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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 1120 of 39 papers

TitleStatusHype
Learning Unified Reference Representation for Unsupervised Multi-class Anomaly DetectionCode1
Omni-AD: Learning to Reconstruct Global and Local Features for Multi-class Anomaly DetectionCode1
UniFormaly: Towards Task-Agnostic Unified Framework for Visual Anomaly DetectionCode1
Exploring Plain ViT Reconstruction for Multi-class Unsupervised Anomaly DetectionCode0
A Classifier-Based Approach to Multi-Class Anomaly Detection for Astronomical TransientsCode0
A Classifier-Based Approach to Multi-Class Anomaly Detection Applied to Astronomical Time-SeriesCode0
Learning Feature Inversion for Multi-class Anomaly Detection under General-purpose COCO-AD BenchmarkCode0
Context Enhancement with Reconstruction as Sequence for Unified Unsupervised Anomaly DetectionCode0
Attend, Distill, Detect: Attention-aware Entropy Distillation for Anomaly DetectionCode0
A Comprehensive Library for Benchmarking Multi-class Visual Anomaly DetectionCode0
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