This paper presents a hybrid approach to automatic incident detection (AID) in transportation systems. It combines time series analysis (TSA) and machine learning (ML) techniques in light of the fault diagnosis theory. In this approach, the time series component is to forecast the normal traffic for the current time point based on prior (normal) traffic. The ML component aims to detect incidents using features of real-time traffic, predicted normal traffic, as well as differences between the two. We validate our approach using a real-world data set collected in previous research. The results show that the hybrid approach is able to detect incidents more accurately [higher detection rate (DR)] and faster (shorter mean time to detect) under t...
Presented at the Georgia Tech Career, Research, and Innovation Development Conference (CRIDC), Janua...
Traffic incident analysis is a crucial task in traffic management centers (TMCs) that typically mana...
This paper explores the performance of a relatively new-generation of algorithms for automated freew...
Traffic incidents have negative impacts on traffic flow and the gross domestic product of most count...
Traffic incident detection is one of the major research areas of intelligent transportation systems ...
Real-time incident detection on freeways plays an important part in any modern traffic management op...
Incident detection is a key component in real-time traffic management systems that allows efficient ...
A new automatic incident detection algorithm based on the available data originally collected for jo...
Although there is a large variation in traffic flow patterns, we can distinguish two main types: rec...
The high cost of congestion caused by incidents such as accidents, disabled vehicles, construction w...
The paper analyses the real-time detection of incidents in road traffic. A general model is presente...
Automatic Incident Detection Algorithms (AIDA) have been part of freeway management system software ...
AbstractThis research paper investigates a hybrid model using logistic regression with a wavelet-bas...
US Transportation Collection2020PDFTech ReportGuin, AngshumanHunter, MichaelKim, Han GyolChoudhary, ...
The increasing contribution of incidents to freeway congestion has generated strong interest in the ...
Presented at the Georgia Tech Career, Research, and Innovation Development Conference (CRIDC), Janua...
Traffic incident analysis is a crucial task in traffic management centers (TMCs) that typically mana...
This paper explores the performance of a relatively new-generation of algorithms for automated freew...
Traffic incidents have negative impacts on traffic flow and the gross domestic product of most count...
Traffic incident detection is one of the major research areas of intelligent transportation systems ...
Real-time incident detection on freeways plays an important part in any modern traffic management op...
Incident detection is a key component in real-time traffic management systems that allows efficient ...
A new automatic incident detection algorithm based on the available data originally collected for jo...
Although there is a large variation in traffic flow patterns, we can distinguish two main types: rec...
The high cost of congestion caused by incidents such as accidents, disabled vehicles, construction w...
The paper analyses the real-time detection of incidents in road traffic. A general model is presente...
Automatic Incident Detection Algorithms (AIDA) have been part of freeway management system software ...
AbstractThis research paper investigates a hybrid model using logistic regression with a wavelet-bas...
US Transportation Collection2020PDFTech ReportGuin, AngshumanHunter, MichaelKim, Han GyolChoudhary, ...
The increasing contribution of incidents to freeway congestion has generated strong interest in the ...
Presented at the Georgia Tech Career, Research, and Innovation Development Conference (CRIDC), Janua...
Traffic incident analysis is a crucial task in traffic management centers (TMCs) that typically mana...
This paper explores the performance of a relatively new-generation of algorithms for automated freew...