Learning by Transferring from Unsupervised Universal Sources

Authors

  • Yu-Xiong Wang Carnegie Mellon University
  • Martial Hebert Carnegie Mellon University

DOI:

https://doi.org/10.1609/aaai.v30i1.10318

Keywords:

Transfer Learning, Domain Adaptation, Object Recognition, Scene Classification

Abstract

Category classifiers trained from a large corpus of annotated data are widely accepted as the sources for (hypothesis) transfer learning. Sources generated in this way are tied to a particular set of categories, limiting their transferability across a wide spectrum of target categories. In this paper, we address this largely-overlooked yet fundamental source problem by both introducing a systematic scheme for generating universal source hypotheses and proposing a principled, scalable approach to automatically tuning the transfer process. Our approach is based on the insights that expressive source hypotheses could be generated without any supervision and that a sparse combination of such hypotheses facilitates recognition of novel categories from few samples. We demonstrate improvements over the state-of-the-art on object and scene classification in the small sample size regime.

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Published

2016-03-02

How to Cite

Wang, Y.-X., & Hebert, M. (2016). Learning by Transferring from Unsupervised Universal Sources. Proceedings of the AAAI Conference on Artificial Intelligence, 30(1). https://doi.org/10.1609/aaai.v30i1.10318

Issue

Section

Technical Papers: Machine Learning Methods