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Hard Negative Mining for Metric Learning Based Zero-Shot Classification

机译:基于度量学习的零击分类的硬消耗挖掘

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Zero-Shot learning has been shown to be an efficient strategy for domain adaptation. In this context, this paper builds on the recent work of Bucher et al., which proposed an approach to solve Zero-Shot classification problems (ZSC) by introducing a novel metric learning based objective function. This objective function allows to learn an optimal embedding of the attributes jointly with a measure of similarity between images and attributes. This paper extends their approach by proposing several schemes to control the generation of the negative pairs, resulting in a significant improvement of the performance and giving above state-of-the-art results on three challenging ZSC datasets.
机译:已显示零拍学习是域适应的有效策略。在这种情况下,本文建立了Bucher等人的最新工作。,这提出了一种通过引入基于新的公制学习的目标函数来解决零拍分类问题(ZSC)的方法。该目标函数允许在图像和属性之间的相似性中共同地学习最佳嵌入属性。本文通过提出多个方案来扩展其方法来控制负对对的产生,导致性能的显着改善,并在三个具有挑战性的ZSC数据集上提供最先进的结果。

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