TL;DR
This paper introduces GDCAN, a novel domain adaptation network that adaptively models domain-specific features through domain-conditioned channel attention, improving transfer performance across large domain discrepancies.
Contribution
It proposes a generalized domain-conditioned adaptation network with adaptive domain-specific feature modeling, addressing limitations of shared convolutional features in domain adaptation.
Findings
Improved adaptation performance on benchmark datasets.
Effective modeling of domain-specific features.
Enhanced alignment of high-level feature distributions.
Abstract
Domain Adaptation (DA) attempts to transfer knowledge learned in the labeled source domain to the unlabeled but related target domain without requiring large amounts of target supervision. Recent advances in DA mainly proceed by aligning the source and target distributions. Despite the significant success, the adaptation performance still degrades accordingly when the source and target domains encounter a large distribution discrepancy. We consider this limitation may attribute to the insufficient exploration of domain-specialized features because most studies merely concentrate on domain-general feature learning in task-specific layers and integrate totally-shared convolutional networks (convnets) to generate common features for both domains. In this paper, we relax the completely-shared convnets assumption adopted by previous DA methods and propose Domain Conditioned Adaptation…
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Taxonomy
MethodsMax Pooling · Average Pooling · Dense Connections · *Communicated@Fast*How Do I Communicate to Expedia? · Sigmoid Activation · How do i ask a question at Expedia?*AskExpertService
