Episodic Training for Domain Generalization
2019
Domain generalization (DG) is the challenging and topical
problem of learning models that generalize to novel testing
domains with different statistics than a set of known training domains.
The simple approach of aggregating data from all source
domains and training a single deep neural network end-to-end
on all the data provides a surprisingly strong baseline that surpasses
many prior published methods. In this paper we build on
this strong baseline by designing an episodic training procedure
that trains a single deep network in a way that exposes it to
the domain shift that characterises a novel domain at runtime.
Specifically, we decompose a deep network into feature extractor
and classifier components, and then train each component
by simulating it interacting with a partner who is badly tuned for
the current domain. This makes both components more robust,
ultimately leading to our networks producing state-of-the-art
performance on three DG benchmarks. Furthermore, we consider
the pervasive workflow of using an ImageNet trained CNN
as a fixed feature extractor for downstream recognition tasks.
Using the Visual Decathlon benchmark, we demonstrate that
our episodic-DG training improves the performance of such a
general purpose feature extractor by explicitly training a feature
for robustness to novel problems. This shows that DG training
can benefit standard practice in computer vision.
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