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One-Class Classification

One-class classification (OCC) algorithms serve a crucial role in scenarios where the negative class is either absent, poorly sampled, or not well defined. This unique situation presents a challenge for building effective classifiers, as they must delineate the class boundary solely based on knowledge of the positive class. OCC has found application in various research domains, including outlier/novelty detection and concept learning.

In the context of anomaly detection, OCC models are trained exclusively on "normal" data and are subsequently tasked with identifying anomalous patterns during inference.

A one-class classifier aims at capturing characteristics of training instances, in order to be able to distinguish between them and potential outliers to appear.

— Page 139, Learning from Imbalanced Data Sets, 2018.

Papers

Showing 2130 of 227 papers

TitleStatusHype
DeSTSeg: Segmentation Guided Denoising Student-Teacher for Anomaly DetectionCode1
Learning Not to Reconstruct AnomaliesCode1
Dual-Distribution Discrepancy for Anomaly Detection in Chest X-RaysCode1
Diversity-Measurable Anomaly DetectionCode1
Explainable Deep One-Class ClassificationCode1
Multimodal Motion Conditioned Diffusion Model for Skeleton-based Video Anomaly DetectionCode1
Few-Shot One-Class Classification via Meta-LearningCode1
FUN-AD: Fully Unsupervised Learning for Anomaly Detection with Noisy Training DataCode1
PREGO: online mistake detection in PRocedural EGOcentric videosCode1
UBnormal: New Benchmark for Supervised Open-Set Video Anomaly DetectionCode1
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