Wasserstein Distance Guided Cross-Domain Learning

10/14/2019
by   Jie Su, et al.
24

Domain adaptation aims to generalise a high-performance learner on target domain (non-labelled data) by leveraging the knowledge from source domain (rich labelled data) which comes from a different but related distribution. Assuming the source and target domains data(e.g. images) come from a joint distribution but follow on different marginal distributions, the domain adaptation work aims to infer the joint distribution from the source and target domain to learn the domain invariant features. Therefore, in this study, I extend the existing state-of-the-art approach to solve the domain adaptation problem. In particular, I propose a new approach to infer the joint distribution of images from different distributions, namely Wasserstein Distance Guided Cross-Domain Learning (WDGCDL). WDGCDL applies the Wasserstein distance to estimate the divergence between the source and target distribution which provides good gradient property and promising generalisation bound. Moreover, to tackle the training difficulty of the proposed framework, I propose two different training schemes for stable training. Qualitative results show that this new approach is superior to the existing state-of-the-art methods in the standard domain adaptation benchmark.

READ FULL TEXT

page 31

page 34

page 38

page 39

page 40

research
07/05/2017

Wasserstein Distance Guided Representation Learning for Domain Adaptation

Domain adaptation aims at generalizing a high-performance learner on a t...
research
02/08/2018

Transductive Adversarial Networks (TAN)

Transductive Adversarial Networks (TAN) is a novel domain-adaptation mac...
research
11/15/2018

Theoretical Perspective of Deep Domain Adaptation

Deep domain adaptation has recently undergone a big success. Compared wi...
research
09/18/2019

Wasserstein Distance Based Domain Adaptation for Object Detection

In this paper, we present an adversarial unsupervised domain adaptation ...
research
06/04/2020

Visual Transfer for Reinforcement Learning via Wasserstein Domain Confusion

We introduce Wasserstein Adversarial Proximal Policy Optimization (WAPPO...
research
07/17/2020

Learning to Match Distributions for Domain Adaptation

When the training and test data are from different distributions, domain...
research
12/02/2018

Regularized Wasserstein Means Based on Variational Transportation

We raise the problem of regularizing Wasserstein means and propose sever...

Please sign up or login with your details

Forgot password? Click here to reset