On-board sensors in vehicles are able to capture real-time data representations of variables conditioning the traffic flow. Extracting knowledge by combining data from different vehicles, together with machine learning algorithms, will help both to optimise transportation systems and to maximise the drivers' and passengers' comfort. This paper provides a summary of the most common multivariate outlier detection methods and applies them to data captured from sensor vehicles with the aim to find and identify different abnormal driving conditions like traffic jams. Outlier detection represents an important task in discovering useful and valuable information, as has been proven in numerous researches. This study is based on the combination of o...
The automatic detection of road related information using data from sensors while driving has many p...
In traffic monitoring data analysis, the magnitude of traffic density plays an important role in det...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables ...
On-board sensors in vehicles are able to capture real-time data representations of variables conditi...
© 2019 IEEE. This paper reviews the use of outlier detection approaches in urban traffic analysis. W...
Abstract The outliers in traffic flow represent the anomalies or emergencies in the road. The detect...
The automatic generation of street networks is attracting the attention of research and industry com...
This paper reports on the application of suitable techniques for detecting outliers and suggesting e...
The accessibility of large-scale Spatio-Temporal GPS data provides us information for analyzing the ...
Outlier detection is an extensive research area, which has been intensively studied in several domai...
This article introduces two new problems related to trajectory outlier detection: (1) group trajecto...
Vehicle traffic flow prediction is an essential task for several applications including city plannin...
Abstract — Outlier detection in vehicle traffic data is a practical problem that has gained traction...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables...
As part of a SERC funded project this study aims to summarise the most relevant and recent literatur...
The automatic detection of road related information using data from sensors while driving has many p...
In traffic monitoring data analysis, the magnitude of traffic density plays an important role in det...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables ...
On-board sensors in vehicles are able to capture real-time data representations of variables conditi...
© 2019 IEEE. This paper reviews the use of outlier detection approaches in urban traffic analysis. W...
Abstract The outliers in traffic flow represent the anomalies or emergencies in the road. The detect...
The automatic generation of street networks is attracting the attention of research and industry com...
This paper reports on the application of suitable techniques for detecting outliers and suggesting e...
The accessibility of large-scale Spatio-Temporal GPS data provides us information for analyzing the ...
Outlier detection is an extensive research area, which has been intensively studied in several domai...
This article introduces two new problems related to trajectory outlier detection: (1) group trajecto...
Vehicle traffic flow prediction is an essential task for several applications including city plannin...
Abstract — Outlier detection in vehicle traffic data is a practical problem that has gained traction...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables...
As part of a SERC funded project this study aims to summarise the most relevant and recent literatur...
The automatic detection of road related information using data from sensors while driving has many p...
In traffic monitoring data analysis, the magnitude of traffic density plays an important role in det...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables ...