In this study, we propose a novel method for a travel path inference problem from sparse GPS trajectory data. This problem involves localization of GPS samples on a road network and reconstruction of the path that a driver might have been following from a low rate of sampled GPS observations. Particularly, we model travel path inference as an optimization problem in both the spatial and temporal domains and propose a novel hybrid hidden Markov model (HMM) that uses a uniform cost search (UCS)-like novel combinational algorithm. We provide the following improvements over the previous studies that use HMM-based methods: (1) for travel path inference between matched GPS positions, the proposed hybrid HMM algorithm evaluates all candidate paths...
With an ever-increasing deployment density of probe and fixed sensors, massive vehicular trajectory ...
Global Positioning System and nomad devices are increasingly used to provide data from individuals i...
In this paper, a system based on the generation of a Hidden Markov Model from the past GPS log and c...
In this study, we propose a novel method for a travel path inference problem from sparse GPS traject...
The ability to correctly infer the route traveled by vehicles in real time from infrequent, noisy ob...
Abstract—We consider the problem of reconstructing vehicle trajectories from sparse sequences of GPS...
In the field of map matching, algorithms using topological relationships of road networks along with...
The application of GPS probes in traffic management is growing rapidly as the required data collecti...
In many Intelligent Transportation System (ITS) applications that crowd-source data from probe vehic...
Moving route prediction offers important benefits for many emerging location-aware applications such...
The monitoring of a system can yield a set of measurements that can be modeled as a collection of ti...
Numerous map-matching techniques have been developed to improve positioning, using Global Positionin...
© 2016 Dr. Hengfeng LiWith the popularity of mobile GPS (Global Positioning System) devices such as ...
The monitoring of a system can yield a set of measurements that can be modeled as a collection of ti...
With the advent of a wide-ranging suite of applications and online services utilizing data from the ...
With an ever-increasing deployment density of probe and fixed sensors, massive vehicular trajectory ...
Global Positioning System and nomad devices are increasingly used to provide data from individuals i...
In this paper, a system based on the generation of a Hidden Markov Model from the past GPS log and c...
In this study, we propose a novel method for a travel path inference problem from sparse GPS traject...
The ability to correctly infer the route traveled by vehicles in real time from infrequent, noisy ob...
Abstract—We consider the problem of reconstructing vehicle trajectories from sparse sequences of GPS...
In the field of map matching, algorithms using topological relationships of road networks along with...
The application of GPS probes in traffic management is growing rapidly as the required data collecti...
In many Intelligent Transportation System (ITS) applications that crowd-source data from probe vehic...
Moving route prediction offers important benefits for many emerging location-aware applications such...
The monitoring of a system can yield a set of measurements that can be modeled as a collection of ti...
Numerous map-matching techniques have been developed to improve positioning, using Global Positionin...
© 2016 Dr. Hengfeng LiWith the popularity of mobile GPS (Global Positioning System) devices such as ...
The monitoring of a system can yield a set of measurements that can be modeled as a collection of ti...
With the advent of a wide-ranging suite of applications and online services utilizing data from the ...
With an ever-increasing deployment density of probe and fixed sensors, massive vehicular trajectory ...
Global Positioning System and nomad devices are increasingly used to provide data from individuals i...
In this paper, a system based on the generation of a Hidden Markov Model from the past GPS log and c...