© 2016 IEEE. With the advance of various location-acquisition technologies, a myriad of GPS trajectories can be collected every day. However, the raw coordinate data captured by sensors often cannot reflect real positions due to many physical constraints and some rules of law. How to accurately match GPS trajectories to roads on a digital map is an important issue. The problem of map-matching is fundamental for many applications. Unfortunately, many existing methods still cannot meet stringent performance requirements in engineering. In particular, low/unstable sampling rate and noisy/lost data are usually big challenges. Information fusion of different data sources is becoming increasingly promising nowadays. As in practice, some other mea...
An accurate and high-sampling-rate GPS trajectory dataset is essential to many trajectory-based appl...
Smart Cities need real time information to improve the efficiency of their transportation systems. I...
It is expected that by 2050, more than 2.5 billion people will reside in cities. With the proliferat...
© 2017 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...
Modern mobile technology has enabled the collection of large scale vehicle trajectories using GPS de...
Map matching can provide useful traffic information by aligning the observed trajectories of vehicle...
Vehicle tracking data is an essential “raw ” material for a broad range of applications such as traf...
Location-aware devices can be used to record the positions of moving objects for further spatio-temp...
Map-matching is the process of aligning a sequence of observed user positions with the road network ...
A map-matching algorithm is an integral part of every navigation system and reconciles raw and inacc...
Map matching algorithms for route inference and vehicle localization are essential for Intelligent T...
Map-matching is a hot research topic as it is essential for Moving Object Database and Intelligent T...
We present a robust method for solving the map matching problem exploiting massive GPS trace data. M...
Map matching is a crucial data processing task for transferring measurements from the dynamic sensor...
An accurate and high-sampling-rate GPS trajectory dataset is essential to many trajectory-based appl...
Smart Cities need real time information to improve the efficiency of their transportation systems. I...
It is expected that by 2050, more than 2.5 billion people will reside in cities. With the proliferat...
© 2017 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...
Modern mobile technology has enabled the collection of large scale vehicle trajectories using GPS de...
Map matching can provide useful traffic information by aligning the observed trajectories of vehicle...
Vehicle tracking data is an essential “raw ” material for a broad range of applications such as traf...
Location-aware devices can be used to record the positions of moving objects for further spatio-temp...
Map-matching is the process of aligning a sequence of observed user positions with the road network ...
A map-matching algorithm is an integral part of every navigation system and reconciles raw and inacc...
Map matching algorithms for route inference and vehicle localization are essential for Intelligent T...
Map-matching is a hot research topic as it is essential for Moving Object Database and Intelligent T...
We present a robust method for solving the map matching problem exploiting massive GPS trace data. M...
Map matching is a crucial data processing task for transferring measurements from the dynamic sensor...
An accurate and high-sampling-rate GPS trajectory dataset is essential to many trajectory-based appl...
Smart Cities need real time information to improve the efficiency of their transportation systems. I...
It is expected that by 2050, more than 2.5 billion people will reside in cities. With the proliferat...