TY - JOUR
T1 - A Bayesian dual-pathway network for unsupervised domain adaptation
AU - He, Yuhang
AU - Chen, Junzhe
AU - Zhang, Jiehua
AU - Ke, Wei
AU - Gong, Yihong
N1 - Publisher Copyright:
© 2025
PY - 2025/8
Y1 - 2025/8
N2 - Unsupervised Domain Adaptation (UDA) endeavors to address the challenges presented by domain shifts between domains characterized by differing yet related distributions. Traditional adversarial approaches typically adopt a single-pathway adversarial paradigm, which relies on a singular pathway to align the marginal distributions at the domain level. Despite notable advancements, this paradigm is constrained by two major limitations that lead to sub-optimal performance in both source and target domains. First, naive domain-level alignment often results in class mismatches. Second, the single-pathway adversarial approach grapples with the conflicting demands of reducing domain shift while simultaneously learning comprehensive features. Drawing inspiration from cognitive neuroscience, we propose a Bayesian Dual-Pathway Network (BDNet) for UDA to compute a classification prior for each domain, comprising a domain-shared pathway and a domain-specific pathway, designed to enhance target domain performance while preserving source domain efficacy. Specifically, the domain-shared pathway is employed to learn classification prior features through an adversarial paradigm grounded in structural alignment. Concurrently, a domain-specific pathway is crafted to extract distinct features, incorporating domain likelihood and domain prior features. Comprehensive features are synthesized through the fusion of common and specific attributes via a lightweight fusion module. Extensive experiments across three publicly available datasets demonstrate the efficacy of our approach, evidencing superior performance in both source and target domains.
AB - Unsupervised Domain Adaptation (UDA) endeavors to address the challenges presented by domain shifts between domains characterized by differing yet related distributions. Traditional adversarial approaches typically adopt a single-pathway adversarial paradigm, which relies on a singular pathway to align the marginal distributions at the domain level. Despite notable advancements, this paradigm is constrained by two major limitations that lead to sub-optimal performance in both source and target domains. First, naive domain-level alignment often results in class mismatches. Second, the single-pathway adversarial approach grapples with the conflicting demands of reducing domain shift while simultaneously learning comprehensive features. Drawing inspiration from cognitive neuroscience, we propose a Bayesian Dual-Pathway Network (BDNet) for UDA to compute a classification prior for each domain, comprising a domain-shared pathway and a domain-specific pathway, designed to enhance target domain performance while preserving source domain efficacy. Specifically, the domain-shared pathway is employed to learn classification prior features through an adversarial paradigm grounded in structural alignment. Concurrently, a domain-specific pathway is crafted to extract distinct features, incorporating domain likelihood and domain prior features. Comprehensive features are synthesized through the fusion of common and specific attributes via a lightweight fusion module. Extensive experiments across three publicly available datasets demonstrate the efficacy of our approach, evidencing superior performance in both source and target domains.
KW - Bayesian theory
KW - Domain adaption
KW - Domain-specific classification posterior
KW - Source domain preserving
UR - http://www.scopus.com/inward/record.url?scp=85219669455&partnerID=8YFLogxK
U2 - 10.1016/j.patcog.2025.111498
DO - 10.1016/j.patcog.2025.111498
M3 - Article
AN - SCOPUS:85219669455
SN - 0031-3203
VL - 164
JO - Pattern Recognition
JF - Pattern Recognition
M1 - 111498
ER -