From co-saliency detection to object co-segmentation: A unified multi-stage low-rank matrix recovery approach

Hao Chen, Panbing Wang, Ming Liu
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引用次数: 11

Abstract

Object co-segmentation aims to identify and segment the common objects among a set of similar images. Although various explorations have been done for the topic, two major problems still remain: (1) How to mitigate the influence of background disturbance of each image when we detect the common objects. (2) How to leverage common information of the image set optimally. To overcome the two problems, we resort to co-saliency detection and propose a novel framework, which utilizes multi-stage low-rank matrix recovery to eliminate the background and identify the common foregrounds. To address the first problem, we firstly use a conventional saliency detection model to get saliency maps of each image as initialization rather than directly dealing with all the images together; to address the second problem, we adopt low-rank matrix recovery to constrain the common foregrounds as the low-rank part, while the background interferences corresponds to the sparse noises. Besides, an effective refinement method is proposed to recover the spatial relationships among the segments. The extensive experiments show the proposed model can effectively leverage the homogeneous information among the image class and provide promising co-segmentation performance.
从共显著性检测到目标共分割:一种统一的多阶段低秩矩阵恢复方法
目标共分割的目的是在一组相似的图像中识别和分割出共同的目标。尽管对这一课题进行了各种各样的探索,但仍然存在两个主要问题:(1)如何在检测常见目标时减轻每张图像的背景干扰的影响。(2)如何最优地利用图像集的公共信息。为了克服这两个问题,我们采用了共显著性检测,并提出了一种新的框架,该框架利用多阶段低秩矩阵恢复来消除背景和识别共同前景。为了解决第一个问题,我们首先使用传统的显著性检测模型来获得每个图像的显著性映射作为初始化,而不是直接处理所有图像;为了解决第二个问题,我们采用低秩矩阵恢复来约束共同前景作为低秩部分,而背景干扰对应于稀疏噪声。在此基础上,提出了一种有效的分段空间关系恢复方法。大量的实验表明,该模型能够有效地利用图像类间的同质信息,并提供良好的共分割性能。
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