SOTAVerified

Anomaly Classification

Anomaly Classification is the task of identifying and categorizing different types of anomalies in visual data, rather than simply detecting whether an input is normal or anomalous. Unlike anomaly detection, which is typically a binary classification (normal vs. anomaly), anomaly classification requires distinguishing between multiple anomaly classes—each representing a distinct type of anomaly or irregularity. This task is critical in real-world applications such as industrial inspection, where different anomalies may require different responses or interventions.

Papers

Showing 2650 of 72 papers

TitleStatusHype
MedIAnomaly: A comparative study of anomaly detection in medical imagesCode2
Adapting Visual-Language Models for Generalizable Anomaly Detection in Medical ImagesCode3
Large Language Models for Forecasting and Anomaly Detection: A Systematic Literature Review0
MuSc: Zero-Shot Industrial Anomaly Classification and Segmentation with Mutual Scoring of the Unlabeled ImagesCode3
Beyond Traditional Approaches: Multi-Task Network for Breast Ultrasound DiagnosisCode0
TAB: Text-Align Anomaly Backbone Model for Industrial Inspection Tasks0
Multi-task learning for joint weakly-supervised segmentation and aortic arch anomaly classification in fetal cardiac MRICode0
PatchProto Networks for Few-shot Visual Anomaly Classification0
A Prototype-Based Neural Network for Image Anomaly Detection and LocalizationCode0
SeMAnD: Self-Supervised Anomaly Detection in Multimodal Geospatial Datasets0
Conditioning Latent-Space Clusters for Real-World Anomaly Classification0
Classification of Anomalies in Telecommunication Network KPI Time Series0
Evaluation of Key Spatiotemporal Learners for Print Track Anomaly Classification Using Melt Pool Image Streams0
PKU-GoodsAD: A Supermarket Goods Dataset for Unsupervised Anomaly Detection and SegmentationCode1
APRIL-GAN: A Zero-/Few-Shot Anomaly Classification and Segmentation Method for CVPR 2023 VAND Workshop Challenge Tracks 1&2: 1st Place on Zero-shot AD and 4th Place on Few-shot ADCode2
Component-aware anomaly detection framework for adjustable and logical industrial visual inspectionCode1
Uncertainty-inspired Open Set Learning for Retinal Anomaly Identification0
Multiple Instance Ensembling For Paranasal Anomaly Classification In The Maxillary Sinus0
SimpleNet: A Simple Network for Image Anomaly Detection and LocalizationCode2
WinCLIP: Zero-/Few-Shot Anomaly Classification and SegmentationCode2
Label Assisted Autoencoder for Anomaly Detection in Power Generation Plants0
Power System Anomaly Detection and Classification Utilizing WLS-EKF State Estimation and Machine LearningCode1
Supervised Contrastive Learning to Classify Paranasal Anomalies in the Maxillary Sinus0
STC-IDS: Spatial-Temporal Correlation Feature Analyzing based Intrusion Detection System for Intelligent Connected Vehicles0
Spatially-Preserving Flattening for Location-Aware Classification of Findings in Chest X-Rays0
Show:102550
← PrevPage 2 of 3Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1PatchCore-100%AUPR86.1Unverified
2MiniMaxAD-frAUROC86.1Unverified
3PatchCore-1%AUPR83.3Unverified
4SimpleNetAUPR78.7Unverified
5CFLOW-ADAUPR75.3Unverified
6NSAAUPR71.8Unverified
7DRAEMAUPR71Unverified
8SPADEAUPR68.7Unverified
9RD4ADAUPR68.2Unverified
10f-AnoGANAUPR66.6Unverified
#ModelMetricClaimedVerifiedStatus
1VELMAccuracy (% )81.4Unverified
2EchoAccuracy (% )72.9Unverified
#ModelMetricClaimedVerifiedStatus
1VELMAccuracy (% )84Unverified
#ModelMetricClaimedVerifiedStatus
1VELMAccuracy(%)69.6Unverified