Leveraging Trajectory Prediction for Pedestrian Video Anomaly Detection
About
Video anomaly detection is a core problem in vision. Correctly detecting and identifying anomalous behaviors in pedestrians from video data will enable safety-critical applications such as surveillance, activity monitoring, and human-robot interaction. In this paper, we propose to leverage trajectory localization and prediction for unsupervised pedestrian anomaly event detection. Different than previous reconstruction-based approaches, our proposed framework rely on the prediction errors of normal and abnormal pedestrian trajectories to detect anomalies spatially and temporally. We present experimental results on real-world benchmark datasets on varying timescales and show that our proposed trajectory-predictor-based anomaly detection pipeline is effective and efficient at identifying anomalous activities of pedestrians in videos. Code will be made available at https://github.com/akanuasiegbu/Leveraging-Trajectory-Prediction-for-Pedestrian-Video-Anomaly-Detection.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Anomaly Detection | Avenue | Frame-AUC72 | 29 | |
| Pedestrian Anomaly Detection | ShanghaiTech | AUC0.719 | 8 |