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http://bura.brunel.ac.uk/handle/2438/33405| Title: | Collaboration Better Than Integration: A Novel Time-Frequency-Assisted Deep Feature Enhancement Mechanism for Few-Shot Transfer Learning in Anomaly Detection |
| Authors: | Mao, W Wu, J Du, S Feng, K Wang, Z |
| Issue Date: | Feb-2026 |
| Publisher: | Institute of Electrical and Electronics Engineers (IEEE) |
| Citation: | Mao, W. et al. (2026) ‘Collaboration Better Than Integration: A Novel Time-Frequency-Assisted Deep Feature Enhancement Mechanism for Few-Shot Transfer Learning in Anomaly Detection’, IEEE/CAA Journal of Automatica Sinica, 13(2), pp. 366–382. doi:10.1109/JAS.2025.125702. |
| Abstract: | Deep transfer learning has achieved significant success in anomaly detection over the past decade, but data acquisition challenges in practical engineering hinder high-quality feature representation for few-shot learning tasks. To address this issue, a novel time-frequency-assisted deep feature enhancement (TFE) mechanism is proposed. Unlike traditional methods that integrate time-frequency analysis with deep neural networks, TFE employs a wavelet scattering transform to establish a parallel time-frequency feature space, where a dual interaction strategy facilitates collaboration between deep feature and time-frequency spaces through two operations: 1) Enhancement, where a frequency-importance-driven contrastive learning (FICL) network transfers physically-aware information from wavelet scattering features to deep features, and 2) Feedback, which uses a detection rule adaptation module to minimize bias in wavelet scattering features based on deep feature performance. TFE is applied to a domain-adversarial anomaly detection framework and, through alternating training, significantly enhances both deep feature discriminative power and few-shot anomaly detection. Theoretical analysis confirms that the proposed dual interaction strategy reduces the upper bound of classification error. Experiments on benchmark datasets and a real-world industrial dataset from a large steel factory demonstrate TFE's superior performance and highlight the importance of frequency saliency in transfer learning. Thus, collaboration is shown to outperform integration for few-shot transfer learning in anomaly detection. |
| URI: | http://bura.brunel.ac.uk/handle/2438/33405 |
| DOI: | http://dx.doi.org/10.1109/jas.2025.125702 |
| ISSN: | 2329-9266 http://dx.doi.org/10.1109/jas.2025.125702 2329-9274 |
| Appears in Collections: | Department of Computer Science Research Papers |
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| FullText.pdf | 107.02 MB | Adobe PDF | View/Open |
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