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Transferable Contrastive Network for Generalized Zero-Shot Learning

机译:广义零射击学习的可转移对比网络

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Zero-shot learning (ZSL) is a challenging problem that aims to recognize the target categories without seen data, where semantic information is leveraged to transfer knowledge from some source classes. Although ZSL has made great progress in recent years, most existing approaches are easy to overfit the sources classes in generalized zero-shot learning (GZSL) task, which indicates that they learn little knowledge about target classes. To tackle such problem, we propose a novel Transferable Contrastive Network (TCN) that explicitly transfers knowledge from the source classes to the target classes. It automatically contrasts one image with different classes to judge whether they are consistent or not. By exploiting the class similarities to make knowledge transfer from source images to similar target classes, our approach is more robust to recognize the target images. Experiments on five benchmark datasets show the superiority of our approach for GZSL.
机译:零镜头学习(ZSL)是一个具有挑战性的问题,旨在在没有可见数据的情况下识别目标类别,其中利用语义信息从某些源类别中转移知识。尽管ZSL近年来取得了长足的进步,但是大多数现有方法都容易在广义零击学习(GZSL)任务中过分适合源类,这表明他们对目标类的了解很少。为了解决这个问题,我们提出了一种新颖的可转移的对比网络(TCN),该网络将知识从源类显式地转移到目标类。它会自动对比一幅具有不同类别的图像,以判断它们是否一致。通过利用类的相似性,使知识从源图像转移到相似的目标类,我们的方法可以更可靠地识别目标图像。在五个基准数据集上进行的实验表明了我们的GZSL方法的优越性。

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