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Multi-Label Zero-Shot Learning With Transfer-Aware Label Embedding Projection

机译:具有转移感知标签嵌入投影的多标签零射击学习

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Zero-Shot learning (ZSL) recently has drawn a lot of attention due to its ability to transfer knowledge from seen classes to novel unseen classes, which greatly reduces human labor of labelling data for building new classifiers. Much effort on ZSL however has focused on the standard multi-class setting, the more challenging multi-label zero-shot problem has received limited attention. In this paper, we propose a transfer-aware embedding projection approach to tackle multi-label zero-shot learning. The approach projects the label embedding vectors into a low-dimensional space to induce better inter-label relationships and explicitly facilitate information transfer from seen labels to unseen labels, while simultaneously learning a max-margin multi-label classifier with the projected label embeddings. Auxiliary information can be conveniently incorporated to guide the label embedding projection to further improve label relation structures for zero-shot knowledge transfer. We conduct experiments for both standard zero-shot multi-label image classification and generalized zero-shot multi-label classification. The results demonstrate the efficacy of the proposed approach.
机译:零射击学习(ZSL)最近由于其将知识从可见类转移到新型看不见类的能力而备受关注,这极大地减少了为建立新的分类器标记数据的工作量。但是,在ZSL上的很多努力都集中在标准多类别设置上,更具挑战性的多标签零击问题受到的关注有限。在本文中,我们提出了一种转移感知的嵌入投影方法来解决多标签零镜头学习。该方法将标签嵌入向量投影到一个低维空间中,以诱导更好的标签间关系,并显着促进信息从可见标签转移到不可见标签,同时通过投影标签嵌入来学习最大利润的多标签分类器。可以方便地合并辅助信息,以指导标签嵌入投影,以进一步改善零关联知识转移的标签关系结构。我们针对标准零镜头多标签图像分类和广义零镜头多标签图像分类进行实验。结果证明了该方法的有效性。

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