Weijia ZhangHao LiuYanchi LiuJingbo ZhouTong XuHui Xiong
The ability to predict city-wide parking availability is crucial for the successful development of Parking Guidance and Information (PGI) systems. The effective prediction of city-wide parking availability can boost parking efficiency, improve urban planning, and ultimately alleviate city congestion. However, it is a non-trivial task for city-wide parking availability prediction because of three major challenges: 1) the non-euclidean spatial autocorrelation among parking lots, 2) the dynamic temporal autocorrelation inside of and between parking lots, and 3) the scarcity of information about real-time parking availability obtained from real-time sensors (e.g., camera, ultrasonic sensor, and bluetooth sensor). To this end, we propose a Semi-supervised Hierarchical Recurrent Graph Neural Network-X ( SHARE-X ) to predict parking availability of each parking lot within a city. Specifically, we first propose a hierarchical graph convolution module to model the non-euclidean spatial autocorrelation among parking lots. Along this line, a contextual graph convolution block and a multi-resolution soft clustering graph convolution block are respectively proposed to capture local and global spatial dependencies between parking lots. Moreover, we devise a hierarchical attentive recurrent network module to incorporate both short and long-term dynamic temporal dependencies of parking lots. Additionally, a parking availability approximation module is introduced to estimate missing real-time parking availabilities from both spatial and temporal domains. Finally, experiments on two real-world datasets demonstrate that SHARE-X outperforms eight state-of-the-art baselines in parking availability prediction.
Weijia ZhangHao LiuYanchi LiuJingbo ZhouHui Xiong
Jindong HanHao LiuHaoyi XiongJing Yang
Sambaran BandyopadhyayManasvi AggarwalM. Narasimha Murty
Guanlin ChenSheng ZhangWenyong WengWujian Yang
Wujian YangWenyong WengSheng ZhangGuanlin Chen