Qinyang WANG
Hangzhou Dianzi University, School of Computer Science
Jing CHEN
Hangzhou Dianzi University, School of Computer Science
Ying SONG
Xidian University, Hangzhou Institute of Technology
Xiaodong LI
Hangzhou Dianzi University, School of Computer Science
Wenqiang XU
China Jiliang University, College of Economics and Management
This paper presents a novel traffic flow prediction method emphasising heterogeneous vehicle characteristics and visual density features. Traditional models often overlook the variety of vehicles, resulting in inaccuracies. The proposed method utilises visual techniques to quantify traffic features, such as mixed flow and vehicle accumulation, enhancing dynamic density estimation and flow fluidity. We introduce a spatio-temporal prediction model that integrates various data types, capturing complex dependencies and improving accuracy. This research advances traffic flow prediction by considering the diverse nature of vehicles and leveraging visual data, offering valuable insights for intelligent transportation systems. Experimental results demonstrate the superiority of this approach over conventional methods, especially in capturing traffic flow fluctuations.
Guest Editor: Eleonora Papadimitriou, PhD
Editors: Marko Matulin, PhD, Dario Babić, PhD, Marko Ševrović, PhD
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