Generalized Category Discovery under Domain Shift: A Frequency Domain Perspective
- URL: http://arxiv.org/abs/2511.00573v1
- Date: Sat, 01 Nov 2025 14:29:49 GMT
- Title: Generalized Category Discovery under Domain Shift: A Frequency Domain Perspective
- Authors: Wei Feng, Zongyuan Ge,
- Abstract summary: Generalized Category Discovery (GCD) aims to leverage labeled samples from known categories to cluster unlabeled data.<n>While existing methods have achieved impressive results under standard conditions, their performance often deteriorates in the presence of distribution shifts.<n>We propose a Genetextbfunderlineralized Cattextbfunderlineegory Discovtextbfunderlineery framework (FREE) that enhances the model's ability to discover categories under distributional shift.
- Score: 22.323133797872973
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Generalized Category Discovery (GCD) aims to leverage labeled samples from known categories to cluster unlabeled data that may include both known and unknown categories. While existing methods have achieved impressive results under standard conditions, their performance often deteriorates in the presence of distribution shifts. In this paper, we explore a more realistic task: Domain-Shifted Generalized Category Discovery (DS\_GCD), where the unlabeled data includes not only unknown categories but also samples from unknown domains. To tackle this challenge, we propose a \textbf{\underline{F}}requency-guided Gene\textbf{\underline{r}}alized Cat\textbf{\underline{e}}gory Discov\textbf{\underline{e}}ry framework (FREE) that enhances the model's ability to discover categories under distributional shift by leveraging frequency-domain information. Specifically, we first propose a frequency-based domain separation strategy that partitions samples into known and unknown domains by measuring their amplitude differences. We then propose two types of frequency-domain perturbation strategies: a cross-domain strategy, which adapts to new distributions by exchanging amplitude components across domains, and an intra-domain strategy, which enhances robustness to intra-domain variations within the unknown domain. Furthermore, we extend the self-supervised contrastive objective and semantic clustering loss to better guide the training process. Finally, we introduce a clustering-difficulty-aware resampling technique to adaptively focus on harder-to-cluster categories, further enhancing model performance. Extensive experiments demonstrate that our method effectively mitigates the impact of distributional shifts across various benchmark datasets and achieves superior performance in discovering both known and unknown categories.
Related papers
- Generalize or Detect? Towards Robust Semantic Segmentation Under Multiple Distribution Shifts [56.57141696245328]
In open-world scenarios, where both novel classes and domains may exist, an ideal segmentation model should detect anomaly classes for safety.
Existing methods often struggle to distinguish between domain-level and semantic-level distribution shifts.
arXiv Detail & Related papers (2024-11-06T11:03:02Z) - Advancing Open-Set Domain Generalization Using Evidential Bi-Level Hardest Domain Scheduler [45.71475375161575]
In Open-Set Domain Generalization, the model is exposed to both new variations of data appearance (domains) and open-set conditions.
We propose the Evidential Bi-Level Hardest Domain Scheduler (EBiL-HaDS) to achieve an adaptive domain scheduler.
arXiv Detail & Related papers (2024-09-26T05:57:35Z) - Adaptive Betweenness Clustering for Semi-Supervised Domain Adaptation [108.40945109477886]
We propose a novel SSDA approach named Graph-based Adaptive Betweenness Clustering (G-ABC) for achieving categorical domain alignment.
Our method outperforms previous state-of-the-art SSDA approaches, demonstrating the superiority of the proposed G-ABC algorithm.
arXiv Detail & Related papers (2024-01-21T09:57:56Z) - Activate and Reject: Towards Safe Domain Generalization under Category
Shift [71.95548187205736]
We study a practical problem of Domain Generalization under Category Shift (DGCS)
It aims to simultaneously detect unknown-class samples and classify known-class samples in the target domains.
Compared to prior DG works, we face two new challenges: 1) how to learn the concept of unknown'' during training with only source known-class samples, and 2) how to adapt the source-trained model to unseen environments.
arXiv Detail & Related papers (2023-10-07T07:53:12Z) - Unsupervised Domain Adaptive Fundus Image Segmentation with
Category-level Regularization [25.58501677242639]
This paper presents an unsupervised domain adaptation framework based on category-level regularization.
Experiments on two publicly fundus datasets show that the proposed approach significantly outperforms other state-of-the-art comparison algorithms.
arXiv Detail & Related papers (2022-07-08T04:34:39Z) - Generalizable Representation Learning for Mixture Domain Face
Anti-Spoofing [53.82826073959756]
Face anti-spoofing approach based on domain generalization(DG) has drawn growing attention due to its robustness forunseen scenarios.
We propose domain dy-namic adjustment meta-learning (D2AM) without using do-main labels.
To overcome the limitation, we propose domain dy-namic adjustment meta-learning (D2AM) without using do-main labels.
arXiv Detail & Related papers (2021-05-06T06:04:59Z) - Robust Domain-Free Domain Generalization with Class-aware Alignment [4.442096198968069]
Domain-Free Domain Generalization (DFDG) is a model-agnostic method to achieve better generalization performance on the unseen test domain.
DFDG uses novel strategies to learn domain-invariant class-discriminative features.
It obtains competitive performance on both time series sensor and image classification public datasets.
arXiv Detail & Related papers (2021-02-17T17:46:06Z) - Cross-Domain Grouping and Alignment for Domain Adaptive Semantic
Segmentation [74.3349233035632]
Existing techniques to adapt semantic segmentation networks across the source and target domains within deep convolutional neural networks (CNNs) do not consider an inter-class variation within the target domain itself or estimated category.
We introduce a learnable clustering module, and a novel domain adaptation framework called cross-domain grouping and alignment.
Our method consistently boosts the adaptation performance in semantic segmentation, outperforming the state-of-the-arts on various domain adaptation settings.
arXiv Detail & Related papers (2020-12-15T11:36:21Z) - Unsupervised Domain Adaptation in Semantic Segmentation via Orthogonal
and Clustered Embeddings [25.137859989323537]
We propose an effective Unsupervised Domain Adaptation (UDA) strategy, based on a feature clustering method.
We introduce two novel learning objectives to enhance the discriminative clustering performance.
arXiv Detail & Related papers (2020-11-25T10:06:22Z) - Exploring Category-Agnostic Clusters for Open-Set Domain Adaptation [138.29273453811945]
We present Self-Ensembling with Category-agnostic Clusters (SE-CC) -- a novel architecture that steers domain adaptation with category-agnostic clusters in target domain.
clustering is performed over all the unlabeled target samples to obtain the category-agnostic clusters, which reveal the underlying data space structure peculiar to target domain.
arXiv Detail & Related papers (2020-06-11T16:19:02Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.