Urban road networks are often affected by disruptions such as accidents and roadworks, giving rise to congestion and delays, which can, in turn, create a wide range of negative impacts to the economy, environment, safety and security. Accurate detection of the onset of traffic anomalies, specifically Recurrent Congestion (RC) and Nonrecurrent Congestion (NRC) in the traffic networks, is an important ITS function to facilitate proactive intervention measures to reduce the level of severity of congestion. A substantial body of literature is dedicated to models with varying levels of complexity that attempt to identify such anomalies. Given the complexity of the problem, however, very less effort is dedicated to the development of methods that...
We describe and validate a novel data-driven approach to the real time detection and classification ...
Existing data-driven methods for traffic anomaly detection are modeled on taxi trajectory datasets. ...
This paper presents a novel deep learning architecture for identifying outliers in the context of in...
Urban traffic congestion has become a criticalissue that not only affects the quality of daily lives...
Congestion prediction represents a major priority for traffic management centres around the world t...
Traffic incidents which commonly result fromtraffic accidents, anomalous construction events and inc...
AbstractNon-Recurrent Congestion events (NRCs) frustrate commuters, companies and traffic operators ...
Traffic flow analysis is fundamental for urban planning and management of road traffic infrastructur...
Spatio-temporal problems arise in broad areas of environmental and transportation systems. These pro...
In this paper, we design an Anomaly Detection (AD) framework for mobile data traffic, capable of ide...
Deep neural networks have recently demonstrated the traffic prediction capability with the time ser...
Motivation. Traffic congestion on roadways has been identified by the US Department of Transportatio...
AbstractTraffic congestion occurs frequently in urban settings, and is not always caused by traffic ...
Presented herein are innovative techniques for analyzing network traffic and identifying anomalous p...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables...
We describe and validate a novel data-driven approach to the real time detection and classification ...
Existing data-driven methods for traffic anomaly detection are modeled on taxi trajectory datasets. ...
This paper presents a novel deep learning architecture for identifying outliers in the context of in...
Urban traffic congestion has become a criticalissue that not only affects the quality of daily lives...
Congestion prediction represents a major priority for traffic management centres around the world t...
Traffic incidents which commonly result fromtraffic accidents, anomalous construction events and inc...
AbstractNon-Recurrent Congestion events (NRCs) frustrate commuters, companies and traffic operators ...
Traffic flow analysis is fundamental for urban planning and management of road traffic infrastructur...
Spatio-temporal problems arise in broad areas of environmental and transportation systems. These pro...
In this paper, we design an Anomaly Detection (AD) framework for mobile data traffic, capable of ide...
Deep neural networks have recently demonstrated the traffic prediction capability with the time ser...
Motivation. Traffic congestion on roadways has been identified by the US Department of Transportatio...
AbstractTraffic congestion occurs frequently in urban settings, and is not always caused by traffic ...
Presented herein are innovative techniques for analyzing network traffic and identifying anomalous p...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables...
We describe and validate a novel data-driven approach to the real time detection and classification ...
Existing data-driven methods for traffic anomaly detection are modeled on taxi trajectory datasets. ...
This paper presents a novel deep learning architecture for identifying outliers in the context of in...