Professor
Supervisor of Doctorate Candidates
Supervisor of Master's Candidates
Title of Paper:Weighted and Class-Specific Maximum Mean Discrepancy for Unsupervised Domain Adaptation
Hits:
Date of Publication:2021-01-10
Journal:IEEE TRANSACTIONS ON MULTIMEDIA
Volume:22
Issue:9
Page Number:2420-2433
ISSN No.:1520-9210
Key Words:Measurement; Adaptation models; Airplanes; Gallium nitride; Task analysis; Generative adversarial networks; Degradation; Image recognition; unsupervised domain adaption; convolutional neural network; expectation-maximization algorithms
Abstract:Although maximum mean discrepancy (MMD) has achieved great success in unsupervised domain adaptation (UDA), most of existing UDA methods ignore the issue of class weight bias across domains, which is ubiquitous and evidently gives rise to the degradation of UDA performance. In this work, we propose two improved MMD metrics, i.e., weighted MMD (WMMD) and class-specific MMD (CMMD), to alleviate the adverse effect caused by the changes of class prior distributions between source and target domains. In WMMD, class-specific auxiliary weights are deployed to reweigh the source samples. In CMMD, we calculate the MMD for each class of source and target samples. Since the class labels of target samples are unknown for UDA problem, we present a classification expectation-maximization algorithm to estimate the pseudo-labels of target samples on the fly and update the model parameters using estimated labels. The proposed methods can be flexibly incorporated into deep convolutional neural networks to form WMMD and CMMD based domain adaptation networks, which we called WDAN and CDAN, respectively. By combining WMMD with CMMD, we present a CWMMD based domain adaptation network (CWDAN) to further improve classification performance. Experiments show that, both WMMD and CMMD benefit the classification accuracy, and our CWDAN can achieve compelling UDA performance in comparison with MMD and the state-of-the-art UDA methods.
Open time:..
The Last Update Time: ..