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Cevikalp et al., 2023 - Google Patents

From anomaly detection to open set recognition: Bridging the gap

Cevikalp et al., 2023

Document ID
15949632182922405606
Author
Cevikalp H
Uzun B
Salk Y
Saribas H
Köpüklü O
Publication year
Publication venue
Pattern Recognition

External Links

Snippet

The classifiers that return compact acceptance regions are crucial for the success in anomaly detection and open set recognition settings since we have to determine and reject the anomalies and samples coming from the unknown classes. This paper introduces novel …
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