Style Normalization and Restitution for DomainGeneralization and
Adaptation
- URL: http://arxiv.org/abs/2101.00588v1
- Date: Sun, 3 Jan 2021 09:01:39 GMT
- Title: Style Normalization and Restitution for DomainGeneralization and
Adaptation
- Authors: Xin Jin, Cuiling Lan, Wenjun Zeng, Zhibo Chen
- Abstract summary: An effective domain generalizable model is expected to learn feature representations that are both generalizable and discriminative.
In this paper, we design a novel Style Normalization and Restitution module (SNR) to ensure both high generalization and discrimination capability of the networks.
- Score: 88.86865069583149
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: For many practical computer vision applications, the learned models usually
have high performance on the datasets used for training but suffer from
significant performance degradation when deployed in new environments, where
there are usually style differences between the training images and the testing
images. An effective domain generalizable model is expected to be able to learn
feature representations that are both generalizable and discriminative. In this
paper, we design a novel Style Normalization and Restitution module (SNR) to
simultaneously ensure both high generalization and discrimination capability of
the networks. In the SNR module, particularly, we filter out the style
variations (e.g, illumination, color contrast) by performing Instance
Normalization (IN) to obtain style normalized features, where the discrepancy
among different samples and domains is reduced. However, such a process is
task-ignorant and inevitably removes some task-relevant discriminative
information, which could hurt the performance. To remedy this, we propose to
distill task-relevant discriminative features from the residual (i.e, the
difference between the original feature and the style normalized feature) and
add them back to the network to ensure high discrimination. Moreover, for
better disentanglement, we enforce a dual causality loss constraint in the
restitution step to encourage the better separation of task-relevant and
task-irrelevant features. We validate the effectiveness of our SNR on different
computer vision tasks, including classification, semantic segmentation, and
object detection. Experiments demonstrate that our SNR module is capable of
improving the performance of networks for domain generalization (DG) and
unsupervised domain adaptation (UDA) on many tasks. Code are available at
https://github.com/microsoft/SNR.
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