TL;DR
This paper introduces a lightweight neural collaborative filtering model for detecting anomalies in human trajectories, addressing challenges of data sparsity and lack of interpretability in existing methods.
Contribution
It presents a novel neural collaborative filtering approach tailored for human trajectory anomaly detection, capable of handling sparse data and providing explainability.
Findings
Outperforms state-of-the-art methods on real-world datasets
Effectively models normal human mobility patterns
Handles cold start scenarios with limited data
Abstract
Human trajectory anomaly detection has become increasingly important across a wide range of applications, including security surveillance and public health. However, existing trajectory anomaly detection methods are primarily focused on vehicle-level traffic, while human-level trajectory anomaly detection remains under-explored. Since human trajectory data is often very sparse, machine learning methods have become the preferred approach for identifying complex patterns. However, concerns regarding potential biases and the robustness of these models have intensified the demand for more transparent and explainable alternatives. In response to these challenges, our research focuses on developing a lightweight anomaly detection model specifically designed to detect anomalies in human trajectories. We propose a Neural Collaborative Filtering approach to model and predict normal mobility. Our…
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