Using Big Spatial Data for Planning User Mobility

User mobility is the movement of individuals from one place to another. Trip is a segment of user mobility. A context is any information that can be used to characterise the situation of an entity (ie any user), according to (Dey and Abowd 2000). Trip contexts provide trip-related information to any person planning to make a trip. Further, route planner is a system designed to help user mobility which consists of a number of trips. Usually, the route planners present some predefined contexts to a user and provide a route plan between two locations on the basis of user-selected contexts. The big spatial data can facilitate diverse sets of trip contexts with their respective geographic location information on the earths surface which can aid the effective planning of user mobility.

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