Traffic Data
Traffic data analysis focuses on understanding and predicting traffic patterns for improved transportation management and urban planning. Current research emphasizes developing sophisticated models, including graph neural networks, transformers, and large language models, to analyze diverse data sources (e.g., GPS trajectories, sensor readings, textual information) and address challenges like data sparsity, missing values, and the need for real-time predictions. These advancements enable more accurate traffic forecasting, incident detection, and resource optimization, impacting areas such as autonomous driving, traffic signal control, and urban infrastructure planning.
Papers
A Latent Feature Analysis-based Approach for Spatio-Temporal Traffic Data Recovery
Yuting Ding, Di Wu
Traffic Analytics Development Kits (TADK): Enable Real-Time AI Inference in Networking Apps
Kun Qiu, Harry Chang, Ying Wang, Xiahui Yu, Wenjun Zhu, Yingqi Liu, Jianwei Ma, Weigang Li, Xiaobo Liu, Shuo Dai