Mining road map from big database of GPS data

Hybrid Intelligent Systems(2014)

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摘要
This paper describes a process of converting raw Global Positioning System (GPS) data to a routable road map. In fact, it is a large scale database collected from thousands of vehicles circulating on Tunisian public roads. Moreover, the paper contains the architecture used to collect GPS data from these vehicles using GPRS connection and all the steps until getting the road traces. The data flow is composed of many steps which are: Collecting data which consists of extracting National Marine Electronics Association(NMEA) sentences; Filtering raw GPS nodes to eliminate outliers and noise caused by several sources of errors; Clustering step, in which we used two methods partitional (k-means)and hierarchical (agglomerative)clustering techniques. We compare them and we choose the most suitable for our work. In fact, K-means algorithm is carried out in order to partition data and facilitate handling the big data sets; Generating a Tunisian map network from our database and map-matching it with Google maps in order to make a comparison between them.
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关键词
Big Data,Global Positioning System,cartography,data mining,geographic information systems,pattern clustering,road vehicles,traffic information systems,very large databases,GPRS connection,GPS data,GPS nodes,Google maps,NMEA sentences,National Marine Electronics Association sentences,Tunisian map network,Tunisian public road,big data handling,big database,data flow,global positioning system,hierarchical agglomerative clustering technique,k-means algorithm,k-means clustering technique,large scale database,map-matching,road map mining,road traces,routable road map,GPS data,K-means clustering,Map generation,Map-Matching,big database
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