Recently, the correct estimation of traffic flow has begun to be considered an essential component in intelligent transportation systems. In this paper, a new statistical method to predict traffic flows using time series analyses and geometric correlations is proposed. The novelty of the proposed method is two-fold: (1) a 3D heat map is designed to describe the traffic conditions between roads, which can effectively represent the correlations between spatially- and temporally-adjacent traffic states; and (2) the relationship between the adjacent roads on the spatiotemporal domain is represented by cliques in MRF and the clique parameters are obtained by example-based learning. In order to assess the validity of the proposed method, it is te...
We develop a Kalman filter for predicting traffic flow at urban arterials based on data obtained fro...
The congestion in urban road networks are common problem across all urban centers. Understanding the...
Short-term traffic forecasting plays an important part in intelligent transportation systems. Spatio...
Recently, the correct estimation of traffic flow has begun to be considered an essential component i...
© 2018 IEEE. Considering spatio-temporal correlation between traffic in different roads has benefit ...
Nowadays traffic congestion has become significantly worse. Not only has it led to economic losses, ...
© 2018 IEEE. This paper proposes a unified spatio-temporal model on the basis of STARIMA (Space-Time...
In this paper, a fusion deep learning model considering spatial–temporal correlation is proposed to ...
Traffic flow prediction is a fundamental problem for efficient transportation control and management...
Road section data packet is very necessary for the estimation and prediction in short-time traffic c...
In this paper, we address the problem of short-term traffic flow prediction since accurate predictio...
With the development of big data, large-scale traffic flow forecasting which is a part of smart tran...
Many methods of traffic prediction have been proposed over the years, from the time series models ov...
Abstract To improve the prediction accuracy of traffic flow under the influence of nearby time traff...
Intelligent transportation systems need to realize accurate traffic congestion prediction. The spati...
We develop a Kalman filter for predicting traffic flow at urban arterials based on data obtained fro...
The congestion in urban road networks are common problem across all urban centers. Understanding the...
Short-term traffic forecasting plays an important part in intelligent transportation systems. Spatio...
Recently, the correct estimation of traffic flow has begun to be considered an essential component i...
© 2018 IEEE. Considering spatio-temporal correlation between traffic in different roads has benefit ...
Nowadays traffic congestion has become significantly worse. Not only has it led to economic losses, ...
© 2018 IEEE. This paper proposes a unified spatio-temporal model on the basis of STARIMA (Space-Time...
In this paper, a fusion deep learning model considering spatial–temporal correlation is proposed to ...
Traffic flow prediction is a fundamental problem for efficient transportation control and management...
Road section data packet is very necessary for the estimation and prediction in short-time traffic c...
In this paper, we address the problem of short-term traffic flow prediction since accurate predictio...
With the development of big data, large-scale traffic flow forecasting which is a part of smart tran...
Many methods of traffic prediction have been proposed over the years, from the time series models ov...
Abstract To improve the prediction accuracy of traffic flow under the influence of nearby time traff...
Intelligent transportation systems need to realize accurate traffic congestion prediction. The spati...
We develop a Kalman filter for predicting traffic flow at urban arterials based on data obtained fro...
The congestion in urban road networks are common problem across all urban centers. Understanding the...
Short-term traffic forecasting plays an important part in intelligent transportation systems. Spatio...