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홈
SOTA
이상치 탐지
Anomaly Detection On Chuk Avenue
Anomaly Detection On Chuk Avenue
평가 지표
AUC
RBDC
TBDC
평가 결과
이 벤치마크에서 각 모델의 성능 결과
Columns
모델 이름
AUC
RBDC
TBDC
Paper Title
Repository
MULDE-object-centric-micro
94.3%
-
-
MULDE: Multiscale Log-Density Estimation via Denoising Score Matching for Video Anomaly Detection
AMSRC
93.8%
-
-
A Video Anomaly Detection Framework based on Appearance-Motion Semantics Representation Consistency
-
SSMTL++v1
93.7%
40.9
82.1
SSMTL++: Revisiting Self-Supervised Multi-Task Learning for Video Anomaly Detection
-
AI-VAD
93.7%
-
-
An Attribute-based Method for Video Anomaly Detection
Background-Agnostic Framework+SSMCTB
93.2%
66.04
65.12
Self-Supervised Masked Convolutional Transformer Block for Anomaly Detection
SSMTL+UBnormal
93.0%
61.10
61.38
UBnormal: New Benchmark for Supervised Open-Set Video Anomaly Detection
Background- Agnostic Framework+SSPCAB
92.9%
65.99
-
Self-Supervised Predictive Convolutional Attentive Block for Anomaly Detection
VideoPatchCore
92.8%
-
-
VideoPatchCore: An Effective Method to Memorize Normality for Video Anomaly Detection
DMAD
92.8%
-
-
Diversity-Measurable Anomaly Detection
PGM
92.72%
60.18
72.09
Bounding Boxes and Probabilistic Graphical Models: Video Anomaly Detection Simplified
Background-Agnostic Framework
92.3%
65.05
66.85
A Background-Agnostic Framework with Adversarial Training for Abnormal Event Detection in Video
SSMTL++v2
91.6%
47.8
85.2
-
-
SSMTL
91.5%
57.00
58.30
Anomaly Detection in Video via Self-Supervised and Multi-Task Learning
SD-MAE
91.3%
46.77
66.58
Self-Distilled Masked Auto-Encoders are Efficient Video Anomaly Detectors
MAMA
91.2%
-
-
Making Anomalies More Anomalous: Video Anomaly Detection Using a Novel Generator and Destroyer
-
VALD-GAN
91.03
-
-
VALD-GAN: video anomaly detection using latent discriminator augmented GAN
-
Two-stream
90.8%
-
-
Context Recovery and Knowledge Retrieval: A Novel Two-Stream Framework for Video Anomaly Detection
AnomalyRuler
89.7%
-
-
Follow the Rules: Reasoning for Video Anomaly Detection with Large Language Models
Cloze Test
89.6%
-
-
Cloze Test Helps: Effective Video Anomaly Detection via Learning to Complete Video Events
Narrowed Normality Clusters
88.9%
-
-
Detecting abnormal events in video using Narrowed Normality Clusters
-
0 of 35 row(s) selected.
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