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Multi-label Zero-shot Classification by Learning to Transfer from External Knowledge (2007.15610v2)

Published 30 Jul 2020 in cs.CV

Abstract: Multi-label zero-shot classification aims to predict multiple unseen class labels for an input image. It is more challenging than its single-label counterpart. On one hand, the unconstrained number of labels assigned to each image makes the model more easily overfit to those seen classes. On the other hand, there is a large semantic gap between seen and unseen classes in the existing multi-label classification datasets. To address these difficult issues, this paper introduces a novel multi-label zero-shot classification framework by learning to transfer from external knowledge. We observe that ImageNet is commonly used to pretrain the feature extractor and has a large and fine-grained label space. This motivates us to exploit it as external knowledge to bridge the seen and unseen classes and promote generalization. Specifically, we construct a knowledge graph including not only classes from the target dataset but also those from ImageNet. Since ImageNet labels are not available in the target dataset, we propose a novel PosVAE module to infer their initial states in the extended knowledge graph. Then we design a relational graph convolutional network (RGCN) to propagate information among classes and achieve knowledge transfer. Experimental results on two benchmark datasets demonstrate the effectiveness of the proposed approach.

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Authors (7)
  1. He Huang (97 papers)
  2. Yuanwei Chen (2 papers)
  3. Wei Tang (135 papers)
  4. Wenhao Zheng (27 papers)
  5. Qing-Guo Chen (19 papers)
  6. Yao Hu (106 papers)
  7. Philip Yu (22 papers)
Citations (13)