DDS-UDA: Dual-Domain Synergy for Unsupervised Domain Adaptation in Joint Segmentation of Optic Disc and Optic Cup

arXiv cs.CV / 3/17/2026

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Key Points

  • The paper proposes DDS-UDA, a dual-domain unsupervised domain adaptation framework for joint segmentation of optic disc and optic cup in fundus images.
  • It introduces a bi-directional cross-domain consistency regularization module guided by a coarse-to-fine dynamic mask generator to reduce cross-domain interference while preserving structural details.
  • It incorporates a frequency-driven intra-domain pseudo label learning module that uses spectral amplitude-mixed supervision to improve intra-domain generalization and align features across domains.
  • The framework uses a teacher-student architecture to disentangle domain-specific biases from domain-invariant representations, enabling robust adaptation to diverse imaging environments.
  • Empirical evaluation on two multi-domain fundus datasets shows DDS-UDA outperforms existing UDA methods for optic disc and optic cup segmentation.

Abstract

Convolutional neural networks (CNNs) have achieved exciting performance in joint segmentation of optic disc and optic cup on single-institution datasets. However, their clinical translation is hindered by two major challenges: limited availability of large-scale, high-quality annotations and performance degradation caused by domain shift during deployment across heterogeneous imaging protocols and acquisition platforms. While unsupervised domain adaptation (UDA) provides a way to mitigate these limitations, most existing approaches do not address cross-domain interference and intra-domain generalization within a unified framework. In this paper, we present the Dual-Domain Synergy UDA (DDS-UDA), a novel UDA framework that comprises two key modules. First, a bi-directional cross-domain consistency regularization module is enforced to mitigate cross-domain interference through feature-level semantic information exchange guided by a coarse-to-fine dynamic mask generator, suppressing noise propagation while preserving structural coherence. Second, a frequency-driven intra-domain pseudo label learning module is used to enhance intra-domain generalization by synthesizing spectral amplitude-mixed supervision signals, which ensures high-fidelity feature alignment across domains. Implemented within a teacher-student architecture, DDS-UDA disentangles domain-specific biases from domain-invariant feature-level representations, thereby achieving robust adaptation to heterogeneous imaging environments. We conduct a comprehensive evaluation of our proposed method on two multi-domain fundus image datasets, demonstrating that it outperforms several existing UDA based methods and therefore providing an effective way for optic disc and optic cup segmentation.