Unsupervised Domain Adaptation by Domain Invariant Projection


Autoria(s): Baktashmotlagh, M.; Harandi, Mehrtash T.; Lovell, Brian C.; Salzmann, M.
Data(s)

2013

Resumo

Domain-invariant representations are key to addressing the domain shift problem where the training and test exam- ples follow different distributions. Existing techniques that have attempted to match the distributions of the source and target domains typically compare these distributions in the original feature space. This space, however, may not be di- rectly suitable for such a comparison, since some of the fea- tures may have been distorted by the domain shift, or may be domain specific. In this paper, we introduce a Domain Invariant Projection approach: An unsupervised domain adaptation method that overcomes this issue by extracting the information that is invariant across the source and tar- get domains. More specifically, we learn a projection of the data to a low-dimensional latent space where the distance between the empirical distributions of the source and target examples is minimized. We demonstrate the effectiveness of our approach on the task of visual object recognition and show that it outperforms state-of-the-art methods on a stan- dard domain adaptation benchmark dataset

Formato

application/zip

Identificador

http://eprints.qut.edu.au/90968/

Relação

http://eprints.qut.edu.au/90968/2/DIP-ICCV.rar

http://www.cv-foundation.org/openaccess/content_iccv_2013/papers/Baktashmotlagh_Unsupervised_Domain_Adaptation_2013_ICCV_paper.pdf

Baktashmotlagh, M., Harandi, Mehrtash T., Lovell, Brian C., & Salzmann, M. (2013) Unsupervised Domain Adaptation by Domain Invariant Projection. In International Conference in Computer Vision (ICCV), December 1-8, 2013, Sydney Convention and Exhibition Centre.

Direitos

Contact the author

Fonte

School of Electrical Engineering & Computer Science; Faculty of Science and Technology

Palavras-Chave #080000 INFORMATION AND COMPUTING SCIENCES #080100 ARTIFICIAL INTELLIGENCE AND IMAGE PROCESSING #Domain Adaptation #Object Recognition #Maximum Mean Discrepancy
Tipo

Conference Paper