FedTDP: a Privacy-Preserving and Unified Framework for Trajectory Data Preparation Via Federated Learning
Trajectory data, which capture the movement patterns of people and vehicles over time and space, are crucial for applications like traffic optimization and urban planning. However, issues such as noise and incompleteness often compromise data quality, leading to inaccurate trajectory analyses and...