Large-Scale Few-Shot Learning: Knowledge Transfer With Class Hierarchy

Aoxue Li, Tiange Luo, Zhiwu Lu, T. Xiang, Liwei Wang
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引用次数: 105

Abstract

Recently, large-scale few-shot learning (FSL) becomes topical. It is discovered that, for a large-scale FSL problem with 1,000 classes in the source domain, a strong baseline emerges, that is, simply training a deep feature embedding model using the aggregated source classes and performing nearest neighbor (NN) search using the learned features on the target classes. The state-of-the-art large-scale FSL methods struggle to beat this baseline, indicating intrinsic limitations on scalability. To overcome the challenge, we propose a novel large-scale FSL model by learning transferable visual features with the class hierarchy which encodes the semantic relations between source and target classes. Extensive experiments show that the proposed model significantly outperforms not only the NN baseline but also the state-of-the-art alternatives. Furthermore, we show that the proposed model can be easily extended to the large-scale zero-shot learning (ZSL) problem and also achieves the state-of-the-art results.
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大规模的少镜头学习:类层次的知识转移
近年来,大规模的少数镜头学习(FSL)成为热门话题。研究发现,对于源域中有1000个类的大规模FSL问题,出现了一个强基线,即简单地使用聚合的源类训练深度特征嵌入模型,并使用学习到的特征在目标类上进行最近邻(NN)搜索。最先进的大规模FSL方法很难超过这个基线,这表明了可伸缩性的内在局限性。为了克服这一挑战,我们提出了一种新的大规模FSL模型,该模型通过类层次结构学习可转移的视觉特征,对源类和目标类之间的语义关系进行编码。大量的实验表明,所提出的模型不仅明显优于神经网络基线,而且优于最先进的替代方案。此外,我们证明了所提出的模型可以很容易地扩展到大规模零射击学习(ZSL)问题,并且也达到了最先进的结果。
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