We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Locating Traffic Hot Routes from Massive Taxi Tracks in Clusters.
- Authors
ZHIMING GUI; HAIPENG YU; YUNLONG TANG
- Abstract
The increasing availability of location-acquisition technologies has resulted in huge volumes of trajectories. The sheer volume of these data sets prevents their processing by traditional centralized technologies. In this paper, we propose a MapReduce-based extraction- and-group framework to locate traffic hot routes from taxis track. In the proposed framework, massive trajectory data are partitioned into data chunks so that they can be processed in parallel on multiple machines. Then the low speed parts from each trajectory are extracted by a speed based clustering. Finally, a MapReduce inner-function based grouping method is used to locate traffic hot routes from all low speed parts. Based on this extraction-and-group framework, we develop a traffic hot route locating algorithm. The algorithm was evaluated through experiments on real life data sets, and was shown to have considerable potential to promptly and accurately locate traffic hot routes from massive trajectory data through various analyses on the experimental results.
- Publication
Journal of Information Science & Engineering, 2016, Vol 32, Issue 1, p113
- ISSN
1016-2364
- Publication type
Academic Journal