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SOTA
Anomaly Detection
Anomaly Detection On Shanghaitech
Anomaly Detection On Shanghaitech
Metrics
AUC
Results
Performance results of various models on this benchmark
Columns
Model Name
AUC
Paper Title
DAC(STG-NF + Jigsaw)
87.72%
Divide and Conquer in Video Anomaly Detection: A Comprehensive Review and New Approach
MULDE-object-centric-micro
86.7%
MULDE: Multiscale Log-Density Estimation via Denoising Score Matching for Video Anomaly Detection
AI-VAD
85.94%
An Attribute-based Method for Video Anomaly Detection
STG-NF
85.9%
Normalizing Flows for Human Pose Anomaly Detection
AnomalyRuler
85.2%
Follow the Rules: Reasoning for Video Anomaly Detection with Large Language Models
VideoPatchCore
85.1%
VideoPatchCore: An Effective Method to Memorize Normality for Video Anomaly Detection
Jigsaw-VAD
84.3%
Video Anomaly Detection by Solving Decoupled Spatio-Temporal Jigsaw Puzzles
SSMTL++v2
83.8%
SSMTL++: Revisiting Self-Supervised Multi-Task Learning for Video Anomaly Detection
SSMTL+UBnormal
83.7%
UBnormal: New Benchmark for Supervised Open-Set Video Anomaly Detection
two-stream
83.7%
Context Recovery and Knowledge Retrieval: A Novel Two-Stream Framework for Video Anomaly Detection
Background- Agnostic Framework+SSPCAB
83.6%
Self-Supervised Predictive Convolutional Attentive Block for Anomaly Detection
SSMTL+++SSMCTB
83.6%
Self-Supervised Masked Convolutional Transformer Block for Anomaly Detection
MoPRL
83.35
Regularity Learning via Explicit Distribution Modeling for Skeletal Video Anomaly Detection
SSMTL++v1
82.9%
SSMTL++: Revisiting Self-Supervised Multi-Task Learning for Video Anomaly Detection
Background-Agnostic Framework
82.7%
A Background-Agnostic Framework with Adversarial Training for Abnormal Event Detection in Video
SSMTL
82.4%
Anomaly Detection in Video via Self-Supervised and Multi-Task Learning
MULDE-frame-centric-micro
81.3%
MULDE: Multiscale Log-Density Estimation via Denoising Score Matching for Video Anomaly Detection
TSGAD
80.6%
An Exploratory Study on Human-Centric Video Anomaly Detection through Variational Autoencoders and Trajectory Prediction
DMAD
78.8%
Diversity-Measurable Anomaly Detection
Object-centric AE
78.7%
Object-centric Auto-encoders and Dummy Anomalies for Abnormal Event Detection in Video
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HyperAI
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Console
Docs
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About
Terms of Service
Privacy Policy
English
HyperAI
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Toggle Sidebar
Search the site…
⌘
K
Command Palette
Search for a command to run...
Console
Home
SOTA
Anomaly Detection
Anomaly Detection On Shanghaitech
Anomaly Detection On Shanghaitech
Metrics
AUC
Results
Performance results of various models on this benchmark
Columns
Model Name
AUC
Paper Title
DAC(STG-NF + Jigsaw)
87.72%
Divide and Conquer in Video Anomaly Detection: A Comprehensive Review and New Approach
MULDE-object-centric-micro
86.7%
MULDE: Multiscale Log-Density Estimation via Denoising Score Matching for Video Anomaly Detection
AI-VAD
85.94%
An Attribute-based Method for Video Anomaly Detection
STG-NF
85.9%
Normalizing Flows for Human Pose Anomaly Detection
AnomalyRuler
85.2%
Follow the Rules: Reasoning for Video Anomaly Detection with Large Language Models
VideoPatchCore
85.1%
VideoPatchCore: An Effective Method to Memorize Normality for Video Anomaly Detection
Jigsaw-VAD
84.3%
Video Anomaly Detection by Solving Decoupled Spatio-Temporal Jigsaw Puzzles
SSMTL++v2
83.8%
SSMTL++: Revisiting Self-Supervised Multi-Task Learning for Video Anomaly Detection
SSMTL+UBnormal
83.7%
UBnormal: New Benchmark for Supervised Open-Set Video Anomaly Detection
two-stream
83.7%
Context Recovery and Knowledge Retrieval: A Novel Two-Stream Framework for Video Anomaly Detection
Background- Agnostic Framework+SSPCAB
83.6%
Self-Supervised Predictive Convolutional Attentive Block for Anomaly Detection
SSMTL+++SSMCTB
83.6%
Self-Supervised Masked Convolutional Transformer Block for Anomaly Detection
MoPRL
83.35
Regularity Learning via Explicit Distribution Modeling for Skeletal Video Anomaly Detection
SSMTL++v1
82.9%
SSMTL++: Revisiting Self-Supervised Multi-Task Learning for Video Anomaly Detection
Background-Agnostic Framework
82.7%
A Background-Agnostic Framework with Adversarial Training for Abnormal Event Detection in Video
SSMTL
82.4%
Anomaly Detection in Video via Self-Supervised and Multi-Task Learning
MULDE-frame-centric-micro
81.3%
MULDE: Multiscale Log-Density Estimation via Denoising Score Matching for Video Anomaly Detection
TSGAD
80.6%
An Exploratory Study on Human-Centric Video Anomaly Detection through Variational Autoencoders and Trajectory Prediction
DMAD
78.8%
Diversity-Measurable Anomaly Detection
Object-centric AE
78.7%
Object-centric Auto-encoders and Dummy Anomalies for Abnormal Event Detection in Video
0 of 31 row(s) selected.
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Anomaly Detection On Shanghaitech | SOTA | HyperAI