Co-localization in Real-World Images

Computer Vision and Pattern Recognition(2014)

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摘要
In this paper, we tackle the problem of co-localization in real-world images. Co-localization is the problem of simultaneously localizing (with bounding boxes) objects of the same class across a set of distinct images. Although similar problems such as co-segmentation and weakly supervised localization have been previously studied, we focus on being able to perform co-localization in real-world settings, which are typically characterized by large amounts of intra-class variation, inter-class diversity, and annotation noise. To address these issues, we present a joint image-box formulation for solving the co-localization problem, and show how it can be relaxed to a convex quadratic program which can be efficiently solved. We perform an extensive evaluation of our method compared to previous state-of-the-art approaches on the challenging PASCAL VOC 2007 and Object Discovery datasets. In addition, we also present a large-scale study of co-localization on ImageNet, involving ground-truth annotations for 3, 624 classes and approximately 1 million images.
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关键词
convex programming,object detection,quadratic programming,ImageNet,Object Discovery datasets,PASCAL VOC 2007 datasets,annotation noise,convex quadratic program,ground-truth annotations,interclass diversity,intraclass variation,joint image-box formulation,object colocalization problem,real-world images,Co-localization,Object Detection
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