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Authors
Affiliations
1 Annamacharya Institute of Technology & Science, Tirupati, IN
Source
International Journal of Scientific Engineering and Technology, Vol 3, No 10 (2014), Pagination: 1300-1305
Abstract
Smart driving direction system leveraging the intelligence of experienced drivers. In this system, GPSequipped taxis are employed as mobile sensors probing the traffic rhythm of a city and taxi drivers' intelligence in choosing driving directions in the physical world. We propose a time-dependent landmark graph to model the dynamic traffic pattern as well as the intelligence of experienced drivers so as to provide a user with the practically fastest route to a given destination at a given departure time. Then, a Variance- Entropy-Based Clustering approach is devised to estimate the distribution of travel time between two landmarks in different time slots. Based on this graph, we design a two-stage routing algorithm to compute the practically fastest and customized route for end users. We build our system based on a real-world trajectory dataset generated by over 33,000 taxis in a period of 3 months, and evaluate the system by conducting both synthetic experiments and in-the-field evaluations. As a result, 60-70% of the routes suggested by our method are faster than the competing methods, and 20% of the routes share the same results. On average, 50% of our routes are at least 20% faster than the competing approaches.
Keywords
Spatial Databases and GIS, Data Mining, GPS Trajectory, Driving Directions, Driving Behaviour.
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