OD flows provide important information for traffic management and planning. The prediction of dynamic OD matrices gives the possibility to apply anticipatory traffic management measures. In this paper, we propose an OD prediction approach based on the data obtained by Automated Number Plate Recognition (ANPR) cameras. The principal component analysis (PCA) is applied to reduce the dimension of the original OD matrices and to separate the main structure patterns from the noisier components. A state-space model is established for the main structure patterns and the structure deviations, and is incorporated in the Kalman filter framework to make predictions. We further propose three K-Nearest Neighbour (K-NN) based long-term pattern recognitio...
In this paper a new methodology to estimate/update and forecast dynamic real time origin–destination...
Time-Dependent Origin-Destination (OD) matrices are a key input to Dynamic Traffic Models. Microscop...
The growth of vehicle mobility in the past decades and increased traffic complexity leads to a need ...
The paper tackles OD matrix estimation starting from the measures of flow on road network links and ...
Accurate Origin-Destination (OD) prediction is significant for effective traffic monitor, which can ...
The idea behind this report is based on the fact that it is not only the number of users in the traf...
In previous work, we have explored the idea of dimensionality reduction and approximation of OD dema...
This paper attempts to deal with traffic Origin Destination (OD) matrix estimation starting from the...
With the development of big data, large-scale traffic flow forecasting which is a part of smart tran...
Given a road network, a fundamental object of interest is the matrix of origin destination (OD) flow...
Traffic prediction lies at the core of many intelligent transport systems (ITS). Commonly deployed p...
AbstractTo more accurately describe the evolution process of traffic flow, a novel method was propos...
Predicting the travel demand plays an indispensable role in urban transportation planning. Data coll...
AbstractThe key of the planning of public transport systems is the accurate prediction of the traffi...
Since OD matrices are not directly observable, indirect procedures have been developed to estimate O...
In this paper a new methodology to estimate/update and forecast dynamic real time origin–destination...
Time-Dependent Origin-Destination (OD) matrices are a key input to Dynamic Traffic Models. Microscop...
The growth of vehicle mobility in the past decades and increased traffic complexity leads to a need ...
The paper tackles OD matrix estimation starting from the measures of flow on road network links and ...
Accurate Origin-Destination (OD) prediction is significant for effective traffic monitor, which can ...
The idea behind this report is based on the fact that it is not only the number of users in the traf...
In previous work, we have explored the idea of dimensionality reduction and approximation of OD dema...
This paper attempts to deal with traffic Origin Destination (OD) matrix estimation starting from the...
With the development of big data, large-scale traffic flow forecasting which is a part of smart tran...
Given a road network, a fundamental object of interest is the matrix of origin destination (OD) flow...
Traffic prediction lies at the core of many intelligent transport systems (ITS). Commonly deployed p...
AbstractTo more accurately describe the evolution process of traffic flow, a novel method was propos...
Predicting the travel demand plays an indispensable role in urban transportation planning. Data coll...
AbstractThe key of the planning of public transport systems is the accurate prediction of the traffi...
Since OD matrices are not directly observable, indirect procedures have been developed to estimate O...
In this paper a new methodology to estimate/update and forecast dynamic real time origin–destination...
Time-Dependent Origin-Destination (OD) matrices are a key input to Dynamic Traffic Models. Microscop...
The growth of vehicle mobility in the past decades and increased traffic complexity leads to a need ...