Unsupervised Joint Object Discovery and Segmentation in Internet Images

Michael Rubinstein, Armand Joulin, J. Kopf, Ce Liu
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引用次数: 370

Abstract

We present a new unsupervised algorithm to discover and segment out common objects from large and diverse image collections. In contrast to previous co-segmentation methods, our algorithm performs well even in the presence of significant amounts of noise images (images not containing a common object), as typical for datasets collected from Internet search. The key insight to our algorithm is that common object patterns should be salient within each image, while being sparse with respect to smooth transformations across other images. We propose to use dense correspondences between images to capture the sparsity and visual variability of the common object over the entire database, which enables us to ignore noise objects that may be salient within their own images but do not commonly occur in others. We performed extensive numerical evaluation on established co-segmentation datasets, as well as several new datasets generated using Internet search. Our approach is able to effectively segment out the common object for diverse object categories, while naturally identifying images where the common object is not present.
互联网图像中的无监督联合目标发现与分割
我们提出了一种新的无监督算法来从大量不同的图像集合中发现和分割出共同的对象。与以前的共同分割方法相比,我们的算法即使在存在大量噪声图像(不包含共同对象的图像)的情况下也表现良好,这是典型的从互联网搜索收集的数据集。我们算法的关键见解是,公共对象模式应该在每个图像中突出,而相对于其他图像的平滑转换是稀疏的。我们建议使用图像之间的密集对应关系来捕获整个数据库中常见对象的稀疏性和视觉可变性,这使我们能够忽略噪声对象,这些噪声对象可能在它们自己的图像中很突出,但在其他图像中并不常见。我们对已建立的共分割数据集以及使用互联网搜索生成的几个新数据集进行了广泛的数值评估。我们的方法能够有效地分割出不同对象类别的共同对象,同时自然地识别出不存在共同对象的图像。
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