OTAdapt: Optimal Transport-based Approach For Unsupervised Domain
Adaptation
- URL: http://arxiv.org/abs/2205.10738v1
- Date: Sun, 22 May 2022 04:25:24 GMT
- Title: OTAdapt: Optimal Transport-based Approach For Unsupervised Domain
Adaptation
- Authors: Thanh-Dat Truong, Naga Venkata Sai Raviteja Chappa, Xuan Bac Nguyen,
Ngan Le, Ashley Dowling, Khoa Luu
- Abstract summary: This paper presents a novel approach to unsupervised domain adaptations based on the optimal transport-based distance.
Our approach allows aligning target and source domains without the requirement of meaningful metrics across domains.
The proposed method is evaluated on different datasets in various problems.
- Score: 10.485172090696642
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Unsupervised domain adaptation is one of the challenging problems in computer
vision. This paper presents a novel approach to unsupervised domain adaptations
based on the optimal transport-based distance. Our approach allows aligning
target and source domains without the requirement of meaningful metrics across
domains. In addition, the proposal can associate the correct mapping between
source and target domains and guarantee a constraint of topology between source
and target domains. The proposed method is evaluated on different datasets in
various problems, i.e. (i) digit recognition on MNIST, MNIST-M, USPS datasets,
(ii) Object recognition on Amazon, Webcam, DSLR, and VisDA datasets, (iii)
Insect Recognition on the IP102 dataset. The experimental results show that our
proposed method consistently improves performance accuracy. Also, our framework
could be incorporated with any other CNN frameworks within an end-to-end deep
network design for recognition problems to improve their performance.
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