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From Zero-shot Learning to Conventional Supervised Classification: Unseen Visual Data Synthesis

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNConference contribution/Paperpeer-review

Published
  • Yang Long
  • Li Liu
  • Ling Shao
  • Fumin Shen
  • Guiguang Ding
  • Jungong Han
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Publication date22/07/2017
Host publicationCVPR 2017
PublisherComputer Vision Foundation
Pages1627-1636
Number of pages10
<mark>Original language</mark>English
EventCVPR17 -
Duration: 24/07/201728/07/2017

Conference

ConferenceCVPR17
Period24/07/1728/07/17

Conference

ConferenceCVPR17
Period24/07/1728/07/17

Abstract

Robust object recognition systems usually rely on powerful feature extraction mechanisms from a large number of real images. However, in many realistic applications, collecting sufficient images for ever-growing new classes is unattainable. In this paper, we propose a new Zero-shot learning (ZSL) framework that can synthesise visual features for unseen classes without acquiring real images. Using the proposed Unseen Visual Data Synthesis (UVDS) algorithm, semantic attributes are effectively utilised as an intermediate clue to synthesise unseen visual features at the training stage. Hereafter, ZSL recognition is converted into the conventional supervised problem, i.e. the synthesised visual features can be straightforwardly fed to typical classifiers such as SVM. On four benchmark datasets, we demonstrate the benefit of using synthesised unseen data.
Extensive experimental results suggest that our proposed approach significantly improve the state-of-the-art results.