MULTIPLE DOMAIN-ADVERSARIAL ENSEMBLE LEARNING FOR DOMAIN GENERALIZATION
Ze-Yu Mi (Nanjing university); Kun Long (State Key Laboratory for Novel Software Technology, Nanjing University); Yu-Bin Yang (State Key Laboratory for Novel Software Technology, Nanjing University)
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Domain generalization (DG) aims to train a model on
multiple source domains which can be well generalized to the
unseen target domains. Currently, most DG techniques in vision
tasks mainly focus on one of the three research lines (i.e.,
data manipulation, representation learning, learning strategy).
The direction of combining multiple DG research lines still
remains to be studied and explored. In this paper, we propose
a unified framework for DG that combines multiple research
lines to enhance the generalization ability. To be specific, we
combine representative strategies of three research lines as ensemble
learning, domain alignment, and data augmentation.
A basic framework is built with an ensemble learning strategy
to train an expert model in a domain unit. Besides, the ability
to learn domain-independent features is enhanced with an
adversarial-based domain alignment strategy. Furthermore,
a domain transformation network (DoTNet) is introduced,
which is expected to generate additional deviated images and
further enhance the generalization capability. Extensive experiments
on DG datasets demonstrate the effectiveness of
our approach.