Patterns of traffic flow trajectories play an essential role in analysing traffic monitoring data in transportation studies. This research presents a data-adaptive clustering approach to explore traffic flow patterns and a unified algorithm to impute missing values for incomplete traffic flow trajectories. We recommend using subspace-projected functional data clustering with the assumption that each observed daily traffic flow trajectory is a realization of a random function sampled from a mixture of stochastic processes, and each subprocess represents a cluster subspace spanned by the mean function and eigenfunctions of the covariance kernel of the random trajectories. The unified algorithm combines probabilistic functional clustering with...
Many traffic management strategies, such as the deployment of intelligent transportation systems, re...
Missing value imputation approaches have been widely used to support and maintain the quality of tra...
There are increasing concerns about missing traffic data in recent years. In this paper, a robust mi...
[[abstract]]Missing values and outliers are frequently encountered in traffic monitoring data. We ap...
[[abstract]]Missing values and outliers are frequently encountered in traffic monitoring data. We ap...
AbstractThis paper investigates application of clustering techniques in partitioning traffic flow da...
Research on traffic data analysis is becoming more available and important. One of the key challenge...
In traffic monitoring data analysis, the magnitude of traffic density plays an important role in det...
Functional Data Analysis (FDA) is a collection of statistical techniques for the analysis of informa...
Recently, surveillance on moving vehicles for traffic flow monitoring has emerging in rapid rate. A ...
Traffic flow is one of the fundamental parameters for traffic analysis and planning. With the rapid ...
This paper presents a trajectory clustering method to discover spatial and temporal travel patterns ...
AbstractThis paper presents a trajectory clustering method to discover spatial and temporal travel p...
This paper proposes a novel application of Visual Assessment of Tendency (VAT)-based hierarchical cl...
Nowadays traffic congestion has become significantly worse. Not only has it led to economic losses, ...
Many traffic management strategies, such as the deployment of intelligent transportation systems, re...
Missing value imputation approaches have been widely used to support and maintain the quality of tra...
There are increasing concerns about missing traffic data in recent years. In this paper, a robust mi...
[[abstract]]Missing values and outliers are frequently encountered in traffic monitoring data. We ap...
[[abstract]]Missing values and outliers are frequently encountered in traffic monitoring data. We ap...
AbstractThis paper investigates application of clustering techniques in partitioning traffic flow da...
Research on traffic data analysis is becoming more available and important. One of the key challenge...
In traffic monitoring data analysis, the magnitude of traffic density plays an important role in det...
Functional Data Analysis (FDA) is a collection of statistical techniques for the analysis of informa...
Recently, surveillance on moving vehicles for traffic flow monitoring has emerging in rapid rate. A ...
Traffic flow is one of the fundamental parameters for traffic analysis and planning. With the rapid ...
This paper presents a trajectory clustering method to discover spatial and temporal travel patterns ...
AbstractThis paper presents a trajectory clustering method to discover spatial and temporal travel p...
This paper proposes a novel application of Visual Assessment of Tendency (VAT)-based hierarchical cl...
Nowadays traffic congestion has become significantly worse. Not only has it led to economic losses, ...
Many traffic management strategies, such as the deployment of intelligent transportation systems, re...
Missing value imputation approaches have been widely used to support and maintain the quality of tra...
There are increasing concerns about missing traffic data in recent years. In this paper, a robust mi...