Transductive Zero-shot Learning with New Semantic Embeddings

Junming Zhang, Junfeng Cui, Wenbin Zhang, Donglin Wang, Haibing Li, Yi Zhang
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Abstract

Zero-shot learning (ZSL) is an important machine learning paradigm that trains models to handle samples from classes that are unseen during training. Most ZSL methods transfer knowledge about the seen to unseen classes using some semantic representations, such as annotated attribute vectors or word embeddings. However, such information is either difficult to acquire or lack of linkage to visual information. We thus propose a novel transductive ZSL paradigm that makes use of feature maps to distill less expensive but more informative semantic embeddings of seen and unseen classes. Experimental results on different datasets show that this method can significantly improve the performance compared to the latest ZSL models.
基于新语义嵌入的换能性零次学习
零射击学习(Zero-shot learning, ZSL)是一种重要的机器学习范式,它训练模型来处理训练过程中未见过的类的样本。大多数ZSL方法使用一些语义表示(如带注释的属性向量或词嵌入)将关于可见类的知识转移到不可见类。然而,这些信息要么难以获取,要么缺乏与视觉信息的联系。因此,我们提出了一种新的转导式ZSL范式,该范式利用特征映射提取可见类和不可见类的成本较低但信息量更大的语义嵌入。在不同数据集上的实验结果表明,与最新的ZSL模型相比,该方法可以显著提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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