This paper presents a fast, memory-efficient, and worldwide map matching algorithm based on raw geographic coordinates and enriched open map data with support for trajectories on foot, by bike, and motorized vehicles. The proposed algorithm combines the Markovian behavior and the shortest path aspect while taking into account the type and direction of all road segments, information about one-way traffic, maximum allowed speed per road segment, and driving behavior. Furthermore, a self-adapting lane detection algorithm based solely on accelerometer readings is added on top of the map matching algorithm. An experimental validation consisting of 30 trajectories on foot, by bike, and by car, showed the efficiency and accuracy of the proposed al...
Markov chains have frequently been applied to match the probable routes with a set of GPS trip data ...
Real-time traffic information is important in terms of easing highway congestion, while map matching...
Lane-level map matching is essential for autonomous driving. In this paper, we propose a Hidden Mark...
Map matching can provide useful traffic information by aligning the observed trajectories of vehicle...
Modern mobile technology has enabled the collection of large scale vehicle trajectories using GPS de...
A novel map-matching algorithm is proposed, implemented and applied to global positioning system (GP...
Precise position information of moving entities on digital road networks is a vital requirement of l...
Copyright © 2006 SAE International Map matching determines which road a vehicle is on based on inacc...
© 2017 IEEE. With the advance of various location-Acquisition technologies, a myriad of GPS trajecto...
© 2016 IEEE. With the advance of various location-acquisition technologies, a myriad of GPS trajecto...
With the advance of various location-acquisition technologies, a myriad of GPS trajectories can be c...
GPS data of vehicles travelling on road networks can be used to estimate travel times. This requires...
A map-matching algorithm is an integral part of every navigation system and reconciles raw and inacc...
Map-matching is the process of aligning a sequence of observed user positions with the road network ...
In many Intelligent Transportation System (ITS) applications that crowd-source data from probe vehic...
Markov chains have frequently been applied to match the probable routes with a set of GPS trip data ...
Real-time traffic information is important in terms of easing highway congestion, while map matching...
Lane-level map matching is essential for autonomous driving. In this paper, we propose a Hidden Mark...
Map matching can provide useful traffic information by aligning the observed trajectories of vehicle...
Modern mobile technology has enabled the collection of large scale vehicle trajectories using GPS de...
A novel map-matching algorithm is proposed, implemented and applied to global positioning system (GP...
Precise position information of moving entities on digital road networks is a vital requirement of l...
Copyright © 2006 SAE International Map matching determines which road a vehicle is on based on inacc...
© 2017 IEEE. With the advance of various location-Acquisition technologies, a myriad of GPS trajecto...
© 2016 IEEE. With the advance of various location-acquisition technologies, a myriad of GPS trajecto...
With the advance of various location-acquisition technologies, a myriad of GPS trajectories can be c...
GPS data of vehicles travelling on road networks can be used to estimate travel times. This requires...
A map-matching algorithm is an integral part of every navigation system and reconciles raw and inacc...
Map-matching is the process of aligning a sequence of observed user positions with the road network ...
In many Intelligent Transportation System (ITS) applications that crowd-source data from probe vehic...
Markov chains have frequently been applied to match the probable routes with a set of GPS trip data ...
Real-time traffic information is important in terms of easing highway congestion, while map matching...
Lane-level map matching is essential for autonomous driving. In this paper, we propose a Hidden Mark...