spatial data mining, GPS, map inference, road maps We address the problem of inferring road maps from largescale GPS traces that have relatively low resolution and sampling frequency. Unlike past published work that requires high-resolution traces with dense sampling, we focus on situations with coarse granularity data, such as that obtained from thousands of taxis in Shanghai, which transmit their location as seldom as once per minute. Such data sources can be made available inexpensively as byproducts of existing processes, rather than having to drive every road with high-quality GPS instrumentation just for map building-- and having to re-drive roads for periodic updates. Although the challenges in using opportunistic probe data are sign...
With more and more vehicles equipped with GPS tracking devices, there is increasing interest in buil...
Transportation data analytics has become increasingly important in the modern metropolis like Singa...
© 2018 Association for Computing Machinery. Current approaches to construct road network maps from G...
With more and more vehicles equipped with GPS tracking devices, there is increasing interest in buil...
AbstractWith the increased use of GPS sensors in several everyday devices, persons trip data are be-...
Map inference algorithm aims to construct a digital map from other data sources automatically. Due t...
With the wide spreading of geo-aware mobile applications, huge amounts of user-contributed GPS traje...
We propose a new segmentation and grouping framework for road map inference from GPS traces. We firs...
As mapping is costly and labor-intensive work, government mapping agencies are less and less willing...
© 2016 Dr. Hengfeng LiWith the popularity of mobile GPS (Global Positioning System) devices such as ...
The application of GPS probes in traffic management is growing rapidly as the required data collecti...
Many advanced safety and navigation applications in vehicles re-quire accurate, detailed digital map...
We present a robust method for solving the map matching problem exploiting massive GPS trace data. M...
In recent years, data from GPS-based surveys has become increasingly important since transport model...
Huge amounts of geo-referenced spatial location data and moving object trajectory data are being gen...
With more and more vehicles equipped with GPS tracking devices, there is increasing interest in buil...
Transportation data analytics has become increasingly important in the modern metropolis like Singa...
© 2018 Association for Computing Machinery. Current approaches to construct road network maps from G...
With more and more vehicles equipped with GPS tracking devices, there is increasing interest in buil...
AbstractWith the increased use of GPS sensors in several everyday devices, persons trip data are be-...
Map inference algorithm aims to construct a digital map from other data sources automatically. Due t...
With the wide spreading of geo-aware mobile applications, huge amounts of user-contributed GPS traje...
We propose a new segmentation and grouping framework for road map inference from GPS traces. We firs...
As mapping is costly and labor-intensive work, government mapping agencies are less and less willing...
© 2016 Dr. Hengfeng LiWith the popularity of mobile GPS (Global Positioning System) devices such as ...
The application of GPS probes in traffic management is growing rapidly as the required data collecti...
Many advanced safety and navigation applications in vehicles re-quire accurate, detailed digital map...
We present a robust method for solving the map matching problem exploiting massive GPS trace data. M...
In recent years, data from GPS-based surveys has become increasingly important since transport model...
Huge amounts of geo-referenced spatial location data and moving object trajectory data are being gen...
With more and more vehicles equipped with GPS tracking devices, there is increasing interest in buil...
Transportation data analytics has become increasingly important in the modern metropolis like Singa...
© 2018 Association for Computing Machinery. Current approaches to construct road network maps from G...