢复的目标共分割
本文的目标是同时分割同一目标类别的一组图像中出现的目标区域,称为目标共分割。与传统方法简单地假设图像之间共有的区域为目标区域不同,我们在此基础上考虑了来自一致背景的干扰,不仅将图像之间共有的区域作为目标区域,而且将图像之间显著的区域作为目标区域。为此,我们提出了一种判别性低秩矩阵恢复(Discriminative Low Rank matrix Recovery, DLRR)算法,将给定图像集的过完全分割区域(即超像素)划分为目标区域和非目标区域。在DLRR中,采用低秩矩阵恢复项检测图像中的显著区域,采用判别学习项从所有超像素中区分目标区域。引入一个额外的正则化项来共同度量图像集的每个超像素对应的预测显著性与客观概率之间的不一致。对于连接上述三个术语的统一学习问题,我们设计了一种基于块坐标下降的高效优化过程。在两个公共数据集(即MSRC和iCoseg)上进行了大量实验,并与一些最先进的数据集进行了比较,证明了我们工作的有效性。
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