Towards Semantic Trajectory Knowledge Discovery
نویسندگان
چکیده
Trajectory data play a fundamental role to an increasing number of applications, such as transportation management, urban planning and tourism. Trajectory data are normally available as sample points. However, for many applications, meaningful patterns cannot be extracted from sample points without considering the background geographic information. In this paper we propose a novel framework for semantic trajectory knowledge discovery. We propose to integrate trajectory sample points to the geographic information which is relevant to the application. Therefore, we extract the most important parts of trajectories, which are stops and moves, before applying data mining methods. Empirically we show the application and usability of our approach.
منابع مشابه
Cluster Based Cross Layer Intelligent Service Discovery for Mobile Ad-Hoc Networks
The ability to discover services in Mobile Ad hoc Network (MANET) is a major prerequisite. Cluster basedcross layer intelligent service discovery for MANET (CBISD) is cluster based architecture, caching ofsemantic details of services and intelligent forwarding using network layer mechanisms. The cluster basedarchitecture using semantic knowledge provides scalability and accuracy. Also, the mini...
متن کاملSemantic Trajectory Data Mining: a User Driven Approach
Trajectories left behind cars, humans, birds or other moving objects are a new kind of data which can be very useful in decision making process in several application domains. These data, however, are normally available as sample points, and therefore have very little or no semantics. Knowledge discovery from trajectory samples is very difficult from the user's point of view [1] [2]. Although s...
متن کاملPointers Extraction of Trajectory Data for Semantic Knowledge Discovery
People like services that can help them undertake their daily activities more efficiently. Mobile technologies have enabled deployment of a variety of Internet–based services within the realm of location-based services (LBS) (Steiniger, Neun, and Edwardes 2006). The adoption of these technologies has led to mammoth amounts of trajectory data. To use these services effectively, analysis of LBS d...
متن کاملTowards Semantic Trajectory Data Analysis: A Conceptual and Computational Approach
Thanks to the rapid development of GPS mobile and wireless sensing technologies, the large-scale capture of evolving positioning data (so called trajectories) generated by moving objects has become technically and economically realistic. The data world becomes full of trajectories. The state-of-the-art on trajectory, either from the moving object database community or from the statistical analy...
متن کاملUsing Semantic Similarity to Improve Information Discovery in Spatial Data Infrastructure
Trajectory data are normally generated as sample points, which are very difficult to understand and to analyze because they are often collected with no semantic information. Several studies have been developed for trajectory data analysis. Recently, a new model was designed to reason over trajectories as stops and moves, where stops are the important parts of trajectories. Based on this work, d...
متن کامل