arXiv Analytics

Sign in

arXiv:1812.06423 [cs.CV]AbstractReferencesReviewsResources

Classifier and Exemplar Synthesis for Zero-Shot Learning

Soravit Changpinyo, Wei-Lun Chao, Boqing Gong, Fei Sha

Published 2018-12-16Version 1

Zero-shot learning (ZSL) enables solving a task without the need to see its examples. In this paper, we propose two ZSL frameworks that learn to synthesize parameters for novel unseen classes. First, we propose to cast the problem of ZSL as learning manifold embeddings from graphs composed of object classes, leading to a flexible approach that synthesizes "classifiers" for the unseen classes. Then, we define an auxiliary task of synthesizing "exemplars" for the unseen classes to be used as an automatic denoising mechanism for any existing ZSL approaches or as an effective ZSL model by itself. On five visual recognition benchmark datasets, we demonstrate the superior performances of our proposed frameworks in various scenarios of both conventional and generalized ZSL. Finally, we provide valuable insights through a series of empirical analyses, among which are a comparison of semantic representations on the full ImageNet benchmark as well as a comparison of metrics used in generalized ZSL. Our code and data are publicly available at https://github.com/pujols/Zero-shot-learning-journal

Comments: Extended version of arXiv:1603.00550 (CVPR 2016) and arXiv:1605.08151 (ICCV 2017)
Categories: cs.CV
Related articles: Most relevant | Search more
arXiv:1603.00550 [cs.CV] (Published 2016-03-02)
Synthesized Classifiers for Zero-Shot Learning
arXiv:1711.07302 [cs.CV] (Published 2017-11-20)
Zero-shot Learning via Shared-Reconstruction-Graph Pursuit
arXiv:1512.01192 [cs.CV] (Published 2015-12-03)
Prototypical Priors: From Improving Classification to Zero-Shot Learning