AD Research Hub
DashboardPeoplePapersWorkshopsDatasetsResearch Map
Login
⌘K
AD Research Hub — Anomaly Detection in Computer Vision
← Back to Papers
Graph-Jigsaw Conditioned Diffusion Model for Skeleton-Based Video Anomaly Detection

Authors

Ali Karami, Thi Kieu Khanh Ho, Narges Armanfard

WACV-2025direct anomaly

Score

24

Tags

anomaly detectionvideo anomaly

Methods

ViT

Links

Paper PagearXiv AbstractarXiv PDF

Cite

Related Papers

Discriminative Score Suppression for Weakly Supervised Video Anomaly Detection

Chen Xu, Chunguo Li, Hongjie Xing

WACV-2025direct anomaly24
anomaly detectionvideo anomaly
PDF

Distilling Aggregated Knowledge for Weakly-Supervised Video Anomaly Detection

Jash Dalvi, Ali Dabouei, Gunjan Dhanuka +1

WACV-2025direct anomaly24
anomaly detectionvideo anomaly
ShanghaiTech
PDFarXiv

Weakly Supervised Video Anomaly Detection with Anomaly-Connected Components and Intention Reasoning

Yu Wang, Shengjie Zhao

Weakly supervised video anomaly detection (WS-VAD) involves identifying the temporal intervals that contain anomalous events in untrimmed videos, where only video-level annotations are provided as supervisory signals. However, a key limitation persists in WS-VAD, as dense frame-level annotations are absent, which often leaves existing methods struggling to learn anomaly semantics effectively. To address this issue, we propose a novel framework named LAS-VAD, short for Learning Anomaly Semantics for WS-VAD, which integrates anomaly-connected component mechanism and intention awareness mechanism

CVPR-2026direct anomaly40
anomaly detectionanomalousabnormal behaviorvideo anomaly+2
PDFarXiv

No Need For Real Anomaly: MLLM Empowered Zero-Shot Video Anomaly Detection

Zunkai Dai, Ke Li, Jiajia Liu +2

The collection and detection of video anomaly data has long been a challenging problem due to its rare occurrence and spatio-temporal scarcity. Existing video anomaly detection (VAD) methods under perform in open-world scenarios. Key contributing factors include limited dataset diversity, and inadequate understanding of context-dependent anomalous semantics. To address these issues, i) we propose LAVIDA, an end-to-end zero-shot video anomaly detection framework. ii) LAVIDA employs an Anomaly Exposure Sampler that transforms segmented objects into pseudo-anomalies to enhance model adaptability

CVPR-2026direct anomaly30
anomaly detectionanomalousvideo anomalyarxiv+1
ViTZero-shot
PDFarXiv

Track Any Anomalous Object:A Granular Video Anomaly Detection Pipeline

Yuzhi Huang, Chenxin Li, Haitao Zhang +9

CVPR-2025direct anomaly34
anomaly detectionanomalousvideo anomaly
PDFarXiv

Anomize: Better Open Vocabulary Video Anomaly Detection

Fei Li, Wenxuan Liu, Jingjing Chen +4

CVPR-2025direct anomaly24
anomaly detectionvideo anomaly
PDFarXiv

Sign in to access this content

Sign in