DRANet: Disentangling Representation and Adaptation Networks for
Unsupervised Cross-Domain Adaptation
- URL: http://arxiv.org/abs/2103.13447v1
- Date: Wed, 24 Mar 2021 18:54:23 GMT
- Title: DRANet: Disentangling Representation and Adaptation Networks for
Unsupervised Cross-Domain Adaptation
- Authors: Seunghun Lee, Sunghyun Cho, Sunghoon Im
- Abstract summary: DRANet is a network architecture that disentangles image representations and transfers the visual attributes in a latent space for unsupervised cross-domain adaptation.
Our model encodes individual representations of content (scene structure) and style (artistic appearance) from both source and target images.
It adapts the domain by incorporating the transferred style factor into the content factor along with learnable weights specified for each domain.
- Score: 23.588766224169493
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we present DRANet, a network architecture that disentangles
image representations and transfers the visual attributes in a latent space for
unsupervised cross-domain adaptation. Unlike the existing domain adaptation
methods that learn associated features sharing a domain, DRANet preserves the
distinctiveness of each domain's characteristics. Our model encodes individual
representations of content (scene structure) and style (artistic appearance)
from both source and target images. Then, it adapts the domain by incorporating
the transferred style factor into the content factor along with learnable
weights specified for each domain. This learning framework allows
bi-/multi-directional domain adaptation with a single encoder-decoder network
and aligns their domain shift. Additionally, we propose a content-adaptive
domain transfer module that helps retain scene structure while transferring
style. Extensive experiments show our model successfully separates
content-style factors and synthesizes visually pleasing domain-transferred
images. The proposed method demonstrates state-of-the-art performance on
standard digit classification tasks as well as semantic segmentation tasks.
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