HCCVSep 20, 2022

Adversarial Bi-Regressor Network for Domain Adaptive Regression

arXiv:2209.09943v211 citationsh-index: 46
Originality Incremental advance
AI Analysis

This work addresses domain shift in regression tasks like Wi-Fi localization, offering a novel method for domain adaptation.

The paper tackles domain adaptive regression by proposing ABRNet, which uses a bi-regressor architecture and adversarial training to produce domain-invariant representations, achieving improved performance on cross-domain benchmarks.

Domain adaptation (DA) aims to transfer the knowledge of a well-labeled source domain to facilitate unlabeled target learning. When turning to specific tasks such as indoor (Wi-Fi) localization, it is essential to learn a cross-domain regressor to mitigate the domain shift. This paper proposes a novel method Adversarial Bi-Regressor Network (ABRNet) to seek more effective cross-domain regression model. Specifically, a discrepant bi-regressor architecture is developed to maximize the difference of bi-regressor to discover uncertain target instances far from the source distribution, and then an adversarial training mechanism is adopted between feature extractor and dual regressors to produce domain-invariant representations. To further bridge the large domain gap, a domain-specific augmentation module is designed to synthesize two source-similar and target-similar intermediate domains to gradually eliminate the original domain mismatch. The empirical studies on two cross-domain regressive benchmarks illustrate the power of our method on solving the domain adaptive regression (DAR) problem.

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