Exemplar-Driven Top-Down Saliency Detection Via Deep Association

2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2016)

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摘要
Top-down saliency detection is a knowledge-driven search task. While some previous methods aim to learn this "knowledge" from category-specific data, others transfer existing annotations in a large dataset through appearance matching. In contrast, we propose in this paper a locate-by-exemplar strategy. This approach is challenging, as we only use a few exemplars (up to 4) and the appearances among the query object and the exemplars can be very different. To address it, we design a two-stage deep model to learn the intra-class association between the exemplars and query objects. The first stage is for learning object-to-object association, and the second stage is to learn background discrimination. Extensive experimental evaluations show that the proposed method outperforms different baselines and the category-specific models. In addition, we explore the influence of exemplar properties, in terms of exemplar number and quality. Furthermore, we show that the learned model is a universal model and offers great generalization to unseen objects.
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关键词
exemplar-driven top-down saliency detection,deep association,knowledge-driven search task,appearance matching,locate-by-exemplar strategy,query object,two-stage deep model,intraclass association,object-to-object association learning,category-specific models,exemplar number
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