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When Unsupervised Domain Adaptation meets One-class Anomaly Detection: Addressing the Two-fold Unsupervised Curse by Leveraging Anomaly Scarcity
MEJRI, Nesryne; GHORBEL, Enjie; KACEM, Anis et al.
2025CVPR submission
 

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Keywords :
Unsupervised anomaly detection; Unsupervised domain adaptation
Abstract :
[en] This paper introduces the first fully unsupervised domain adaptation (UDA) framework for unsupervised anomaly detection (UAD). The performance of UAD techniques degrades significantly in the presence of a domain shift, difficult to avoid in a real-world setting. While UDA has contributed to solving this issue in binary and multi-class classification, such a strategy is ill-posed in UAD. This might be explained by the unsupervised nature of the two tasks, namely, domain adaptation and anomaly detection. Herein, we first formulate this problem that we call the two-fold unsupervised curse. Then, we propose a pioneering solution to this curse, considered intractable so far, by assuming that anomalies are rare. Specifically, we leverage clustering techniques to identify a dominant cluster in the target feature space. Posed as the normal cluster, the latter is aligned with the source normal features. Concretely, given a one-class source set and an unlabeled target set composed mostly of normal data and some anomalies, we fit the source features within a hypersphere while jointly aligning them with the features of the dominant cluster from the target set. The paper provides extensive experiments and analysis on common adaptation benchmarks for anomaly detection, demonstrating the relevance of both the newly introduced paradigm and the proposed approach. The code will be made publicly available.
Research center :
Interdisciplinary Centre for Security, Reliability and Trust (SnT) > CVI² - Computer Vision Imaging & Machine Intelligence
Disciplines :
Computer science
Author, co-author :
MEJRI, Nesryne  ;  University of Luxembourg > Interdisciplinary Centre for Security, Reliability and Trust (SNT) > CVI2
GHORBEL, Enjie  ;  University of Luxembourg > Interdisciplinary Centre for Security, Reliability and Trust > CVI2 > Team Djamila AOUADA ; University of Manouba > National School of Computer Sciences > Cristal Laboratory
KACEM, Anis  ;  University of Luxembourg > Interdisciplinary Centre for Security, Reliability and Trust (SNT) > CVI2
CHERNAKOV, Pavel ;  University of Luxembourg > Interdisciplinary Centre for Security, Reliability and Trust (SNT) > Ubiquitous and Intelligent Systems (UBI-X)
FOTEINOPOULOU, Niki Maria ;  University of Luxembourg > Interdisciplinary Centre for Security, Reliability and Trust > CVI2 > Team Djamila AOUADA
AOUADA, Djamila  ;  University of Luxembourg > Interdisciplinary Centre for Security, Reliability and Trust (SNT) > CVI2
External co-authors :
yes
Language :
English
Title :
When Unsupervised Domain Adaptation meets One-class Anomaly Detection: Addressing the Two-fold Unsupervised Curse by Leveraging Anomaly Scarcity
Publication date :
28 February 2025
Event name :
CVPR submission
Event date :
2025
Audience :
International
FnR Project :
FNR16353350 - FakeDeTeR - Deepfake Detection Using Spatio-temporal-spectral Representations For Effective Learning, 2021 (01/03/2022-28/02/2025) - Djamila Aouada
FNR16763798 - UNFAKE - Unsupervised Multi-type Explainable Deepfake Detection, 2021 (01/10/2021-31/08/2025) - Nesryne Mejri
Funders :
Post Luxembourg
Available on ORBilu :
since 29 January 2026

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