This paper examines the theory and application of a recently developed machine learning technique namely Relevance Vector Machines (RVMs) in the task of traffic conditions classification. Traffic conditions are labelled as dangerous (i.e. probably leading to a collision) and safe (i.e. a normal driving) based on 15-minute measurements of average speed and volume. Two different RVM algorithms are trained with two real-world datasets and validated with one real-world dataset describing traffic conditions of a motorway and two A-class roads in the UK. The performance of these classifiers is compared to the popular and successfully applied technique of Support vector machines (SVMs). The main findings indicate that RVMs could successfully be em...
International audienceUrban traffic forecasting models generally follow either a Gaussian Mixture Mo...
Traffic crashes account for most of casualties and injuries worldwide, and there has been growing co...
An innovative approach for real-time road safety analysis is presented in this work. Unlike traditio...
This paper examines the theory and application of a recently developed machine learning technique na...
Useful information has been extracted from the road accident data in United Kingdom (UK), using data...
Current approaches to estimate the probability of a traffic collision occurring in real-time primari...
Current approaches to estimate the probability of a traffic collision occurring in real-time primari...
Traffic incidents such as accidents, vehicle breakdowns, unattended vehicles, and so on, tends to ha...
Traffic accidents impose significant problems in our daily life due to the huge social, environmenta...
Useful information has been extracted from the road accident data in United Kingdom (UK), using data...
Abstract Real-time conflict prediction models (RTConfPM) are an innovative approach to deal with rea...
Recently, technologies for predicting traffic conflicts in real-time have been gaining momentum due ...
Traffic accident is a very difficult problem to handle on a large scale in a country. Indonesia is o...
During daily work at a Transport Management Centre (TMC), the operators have to record and process a...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
International audienceUrban traffic forecasting models generally follow either a Gaussian Mixture Mo...
Traffic crashes account for most of casualties and injuries worldwide, and there has been growing co...
An innovative approach for real-time road safety analysis is presented in this work. Unlike traditio...
This paper examines the theory and application of a recently developed machine learning technique na...
Useful information has been extracted from the road accident data in United Kingdom (UK), using data...
Current approaches to estimate the probability of a traffic collision occurring in real-time primari...
Current approaches to estimate the probability of a traffic collision occurring in real-time primari...
Traffic incidents such as accidents, vehicle breakdowns, unattended vehicles, and so on, tends to ha...
Traffic accidents impose significant problems in our daily life due to the huge social, environmenta...
Useful information has been extracted from the road accident data in United Kingdom (UK), using data...
Abstract Real-time conflict prediction models (RTConfPM) are an innovative approach to deal with rea...
Recently, technologies for predicting traffic conflicts in real-time have been gaining momentum due ...
Traffic accident is a very difficult problem to handle on a large scale in a country. Indonesia is o...
During daily work at a Transport Management Centre (TMC), the operators have to record and process a...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
International audienceUrban traffic forecasting models generally follow either a Gaussian Mixture Mo...
Traffic crashes account for most of casualties and injuries worldwide, and there has been growing co...
An innovative approach for real-time road safety analysis is presented in this work. Unlike traditio...