Context-Aware Trajectory Anomaly Detection (2410.19136v1)
Abstract: Trajectory anomaly detection is crucial for effective decision-making in urban and human mobility management. Existing methods of trajectory anomaly detection generally focus on training a trajectory generative model and evaluating the likelihood of reconstructing a given trajectory. However, previous work often lacks important contextual information on the trajectory, such as the agent's information (e.g., agent ID) or geographic information (e.g., Points of Interest (POI)), which could provide additional information on accurately capturing anomalous behaviors. To fill this gap, we propose a context-aware anomaly detection approach that models contextual information related to trajectories. The proposed method is based on a trajectory reconstruction framework guided by contextual factors such as agent ID and contextual POI embedding. The injection of contextual information aims to improve the performance of anomaly detection. We conducted experiments in two cities and demonstrated that the proposed approach significantly outperformed existing methods by effectively modeling contextual information. Overall, this paper paves a new direction for advancing trajectory anomaly detection.
- Jinwon An and Sungzoon Cho. 2015. Variational autoencoder based anomaly detection using reconstruction probability. Special lecture on IE 2, 1 (2015), 1–18.
- A review on outlier/anomaly detection in time series data. ACM CSUR 54, 3 (2021), 1–33.
- Clustering Human Mobility with Multiple Spaces. In Proc. of IEEE Big Data 2022. 575–584.
- Unified Modeling and Clustering of Mobility Trajectories with Spatiotemporal Point Processes. In Proc. of SIAM SDM 2024. 625–633.
- Deep industrial image anomaly detection: A survey. Machine Intelligence Research 21, 1 (2024), 104–135.
- Detect: Deep trajectory clustering for mobility-behavior analysis. In Proc. of IEEE Big Data 2019. 988–997.
- A survey of predictive modelling under imbalanced distributions. ACM Comput Surveys 49 (2016), 31–48.
- Online anomalous subtrajectory detection on road networks with deep reinforcement learning. In Proc. of IEEE ICDE 2023. 246–258.
- Unsupervised Anomaly Detection Using Variational Auto-Encoder based Feature Extraction. In Proc. of IEEE ICPHM 2019. 1–7.
- Deep Learning for Trajectory Data Management and Mining: A Survey and Beyond. arXiv:2403.14151 [cs.LG]
- Neural collaborative filtering. In Proc. of WWW 2017. 173–182.
- Online anomalous trajectory detection with deep generative sequence modeling. In Proc. of IEEE ICDE 2020. 949–960.
- Mining interesting locations and travel sequences from GPS trajectories. In Proc. of WWW 2009 (Madrid, Spain). ACM, 791–800.
- SpaBERT: A Pretrained Language Model from Geographic Data for Geo-Entity Representation. In Findings of EMNLP 2022. ACL, Abu Dhabi, United Arab Emirates.
- Diederik P Kingma and Max Welling. 2013. Auto-Encoding Variational Bayes. arXiv:1312.6114 [stat.ML]