Nowcasting is the prediction of the present and the very near future of an indicator. Traffic Nowcasting is the prediction of various traffic factors occurring in the near future. This paper describes our approach, to predict short term city-wide high resolution traffic states with the static and dynamic information provided. We achieve this by utilizing the U-Net architecture to build a deep CNN model; test it on different cities to evaluate accuracies; and average the results at the end. With this, the model is better trained and will return more accurate, generalized results for different cities. The models are trained on traffic datasets provided by Traffic4Cast 2021 challenge. Thus, the aim of this project is to build a system for pred...
In this research, traffic data is formatted as a graph network problem and graph neural networks are...
Traffic problems continue to deteriorate because of the increasing population in urban areas that re...
This paper proposes a convolutional neural network (CNN)-based method that learns traffic as images ...
Traffic information is of great importance for urban cities, and accurate prediction of urban traffi...
Timely forecast of traffic is very much needed for smart cities, which allows travelers and governme...
City-scale traffic prediction is an important task for public safety, traffic management, and deploy...
Smart city visions aim to offer citizens with intelligent services in various aspects of life. The s...
Traffic prediction plays a crucial role in an intelligent transportation system (ITS) for enabling a...
Traffic parameter forecasting is critical to effective traffic management but is a challenging task ...
Predicting urban traffic is of great importance to smart city systems and public security; however, ...
The vehicular adhoc network (VANET) is an emerging research topic in the intelligent transportation ...
Traffic congestion is a major concern, especially in large cities. To relieve a city of congestion i...
In the past few years, Deep learning has re-emerged as a powerful tool to solve complex problems and...
Traffic flow forecasting is fundamental to today's Intelligent Transportation Systems (ITS). It invo...
Traffic management is being more important than ever, especially in overcrowded big cities with over...
In this research, traffic data is formatted as a graph network problem and graph neural networks are...
Traffic problems continue to deteriorate because of the increasing population in urban areas that re...
This paper proposes a convolutional neural network (CNN)-based method that learns traffic as images ...
Traffic information is of great importance for urban cities, and accurate prediction of urban traffi...
Timely forecast of traffic is very much needed for smart cities, which allows travelers and governme...
City-scale traffic prediction is an important task for public safety, traffic management, and deploy...
Smart city visions aim to offer citizens with intelligent services in various aspects of life. The s...
Traffic prediction plays a crucial role in an intelligent transportation system (ITS) for enabling a...
Traffic parameter forecasting is critical to effective traffic management but is a challenging task ...
Predicting urban traffic is of great importance to smart city systems and public security; however, ...
The vehicular adhoc network (VANET) is an emerging research topic in the intelligent transportation ...
Traffic congestion is a major concern, especially in large cities. To relieve a city of congestion i...
In the past few years, Deep learning has re-emerged as a powerful tool to solve complex problems and...
Traffic flow forecasting is fundamental to today's Intelligent Transportation Systems (ITS). It invo...
Traffic management is being more important than ever, especially in overcrowded big cities with over...
In this research, traffic data is formatted as a graph network problem and graph neural networks are...
Traffic problems continue to deteriorate because of the increasing population in urban areas that re...
This paper proposes a convolutional neural network (CNN)-based method that learns traffic as images ...