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Multi-class Anomaly Detection

Multi-class Anomaly Detection is a task that identifies anomalies by jointly learning and detecting outliers across multiple classes, in contrast to traditional Anomaly Detection, which typically focuses on identifying anomalies within a single class.

Papers

Showing 2130 of 39 papers

TitleStatusHype
CNC: Cross-modal Normality Constraint for Unsupervised Multi-class Anomaly Detection0
Explainable multi-class anomaly detection on functional data0
Friend or Foe? Harnessing Controllable Overfitting for Anomaly Detection0
Multi-Class Anomaly Detection0
Structural Teacher-Student Normality Learning for Multi-Class Anomaly Detection and Localization0
Toward Multi-class Anomaly Detection: Exploring Class-aware Unified Model against Inter-class Interference0
LafitE: Latent Diffusion Model with Feature Editing for Unsupervised Multi-class Anomaly Detection0
Unified Anomaly Detection methods on Edge Device using Knowledge Distillation and Quantization0
mixed attention auto encoder for multi-class industrial anomaly detection0
Multi-Class Anomaly Detection based on Regularized Discriminative Coupled hypersphere-based Feature Adaptation0
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