International audienceIntelligent transportation systems (ITS) enhance safety, comfort, transport efficiency, and environmental conservation by allowing vehicles to communicate wirelessly with other vehicles and road infrastructure. Cooperative awareness messages (CAMs) contain information about vehicles status, which can reveal road anomalies. Knowing the location, time, and frequency of these anomalies is valuable to road users and road authorities, and timely detection is critical for emergency response teams, resulting in improved efficiency in rescue operations. An enhanced locally selective combination in parallel outlier ensembles (ELSCP) technique is proposed for data stream anomaly detection. A data-driven approach is considered wi...
International audienceCooperative Intelligent Transport Network is one of the most challenging issue...
A great deal of research attention has been paid to data mining on data streams in recent years. In ...
We identify and formulate a novel problem: crosschannel anomaly detection from multiple data channel...
© 2015 Dr. Mahsa SalehiAnomaly detection in data streams plays a vital role in on-line data mining a...
Mobile communication networks produce massive amounts of data which may be useful in identifying the...
Anomaly detection in video data has been a challenge always. After the introduction of many state-o...
Anomaly detection is critical for intelligent vehicle (IV) collaboration. Forming clusters/platoons,...
Multivariate time series traffic dataset is usually large with multiple feature dimensions for long ...
Dans cette thèse, nous abordons le problème de l'analyse des données IoT en nous concentrant sur la ...
Connected and Automated Vehicles (CAVs), owing to their characteristics such as seamless and real-ti...
We identify and formulate a novel problem: cross channel anomaly detection from multiple data channe...
The data deluge has created a great challenge for data mining applications wherein the rare topics o...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables ...
International audienceSmart agriculture technologies are effective instruments for increasing farm s...
© 2017 IEEE. When analyzing streaming data, the results can depreciate in value faster than the anal...
International audienceCooperative Intelligent Transport Network is one of the most challenging issue...
A great deal of research attention has been paid to data mining on data streams in recent years. In ...
We identify and formulate a novel problem: crosschannel anomaly detection from multiple data channel...
© 2015 Dr. Mahsa SalehiAnomaly detection in data streams plays a vital role in on-line data mining a...
Mobile communication networks produce massive amounts of data which may be useful in identifying the...
Anomaly detection in video data has been a challenge always. After the introduction of many state-o...
Anomaly detection is critical for intelligent vehicle (IV) collaboration. Forming clusters/platoons,...
Multivariate time series traffic dataset is usually large with multiple feature dimensions for long ...
Dans cette thèse, nous abordons le problème de l'analyse des données IoT en nous concentrant sur la ...
Connected and Automated Vehicles (CAVs), owing to their characteristics such as seamless and real-ti...
We identify and formulate a novel problem: cross channel anomaly detection from multiple data channe...
The data deluge has created a great challenge for data mining applications wherein the rare topics o...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables ...
International audienceSmart agriculture technologies are effective instruments for increasing farm s...
© 2017 IEEE. When analyzing streaming data, the results can depreciate in value faster than the anal...
International audienceCooperative Intelligent Transport Network is one of the most challenging issue...
A great deal of research attention has been paid to data mining on data streams in recent years. In ...
We identify and formulate a novel problem: crosschannel anomaly detection from multiple data channel...