2023
DOI: 10.3390/s23208508
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TCF-Trans: Temporal Context Fusion Transformer for Anomaly Detection in Time Series

Xinggan Peng,
Hanhui Li,
Yuxuan Lin
et al.

Abstract: Anomaly detection tasks involving time-series signal processing have been important research topics for decades. In many real-world anomaly detection applications, no specific distributions fit the data, and the characteristics of anomalies are different. Under these circumstances, the detection algorithm requires excellent learning ability of the data features. Transformers, which apply the self-attention mechanism, have shown outstanding performances in modelling long-range dependencies. Although Transformer… Show more

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