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Papers/PoseWatch: A Transformer-based Architecture for Human-cent...

PoseWatch: A Transformer-based Architecture for Human-centric Video Anomaly Detection Using Spatio-temporal Pose Tokenization

Ghazal Alinezhad Noghre, Armin Danesh Pazho, Hamed Tabkhi

2024-08-27Video Anomaly DetectionAnomaly Detection
PaperPDFCode

Abstract

Video Anomaly Detection (VAD) presents a significant challenge in computer vision, particularly due to the unpredictable and infrequent nature of anomalous events, coupled with the diverse and dynamic environments in which they occur. Human-centric VAD, a specialized area within this domain, faces additional complexities, including variations in human behavior, potential biases in data, and substantial privacy concerns related to human subjects. These issues complicate the development of models that are both robust and generalizable. To address these challenges, recent advancements have focused on pose-based VAD, which leverages human pose as a high-level feature to mitigate privacy concerns, reduce appearance biases, and minimize background interference. In this paper, we introduce PoseWatch, a novel transformer-based architecture designed specifically for human-centric pose-based VAD. PoseWatch features an innovative Spatio-Temporal Pose and Relative Pose (ST-PRP) tokenization method that enhances the representation of human motion over time, which is also beneficial for broader human behavior analysis tasks. The architecture's core, a Unified Encoder Twin Decoders (UETD) transformer, significantly improves the detection of anomalous behaviors in video data. Extensive evaluations across multiple benchmark datasets demonstrate that PoseWatch consistently outperforms existing methods, establishing a new state-of-the-art in pose-based VAD. This work not only demonstrates the efficacy of PoseWatch but also highlights the potential of integrating Natural Language Processing techniques with computer vision to advance human behavior analysis.

Results

TaskDatasetMetricValueModel
Anomaly DetectionHR-ShanghaiTechAUC87.23PoseWatch-H
Anomaly DetectionShanghaiTech CampusAUC85.75PoseWatch-H
Anomaly DetectionCHADAUC67.04PoseWatch-H
3D Anomaly DetectionHR-ShanghaiTechAUC87.23PoseWatch-H
3D Anomaly DetectionShanghaiTech CampusAUC85.75PoseWatch-H
3D Anomaly DetectionCHADAUC67.04PoseWatch-H
Video Anomaly DetectionHR-ShanghaiTechAUC87.23PoseWatch-H
Video Anomaly DetectionShanghaiTech CampusAUC85.75PoseWatch-H
Video Anomaly DetectionCHADAUC67.04PoseWatch-H

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