Occlusion-Aware 3D Motion Interpretation for Abnormal Behavior Detection
Su Li, Wang Liang, Jianye Wang, Ziheng Zhang, Lei Zhang

TL;DR
This paper introduces OAD2D, a novel method for detecting abnormal human behaviors from monocular videos by reconstructing 3D motion and posture, effectively handling occlusions and providing semantically interpretable results.
Contribution
OAD2D combines 3D pose reconstruction with a Motion to Text model using VQVAE, improving abnormal behavior detection robustness and interpretability under occlusion conditions.
Findings
Achieves an F1-Score of 0.94 on NTU RGB+D dataset.
Robust against severe and self-occlusions in motion analysis.
Effectively reconstructs 3D human motion trajectories.
Abstract
Estimating abnormal posture based on 3D pose is vital in human pose analysis, yet it presents challenges, especially when reconstructing 3D human poses from monocular datasets with occlusions. Accurate reconstructions enable the restoration of 3D movements, which assist in the extraction of semantic details necessary for analyzing abnormal behaviors. However, most existing methods depend on predefined key points as a basis for estimating the coordinates of occluded joints, where variations in data quality have adversely affected the performance of these models. In this paper, we present OAD2D, which discriminates against motion abnormalities based on reconstructing 3D coordinates of mesh vertices and human joints from monocular videos. The OAD2D employs optical flow to capture motion prior information in video streams, enriching the information on occluded human movements and ensuring…
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